Literature DB >> 32539720

Validity and reliability of subjective methods to assess sedentary behaviour in adults: a systematic review and meta-analysis.

Esmée A Bakker1,2, Yvonne A W Hartman1, Maria T E Hopman1, Nicola D Hopkins2, Lee E F Graves2, David W Dunstan3,4, Genevieve N Healy5, Thijs M H Eijsvogels1, Dick H J Thijssen6,7.   

Abstract

BACKGROUND: Subjective measures of sedentary behaviour (SB) (i.e. questionnaires and diaries/logs) are widely implemented, and can be useful for capturing type and context of SBs. However, little is known about comparative validity and reliability. The aim of this systematic review and meta-analysis was to: 1) identify subjective methods to assess overall, domain- and behaviour-specific SB, and 2) examine the validity and reliability of these methods.
METHODS: The databases MEDLINE, EMBASE and SPORTDiscus were searched up to March 2020. Inclusion criteria were: 1) assessment of SB, 2) evaluation of subjective measurement tools, 3) being performed in healthy adults, 4) manuscript written in English, and 5) paper was peer-reviewed. Data of validity and/or reliability measurements was extracted from included studies and a meta-analysis using random effects was performed to assess the pooled correlation coefficients of the validity.
RESULTS: The systematic search resulted in 2423 hits. After excluding duplicates and screening on title and abstract, 82 studies were included with 75 self-reported measurement tools. There was wide variability in the measurement properties and quality of the studies. The criterion validity varied between poor-to-excellent (correlation coefficient [R] range - 0.01- 0.90) with logs/diaries (R = 0.63 [95%CI 0.48-0.78]) showing higher criterion validity compared to questionnaires (R = 0.35 [95%CI 0.32-0.39]). Furthermore, correlation coefficients of single- and multiple-item questionnaires were comparable (1-item R = 0.34; 2-to-9-items R = 0.35; ≥10-items R = 0.37). The reliability of SB measures was moderate-to-good, with the quality of these studies being mostly fair-to-good.
CONCLUSION: Logs and diaries are recommended to validly and reliably assess self-reported SB. However, due to time and resources constraints, 1-item questionnaires may be preferred to subjectively assess SB in large-scale observations when showing similar validity and reliability compared to longer questionnaires. REGISTRATION NUMBER: CRD42018105994.

Entities:  

Keywords:  Measurement; Reliability; Sedentary behaviour; Self-report; Sitting; Validity

Mesh:

Year:  2020        PMID: 32539720      PMCID: PMC7294635          DOI: 10.1186/s12966-020-00972-1

Source DB:  PubMed          Journal:  Int J Behav Nutr Phys Act        ISSN: 1479-5868            Impact factor:   6.457


Introduction

Regular physical activity reduces the risk of premature death, cardio- and cerebrovascular disease, metabolic disorders and some forms of cancer [1, 2]. Based on the overwhelming evidence, the World Health Organization recommend adults to perform ≥150-min moderate-intensity aerobic physical activity, or ≥ 75-min vigorous-intensity aerobic physical activity per week [3]. More recently, the importance of sedentary behaviour (SB) for health has emerged. High levels of SB are associated with an increased risk of premature death, cardiovascular disease, metabolic disorders and cancer [4-6], with especially strong associations in those who are physically inactive. These observations highlight the importance of accurately measuring physical activity and SB in order to understand their respective roles in health outcomes. Various devices [7] and questionnaires [8] are available to assess physical activity. Since SB is a distinct behavioural entity and not simply reflective of the lack of sufficient physical activity, these measures may not directly assess SB [9]. Furthermore, in contrast with structured exercise, SB occurs habitually throughout the day, making valid assessment of SB challenging. SB is defined as any activity during awake time with an energy expenditure ≤1.5 METs (i.e. sitting or activities in reclining posture) [9, 10]. Patterns and total volume of SB can be assessed using objective measures such as thigh-worn accelerometers combining acceleration and posture, which is currently regarded as the gold standard to quantify free-living SB and to distinguish between sitting or lying, standing and physical activity [11]. Nonetheless, used in isolation, these objective measures do not distinguish between different domains (e.g. occupation, transportation and leisure time) and settings (e.g. TV viewing, car driving and sitting while reading) of SB. This is important since some settings of sitting, e.g. TV viewing and screen time, are more strongly associated with poor health outcomes compared to total sedentary time [12-14] and may serve as useful intervention targets. These observations emphasise the need for valid subjective measures to assess SB within the various domains and settings in which it occurs. Ideally, these measures should be taken in combination with objective assessments [15]. However, given this is not always possible or feasible, it is also important to understand the measurement metrics of self-report methods when they are used in isolation. Several self-reported tools (i.e. questionnaires, logs and diaries) have been developed recently to measure SB. These tools vary from single-item questions to extensive questionnaires about SB considering various domains. Currently, some reviews compared the validity and reliability of these tools [15, 16]. However, previous reviews did not take the risk of bias across studies into account and did not combine the results into a meta-analysis. Knowledge about the validity, reliability and the quality of the studies performed is essential to plan, perform and correctly interpret results in this field of research, because measurement error may seriously impact study results. The aim of this systematic review and meta-analysis was to identify subjective methods to assess SB and, subsequently, to examine their validity and reliability to assess SB in adults. Where the sedentary time measured by subjective methods was compared to objective and other subjective methods. This overview will contribute to improved selection of appropriate subjective measures of SB (in relation to their research question), and to identify gaps of knowledge within this area of research.

Methods

Date source and literature search

A literature search was performed in databases of MEDLINE, EMBASE and SPORTDiscus. The search strategy combined three main search terms: sedentary behaviour, self-reported measures, and validity/reproducibility. The complete search strategy is shown in the Additional Table 1. The last search was performed on March 11th, 2020. All citations were imported into the bibliographic database of EndNote, version X7 (Thomas Reuters, New York City, NY). This review was registered in PROSPERO (number CRD42018105994) and the ‘Preferred Reporting Items for Systematic Reviews and Meta-Analyses’ (PRISMA) [98] guidelines were used to perform the systematic review and meta-analyses.
Table 1

Description of measurement tools to determine sedentary behaviour

Name of tool (reference)Specific tool (no. of questions)aConstructFormatcUnit
DomainbDistinction in days (wk/wknd; work days)Recall period
1-item questionnaires
EEPAQ; Elderly EXERNET Physical Activity Questionnaire [17]Q (1)Toyes1 wkTHrs (cat)
GPAQ: Global Physical Activity Questionnaire [1824]Q (1)TonoTHrs + min
IPAQ (short); International Physical Activity Questionnaire [2527]Q [1)Tono1 wkTHrs + min
Modified MOSPA-Q; MONICA Optional Study on Physical Activity Questionnaire [28]Q (1)WnoTHrs + min
PPAQ; Paffenbarger Physical Activity Questionnaire [29]Q (1)TonoTHrs
SED-GIH [30]Q (1)TonoTHrs (cat)
SQ; Single Question [3133]Q (1)TonoTHrs + min

TASST; TAxonomy of Self-report SB Tools [31, 34]

1) Single item total times; 2) Single item proportion; 3) TV time

Q (1: 1, 2: 1, 3: 1)Tono

1 d

1 wk

T

Hrs + min

%

T-SQ; Total sitting questionnaire [35]Q (1)Tono7 dTHrs + min
TV-Q; TV viewing [35]Q (1)TonoTHrs + min
YPAS; Yale Physical Activity Survey for Older Adults [36]I (1)TonoTHrs
Clemes et al. 2012 [33]Q (1)ToyesTHrs + min

Gao et al. 2017 (57)

1) Single item proportion (3 months) 2) Single item proportion (1 day)

Q(1: 1, 2: 1)Wno

1: 1 d

2: 3 mo

T%
Gupta et al. 2017 [37]Q (1)Tono3 dTHrs + min
2–9-item questionnaires
AQuAA; Activity Questionnaire for Adults and Adolescents [38]Q (4)Lno1 wkTHrs + min
Cancer Prevention Study-3 Sedentary Time Survey [39]Q (4)To + Lyes1 yrTHrs (cat)
CHAMPS; Community Health Activities Model Program for Seniors [36, 40]Q (9)L + otherno4 wkTHrs (cat)
FPACQ; Flemish Physical Activity Computerized Questionnaire [41, 42]Q (3)To + W + TrnoTHrs
IPAQ (long); International Physical Activity Questionnaire [26, 4347]Q (2)Tono1 wkTHrs + min
OPAQ; Occupational Physical Activity Questionnaire [48]Q (2)WnoTHrs
OSPAQ; Occupational Sitting and Physical Activity Questionnaire [28, 4951]Q (3)Wno1 wkT% of sitting
PAS2; Physical Activity Scale [52]Q (2)L + WnoTHrs + min
PASBAQ; Physical Activity and Sedentary Behavior Assessment Questionnaire [53]Q (3)L + Wno4 wkTHrs + min
PASB-Q; Physical Activity and Sedentary Behavior Questionnaire [54]Q (3)L + WnoT / Br

Hrs (cat)

number

PAST-U; Past-day Adults’ Sedentary Time University [55]Q (9)L + Tr + Wno1 dTHrs + min
PAT Survey; Physical Activity and Transit Survey [56]Q (2)Tono1 wkTHrs + min
RPAQ; Recent Physical Activity Questionnaire [57, 58]Q (4)L + Trno4 wkTHrs (cat)
Regicor Short Physical Activity Questionnaire [59]Q (4)LyesTHrs
SCCS PAQ; Southern Community Cohort Study Physical Activity Questionnaire [60]Q (6)L + Tr + WnoTHrs + min
SITBRQ: Workplace Sitting Breaks Questionnaire [61]Q (2)WyesBrFreq + duration
Stand Up For Your Health Questionnaire [36, 62]I (7)L + Tr + Wno1 wkTHrs + min
STAQ; Sedentary, Transportation and Activity Questionnaire [63]Q (7)L + Tr + Wyes4 wkTHrs + min (cat)

TASST; TAxonomy of Self-report SB Tools [31]

4) Patterns; 5) Sum of domains

Q (4: 2, 5: 13)H + L + Tr + Wno

1 d

1 wk

T / Bou

Hrs + min

no. of bouts + duration

Survey of older adults’ sedentary time [64]Q (8)L + Tr + WNo1 wkTHrs + min
Web-based physical activity questionnaire Active-Q [65]Q (8)L + Tr + Wno1 moTHrs + min (cat)
WSWQ; Percentage-Method Improves Properties of Workers’ Sitting- and Walking-Time Questionnaire [66]Q (3/7)L + Wyes1 moT

Hrs + min

%

Clark et al. 2011 [67]Q (2)Wyes1 wkT / BrHrs + min / freq
Jefferis et al. 2016 [68]Q (4)L + TrnoTHrs
Lagersted-Olsen et al. 2014 [69]Q (4)L + Wno1 wkT / BouHrs + min
Mielke et al. 2020 [70]Q (5)L + Tr + Wno1 wkTHrs + min
Sudholx et al. 2012 [71]Q (2)Wno1 wkT / BrHrs + min / freq

Cartmel et al. 1992 [72]

Questionnaire A / B

Q (2)Qa: H, L Qb: To

Qa: no

Qb: yes

Qa: 1 yr

Qb: -

THrs + min
≥10-item questionnaires
ASBQ: Adult Sedentary Behaviour Questionnaire [21]Q (12)L + Tr + Wyes1 wkTHrs + min
D-SQ; Domain-Specific Questionnaire [35]Q (10)L + Tr + Wyes7 dTHrs + min
MPAQ; Madras Physical Activity Questionnaire [73]Q (19)L + Tr + WnoTHrs + min / freq
MSTQ; Multicontext Sitting Time Questionnaire [74]Q (14)L + Tr + WnoTHrs + min
PAFQ: Physical Activity Frequency Questionnaire [75]Q (140)L + Wno1 wkTHrs + min
PAST-WEEK-U [76]Q (63)L + Tr + Wno1 wkTHrs + min
NIGHTLY-WEEK-U [76]Q (63)L + Tr + Wno1 dTHrs + min
SBQ; Sedentary Behaviour Questionnaire [24, 43, 77]Q (18)L + Tr + WyesTHrs + min (cat)
SIT-Q; Sedentary Behavior Questionnaire [78]Q (20)L + Tr + Wyes1 yrT / Br

Hrs + min

(cat) / freq

SIT-Q-7d; last 7-d sedentary behavior questionnaire [79, 80]Q (20)L + Tr + Wyes1 wkT / BrHrs + min (cat) / freq
STAR-Q [81]Q (17)H + L + Tr + Wno4 wkTHrs + min

TASST; TAxonomy of Self-report SB Tools [31] [34]

6) Sum of behaviours

Q (13)H + L + Tr + Wno

1 d

1 wk

THrs + min
WSQ; Workforce Sitting Questionnaire [50, 82, 83]Q (10)L + Tr + Wyes1 wkTHrs + min
Clark et al. 2015 [84]Q (10)L + Tr + Wyes1 wkTHrs + min
Clemes et al. 2012 [33]Q (10)L + Tr + WyesTHrs + min
Ishii et al. 2018 [85]Q (12)L + Tr + WYes1 wkTHrs + min (cat)
Marshall et al. 2012 [86]Q (10)L + Tr + WyesTHrs + min
Van Cauwenberg et al. 2017 [87]Q (12)L + Trno1 wkTHrs + min
Visser et al. 2010 [88]Q (20)L + Tr + WnoTHrs + min
Logs and diaries
7-day SLIPA Log; (7-day Sedentary and Light Intensity Physical Activity Log) [89]LL + Tr + Wyes1 dTHrs + min
BAR; Bouchard Activity Record [90]DTonoTHrs + min
BeWell24 Self-Monitoring App [91]DL + Tr + Wno1 dTHrs + min
cpar24; Computer-Based 24-Hour Physical Activity Recall Instrument [92]DL + Tr + Wno1 dTHrs + min
EMA; Ecological Momentary Assessment [93]DTono1 dTHrs + min (cat)
MARCA; Multimedia Activity Recall for Children and Adults [32, 94]IL + Tr + Wno1 dTHrs + min
PAMS; Physical Activity Measurement Survey [95]IL + Tr + Wno1 dTHrs + min
PDR; Previous Day Recall [45]IL + Tr + Wno1 dTHrs + min
Time Use Survey [96]DL + Tr + Wno1 dTHrs + min
Updated PDR; Updated Previous Day Recall [97]IL + Tr + Wno1 dTHrs + min

aQ = questionnaire; L = log; D = diary; I = interview

bTo = Total; H=Household; L = Leisure; Tr = Transport; W=Work

cT = Total time; Br = breaks; Bou = bouts

Description of measurement tools to determine sedentary behaviour TASST; TAxonomy of Self-report SB Tools [31, 34] 1) Single item total times; 2) Single item proportion; 3) TV time 1 d 1 wk Hrs + min % Gao et al. 2017 (57) 1) Single item proportion (3 months) 2) Single item proportion (1 day) 1: 1 d 2: 3 mo Hrs (cat) number TASST; TAxonomy of Self-report SB Tools [31] 4) Patterns; 5) Sum of domains 1 d 1 wk Hrs + min no. of bouts + duration Hrs + min % Cartmel et al. 1992 [72] Questionnaire A / B Qa: no Qb: yes Qa: 1 yr Qb: - Hrs + min (cat) / freq TASST; TAxonomy of Self-report SB Tools [31] [34] 6) Sum of behaviours 1 d 1 wk aQ = questionnaire; L = log; D = diary; I = interview bTo = Total; H=Household; L = Leisure; Tr = Transport; W=Work cT = Total time; Br = breaks; Bou = bouts

Selection of papers

After importing all citations in Endnote, duplicates were removed, and title, abstract and full text were independently screened by two reviewers (EB, YH). In case of disagreement, a third reviewer (TE) was consulted. Inclusion criteria were: 1) assessment of SB, 2) evaluation of subjective measurement tools, 3) being performed in healthy adults, 4) manuscript written in English, and 5) paper was peer-reviewed. Papers were excluded if the study did not aim to determine any construct of SB, when studies did not investigate the validation or reliability of the tool and/or the aim was to cross-cultural validate the subjective tool in different languages. A flowchart of the search strategy and the inclusion of manuscripts is presented in Fig. 1.
Fig. 1

Flowchart of the inclusion of studies

Flowchart of the inclusion of studies

Data extraction, synthesis and analysis

Study characters were extracted using an extraction form including: 1) study population, 2) number of participants, 3) gender and age, 4) the construct of SB measured (domain, setting, recall period, number of questions), 5) measurement outcomes (e.g. total sedentary time, breaks in sitting time, bouts), 6) comparison measure when validity was assessed, 7) interval between first and second measure when reliability was assessed, and 8) results of the measurement properties (e.g. intra correlation coefficients [ICC], correlations, mean bias with limits of agreement, kappa values and sensitivity/specificity). The extraction form was created by one (EB) and piloted by both reviewers (EB, YH). The pilot was performed using 10 randomly selected studies and changes were made to improve the extraction form. The quality of the studies was determined using the checklist with 4-point scale of COSMIN (Consensus-based Standards for the selection of health Measurement Instruments) criteria [99-101]. The COSMIN checklist contained items about the criterion validity (Additional Table 2) and reliability (Additional Table 3). For each item different design requirements and statistical methods were rated on quality using a 4-point scale. A methodological quality score per item was obtained by taking the lowest rating of any score per item (‘worse score counts’) [101].
Table 2

Construct validity of subjective sedentary behaviour measurement tools

Subjective toolStudy populationValidityQuality of study
Ngender male;mean age [SD] or age range;nationalityComparison measureCorrelation(95%CI)Other results
1-item questionnaires

EEPAQ; Elderly EXERNET Physical Activity Questionnaire [17]

Lopez-Rodriguez et al. 2017

73

15%;

71.96 (5.48) yr;

ESP

Actigraph GT1 M

0.574

P < 0.01

Poor

GPAQ: Global Physical Activity Questionnaire [21]

Chu et al. 2018

78

31%;

20–65 yr;

SGP

Actigraph GT3X-BL

Self-administered: 0.46 (0.18; 0.68)

Interview administered: 0.12 (− 0.11; 0.33)

MD − 175.8 min

(LoA − 556.1; 206.5)

More details are provided in study

Poor

GPAQ: Global Physical Activity Questionnaire [20]

Cleland et al. 2014

65

54%;

44 (14) yr;

GBR

Actigraph GT3X

0.187

P = 0.135

MD − 348.7 min (LoA − 721.1; 23.7)Poor
GPAQ: Global Physical Activity Questionnaire [24] Kastelic et al. 201942

88%;

M: 38 (8) yr F: 50 (7) yr; SVN

ActivPAL 30.317 P = 0.041

MD − 165 min

(LoA − 429; 99)

Fair

GPAQ: Global Physical Activity Questionnaire [18]

Laeremens et al. 2017

122

45%;

35 (10) yr;

BEL, ESP, GBR

Sensewear armband

Mid-season: 0.09 P > 0.05

Summer: 0.25 P < 0.01

Winter: 0.24 P < 0.01

MD 8 min (LoA −75; 92)Poor

GPAQ: Global Physical Activity Questionnaire [22]

Metcalf et al. 2018

108

31%;

49.4 yr (range: 19.8–68.7);

USA

ActiGraph GT9X0.19Poor

GPAQ: Global Physical Activity Questionnaire [23]

Rudolf et al. 2020

54

43%;

28.3 (12.2) yr;

DEU

ActiGraph GT3X+

GPAQ with illustration of exemplary physical activities: 0.32 P = 0.02

GPAQ without illustration: 0.29 P = 0.03

GPAQ with illustration: − 9.3 min/day (LoA − 322.1; 303.5) GPAQ without illustration: − 18.3 min/day (LoA − 313.7; 277.1)Poor

GPAQ: Global Physical Activity Questionnaire [19]

Wanner et al. 2017

366

49%;

47.0 (15) yr;

CHE

Actigraph GT3X+0.47 P ≤ 0.001Poor

IPAQ (short); International Physical Activity Questionnaire [26]

Craig et al. 2003

2721

25–73%;

18–65 yr;

12 countries

Accelerometer (CSA model 7164)Range: 0.07–0.61Poor

IPAQ (short); International Physical Activity Questionnaire [43]

Prince et al. 2018

313

0%; 42.8 (11.9) yr;

CAN

ActiGraph GT3X0.31 (P < 0.001)

IPAQ:

MD 451.9–0.826* min

Poor

IPAQ (short); International Physical Activity Questionnaire) [44]

Rosenberg et al. 2008

289

45%; 35.9 (11.3) yr;

GBR, USA, NLD

Accelerometer (CSA model 7164)0.34Poor

Modified MOSPA-Q; MONICA Optional Study on Physical Activity Questionnaire [28]

Chau et al. 2012

70

40%; 19–60+ yr;

AUS

ActiGraph GTIM0.52 P < 0.01Poor

PPAQ; Paffenbarger Physical Activity Questionnaire [29]

Simpson et al. 2015

419

49%;

M: 43.8 (15.8) yr

F: 44.3 (16.5) yr;

USA

Actical0.20 (0.14; 0.33)Poor

SED-GIH [30]

Larsson et al. 2018

284

33%;

42.9 (8.9) yr;

SWE

ActivPAL0.31 (95% CI 0.20–0.41), P < 0.001Excellent

SQ; Single Question [32]

Aguilar-Farias et al. 2015

37

34%;

74.5 (7.6) yr;

AUS

ActivPAL 30.33; wk. 0.31; wknd 0.28Fair

SQ; Single Question [33]

Clemes et al. 2012

44

30%;

41.5 (12.8) yr;

GBR

ActiGraph GT1M

wk: 0.70 (P < 0.001)

wknd: 0.55 (P < 0.001)

ICC

wk.: 0.82 (P < 0.001)

wknd: 0.69 (P < 0.001)

Poor

TASST; TAxonomy of Self-report SB Tools [31] 1) Single item total times; 2) Single item proportion; 3) TV time

Chastin et al. 2018

700

48%;

64–83 yr;

GBR

ActivPal

Previous day

1) 0.20; 2) 0.28; 3) 0.24

Previous wk

1) 0.23; 2) 0.36; 3) 0.23

Unanchored

1) 0.20; 2) 0.32; 3) 0.26 All P-values< 0.001

Previous day

1) LoA − 147; 561

2) LoA − 22; 48

3) LoA 145; 733

Previous wk

1) LoA; − 150; 564

2) LoA; − 19; 43

3) LoA 81; 732

Unanchored

1) LoA − 135; 549

2) LoA − 19; 51

3) LoA 125; 705

Excellent

T-SQ; Total sitting questionnaire [35]

Kozey-Keadle et al. 2012

13

75%;

46.5 (10.8) yr;

USA

ActivPalwk 0.41; wknd 0.55

Wk MD 40.5 min (− 125.2; 22.3)

Wknd MD 147.4 min (− 228.3; − 66.6)

Poor

TV-Q; TV viewing [35]

Kozey-Keadle et al. 2012

13

75%;

46.5 (10.8);

USA

ActivPalwk: 0.07; wknd: − 0.11Poor

YPAS; Yale Physical Activity Survey for Older Adults [36]

Gennuso et al. 2015

5821% 75.1 (6.5) yr; USAActiGraph GT1M

kappa − 0.0003,

(− 0.0025; 0.0019)

Poor
Gao et al. 2017 [102]70

41.4%;

33.1 (10.7) yr;

CHI, FIN

Thigh-mounted accelerometer

3 months: 0.53 (95% CI 0.34–0.68), P < 0.001

Previous day: 0.53 (95% CI 0.45–0.61) P < 0.001

3 months: MD 2.4% (LoA − 0.5%; 5.3%)

Previous day: MD 2.2% (LoA 0.7%; 3.6%)

Poor
Gupta et al. 2017 [37]18360%; 44.9 (9.8) yr; DNKActigraph GT3X0.32 P < 0.001

MD 204.1 min

(LoA 112.4–0.6*min; 463.6+  0.6*min)

Poor
2–9-item questionnaires

AQuAA; Activity Questionnaire for Adults and Adolescents [38]

Chinapaw et al. 2009

47

36%;

30.1 (3.6) yr;

NLD

Actigraph model 7164ICC 0.15Poor

Cancer Prevention Study-3 Sedentary Time Survey [39]

Rees-Punia et al. 2018

713

41%;

51.7 yr (range 31–72);

USA

Actigraph GT3x

accelerometer + diary

0.41 (0.35; 0.47)Poor

CHAMPS; Community Health Activities Model Program for Seniors [40]

Hekler et al. 2012

870

43%;

66–80+ yr;

USA

Actigraph

model 7164 and 71,256

0.12 P < 0.001

MD − 2841.6 min

(LoA − 4476.7; − 1206.5)

Poor

CHAMPS; Community Health Activities Model Program for Seniors [36]

Gennuso et al. 2017

5821%; 75.1 (6.5) yr; USAActiGraph GT1M0.14 P = 0.28

CHAMPS:

MD −5.21 hrs

(LoA − 2.2; − 8.3)

Poor

FPACQ; Flemish Physical Activity Computerized Questionnaire [41]

Matton et al. 2007

81

77%;

22–78 yr;

BEL

RT3 Triaxial Research Tracker + activity record

Employed / unemployed

Eat: M 0.53 (P< 0.01);

F 0.56 (P< 0.01)

Sleep M 0.69 (P< 0.001);

F 0.60 (P< 0.001)

Tv M 0.69 (P< 0.001);

F 0.83 (P< 0.001)

Retired

Eat M 0.33; F 0.15

Sleep M 0.57 (P< 0.01); F 0.51 (P< 0.05)

Tv M 0.78 (P< 0.001);

F 0.80 (P< 0.001)

Poor

FPACQ; Flemish Physical Activity Computerized Questionnaire [42]

Scheers et al. 2012

405

41.4 (9.8) yr;

BEL

SenseWear + electronic activity diary

Total sedentary time 0.54 (P < 0.001)

Screen time 0.57 (P = 0.648)

Motorized transport 0.58 (P < 0.001)

Poor

IPAQ (long); International Physical Activity Questionnaire [27]

Chastin et al. 2014

69

67%;

41.1 (9.0) yr;

GBR

ActivPal

0.159

(P = 0.193)

ICC 0.149Good

IPAQ (long); International Physical Activity Questionnaire [82]

Chau et al. 2011

95

37%;

18–60+ yr;

AUS

Actigraph GT1M

Wk: 0.47

Wknd: 0.31

Total: 0.46

Poor

IPAQ (long); International Physical Activity Questionnaire [46]

Cleland et al. 2018

228

57%;

71.8 (6.6) yr;

GBR

Actigraph GT3X+

Wk: 0.70 (P < 0.01)

Wknd: 0.26

Wk: MD −168.6 min (LoA − 451.8; 114.6)

Wknd d: MD − 173.9 min (LoA − 441.6; 93.8)

Poor

IPAQ (long); International Physical Activity Questionnaire [26]

Craig et al. 2003

2721

25–73%;

18–65 yr;

12 countries

Accelerometer (CSA model 7164)Range: 0.14–0.51Poor

IPAQ (long); International Physical Activity Questionnaire [44]

Rosenberg et al. 2008

289

45%;

35.9 (11.3) yr;

GBR, USA, NLD

Accelerometer (CSA model 7164)0.33Poor

IPAQ (long); International Physical Activity Questionnaire [47]

Ryan et al. 2018

86

48%;

73.7 (6.3) yr; GBR

GENEA, (GENEactiv Original)0.29MD 27.6 (LoA ± 26.5 hrs/week)Poor

IPAQ (long); International Physical Activity Questionnaire [25]

Wanner et al. 2016

346

45%;

54.6 yr;

CHE

Actigraph GT3X0.42 P ≤ 0.001

MD 26.4 min

(LoA − 12.0; 64.9)

Poor

OPAQ; Occupational Physical Activity Questionnaire [48]

Reis et al. 2005

41

32%;

38.8 (9.9) yr;

USA

Physical activity record0.37Poor

OSPAQ; Occupational Sitting and Physical Activity Questionnaire [28]

Chau et al. 2012

76

40%;

19–60+ yr;

AUS

ActiGraph GTIM0.65 P < 0.01MD 22 min (LoA − 141.53; 185.18)Poor

OSPAQ; Occupational Sitting and Physical Activity Questionnaire [51]

Jancey et al. 2014

41

41%;

18–50+ yr;

AUS

ActiGraph

GT3X + on the waist or thigh

0.58 (0.33; 0.75)

MD − 25.4 min

(LoA − 784.7; 733.9)

Poor

OSPAQ; Occupational Sitting and Physical Activity Questionnaire [49]

Pedersen et al. 2016

34

25%;

45.62 (10.96) yr;

AUS

ActivPal0.90

MD 3.16%

(LoA − 21.4%; 15.1%)

Poor

OSPAQ; Occupational Sitting and Physical Activity Questionnaire [50]

van Nassau et al. 2015

42

14%;

38 (11) yr;

AUS

ActivPAL

Day 1: 0.37 (P < 0.05)

Day 2: 0.48 (P < 0.05)

Day 3: 0.35 (P < 0.05)

only figures available for MD and LoAFair

PAS2; Physical Activity Scale [52]

Pedersen et al. 2017

330

38%;

46.7 (8.5) yr;

DNK

Actiheart0.197 (P = 0.053)

MD −2.3 hrs

(LoA − 9.04; 4.34)

Poor

PASBAQ; Physical Activity and Sedentary Behaviour Assessment Questionnaire [53]

Scholes et al. 2014

2175

46%;

M: 52.7 (17.7) yr

F: 51.8 (17.8) yr;

GBR

ActiGraph GT1M

Sedentary time for different cut-off points

M

< 50 cpm 0.25 (0.19; 0.31); < 100 cpm 0.25 (0.19; 0.30); < 200 cpm 0.23 (0.17; 0.29)

F

< 50 cpm 0.31 (0.25; 0.37); < 100 cpm 0.30 (0.24; 0.35); < 200 cpm 0.27 (0.21; 0.32)

Poor

PASB-Q; Physical Activity and Sedentary Behavior Questionnaire [54]

Fowles et al. 2017

32

19%;

M: 63 (9) yr

F: 55 (10) yr;

USA

ActiGraph® GT3X

Total SB: 0.29 P = 0.13

Breaks: 0.02 P > 0.05

Poor

PAST-U; Past-day Adults’ Sedentary Time University) [55]

Clark et al. 2016

57

53%;

26 (IQR 23; 31) yr;

AUS

ActivPAL0.63 (0.44; 0.76)

ICC 0.64 (0.45; 0.77)

MD 0.08 hrs

(LoA − 3.9; 4.1)

Good

PAT Survey; Physical Activity and Transit Survey [56]

Yi et al. 2015

667

39%;

18–65+ yr;

USA

ActiGraph GT3X

0.32

P < 0.001

MD: 49 min

(LoA − 441; 343)

Poor

RPAQ; Recent Physical Activity Questionnaire [58]

Besson at el. 2010

50

50%;

F 34.3 (8.8) yr M 35.2 (9.9) yr;

GBR

Doubly labeled water and accelerometerwith heart rate0.27 (P = 0.06)0.7 hrs (LoA 6 2.8)Poor

RPAQ; Recent Physical Activity Questionnaire [57]

Golubic et al. 2014

192330%; F: 54.0 (9.3) yr, M: 55.0 (9.9) yr; EURActiheart

F: 0.20 (0.14; 0.25)

M: 0.25 (0.19; 0.31)

F: MD −3.3 hrs

(LoA − 9.0; 4.1)

M: MD − 2.3 hrs

(LoA − 8.3; 5.5)

Total MD − 3.1 hrs

(LoA − 9.6; 4.9)

Poor
Regicor Short Physical Activity Questionnaire [59] Molina et al. 2017114

45%;

54.5 (12.1) yr;

ESP

SenseWear Pro3 Armband0.244 (P = 0.020)Poor

SCCS PAQ; Southern Community Cohort Study Physical Activity Questionnaire [60]

Buchowski et al. 2012

118

48%;

54.5 (8.4) yr;

USA

RT3 StayhealthyRange 0.17–0.30Poor
SITBRQ: Workplace Sitting Breaks Questionnaire [61] Pedisic et al. 2014143

37%;

18–60+ yr;

AUS

Actigraph GT1M

Freq: 0.24 (0.07; 0.40)

Duration: 0.05 (− 0.12; 0.22)

Poor

Stand Up For Your Health Questionnaire [62]

Gardiner et al. 2011

48

27%;

72.8 (8.1) yr;

AUS

ActiGraph GTIM0.30 (0.02; 0.54)

MD − 9.20 + 0.67 hrs

(LoA ± 3.82)

Poor

STAQ; Sedentary, Transportation and Activity Questionnaire [63]

Mensah et al. 2016

88

47%;

40.5 (14.3) yr;

FRA

Actigraph GT3X+ + Log

Total 0.54 (P < 0.001)

Work 0.88 (P < 0.001)

Transport 0.35 (P = 0.001)

Leisure time 0.19 (P = 0.09)

TV/DVD 0.46 (P < 0.001)

Computer/tablet/video game 0.42 (P < 0.001)

Total ICC 0.44 (0.25; 0.60)Poor

TASST; TAxonomy of Self-report SB Tools [31]

4) Sum of domains; 5) Patterns

Chastin et al. 2018

700

48%;

64–83 yr;

GBR

ActivPal

Previous day

4) 0.23; 5) 0.17

Previous wk

4) 0.30; 5) 0.23

Unanchored

4) 0.16; 5) 0.02

All P-values< 0.001

Previous day

4) LoA − 273; 533

5) LoA − 472; 748

Previous wk

4) LoA − 413; 482

5) LoA − 529; 727

Unanchored

4) LoA-373; 529

5) LoA − 34; 980

All P-values < 0.001

Excellent
Survey of older adults’ sedentary time [64] Gennuso et al. 20164436%; 70 (68–76) yr; USAActivPAL

0.06

(P = 0.72)

MD 0.31 hrs (LoA − 6.74; 7.37)Fair

Web-based physical activity questionnaire Active-Q [65]

Bonn et al. 2015

148

100%;

65.4 (8.7) yr;

SWE

GENEA Accelerometer0.19 (0.04; 0.34)MD − 178 min (LoA − 606,25)Poor

WSWQ; Percentage-Method Improves Properties of Workers’ Sitting- and Walking-Time Questionnaire [66]

Matsoe et al. 2016

62

58%;

F 35.8 (7.5) yr

M 46.3 (8.0) yr;

JPN

ActivPAL

Time method

At work: 0.56

Work day, not at work: 0.51

Non-workday: 0.37

Percentage method

At work: 0.65

Work day, not at work: 0.60

Non-workday: 0.53

All P < 0.05

Time method

At work: MD −7 min (LoA − 241; 241)

Non-workday: MD − 115 min (LoA − 588; 358)

Percentage method

At work: MD 35 min (LoA − 200; 269)

Non-workday: MD − 56 min (LoA − 392; 281)

Good

Cartmel et al. 1992 [72]

Questionnaire A

Questionnaire B

24

38%;

M 69 (66–80) yr;

F 74 (59–83) yr;

USA

Diary

Time difference

Qa 230 min P < 0.001

Qb 40 min, P = 0.47

Poor
Clark et al. 2011 [67]121

40%;

Median 34.9 (28.5–46.0) yr;

AUS

Accelerometer

Sedentary time

0.39 (0.22; 0.53)

Sedentary breaks

0.26 (0.11; 0.44)

Sedentary time

MD −2.75 + 0.47* hrs

(LoA ±2.25)

Poor
Ishii et al. 2018 [85]39239.8%; 50.1 (7) yr; JPN

Active

style Pro, HJA-350IT

Total

0.49, P < 0.001

Workdays

0.57, P < 0.001

Non-workdays

0.23, P < 0.001

Total

MD − 13.4 min/d (LoA − 361.9; 335.2)

Workdays

MD − 0.4 min/d (LoA − 378.9; 378.1)

Non-workdays

MD − 49.2 min/d (LoA − 477.7; 379.2)

Poor
Jefferis et al. 2016 [68]1377

100%;

79 (71–93) yr;

GBR

ActiGraph

GT3X +

0.17

P < 0.001

MD 300 min (LoA − 6; 607)Poor
Lagersted-Olsen et al. 2014 [69]26

53%;

40.9 (8.6) yr;

DNK

ActiGraph GT3X+ + diary

Work:

Total 0.081 (P = 0.699)

Uninterrupted sitting 0.315(P = 0.126)

Leisure time at workday:

Total − 0.185 (P = 0.366)

Uninterrupted sitting − 0.069 (P = 0.762)

Leisure day:

Total 0.100 (P = 0.626)

Uninterrupted sitting 0.063 (P = 0.770)

Work:

MD 0.0 (LoA −3.4; 3.4)

Leisure:

MD 2.4 (LoA − 7.8; 3.0)

Uninterrupted sitting:

MD 0.5 (LoA − 1.1; 2.1)

Poor
Sudholz et al. 2017 [71]52

58%;

32.1 (9.9) yr;

AUS

ActivPal

Sitting time 0.24

(− 1.0; 0.47)

Breaks 0.39

(0.25; 0.74)

Good
≥10-item questionnaires

ASBQ; Adult Sedentary Behaviour Questionnaire [21]

Chu et al. 2018

7831%; 20–65 yr; SGPActigraph GT3X-BL

Self-administered: 0.31 (− 0.02; 0.58)

Interview administered:

− 0.07 (− 0.37; 0.24)

MD 4.6 min/d (LoA − 431.2; 440.4)

More details see full study

Poor

D-SQ; Domain-Specific Questionnaire [35]

Kozey-Keadle et al. 2012

20

75%;

46.5 (10.8) yr;

USA

ActivPalwk 0.30; wknd:0.17

Wk 176 min

(96.1; 256.9)

Wknd 157.6 min

(22.1; 293.0)

Poor

MPAQ; Madras Physical Activity Questionnaire [73]

Anjana et al. 2015

520

53%;

44.4 (14.2) yr;

IND

GT3X+ Triaxial0.48 (0.32; 0.62)Poor

MSTQ; Multicontext Sitting Time Questionnaire [74]

Whitfield et al. 2013

25

44%;

34.5 (7.7) yr;

USA

ActiGraph

GT1M

Work 0.34 P = 0.13

Non-working 0.61 P= 0.01

Poor
PAFQ: Physical Activity Frequency Questionnaire [75] Verhoog et al. 20191752

49%;

60.5 (9.4) yr;

CHE

GENEActive

Total minutes 0.37 (0.33; 0.41)

Total % of time 0.39 (0.35; 0.43)

No exact numbers available for MD and LoA, figure onlyPoor

PAST-WEEK-U [76]

Moulin et al. 2019

25

12%;

≤ 19 yr: 64%

20–24 yr: 36%;

CAN

ActivPAL4MD 0.09 hrs/day (LoA − 5.38; 5.55)Poor

NIGHTLY-WEEK-U [76]

Moulin et al. 2019

23

4%;

≤ 19 yr: 48%;

20–24 yr: 52%;

CAN

ActivPAL4

MD 0.21 hrs/day

(LoA − 1.75; 2.17)

Poor

SBQ: Sedentary Behaviour Questionnaire [24]

Kastelic et al. 2019

42

88%;

M: 38 (8) yr F: 50 (7) yr; SVN

ActivPAL 30.018, P = 0.910

MD − 181 min

(LoA − 467; 105)

Fair

SBQ; Sedentary Behaviour Questionnaire [43]

Prince et al. 2018

313

5%;

42.8 (11.9) yr;

CAN

ActiGraph GT3X0.43 (P < 0.001)MD 350.27–0.6685* minPoor

SBQ; Sedentary Behaviour Questionnaire [77]

Rosenberg et al. 2010

842

48%;

M: 43.9 (8.0) yr

F: 41.2 (8.7) yr;

USA

Actigraph (model WAM 7164)

Wk − 0.02 (0.78)

Wknd − 0.005 (0.93)

Total − 0.01 (0.81)

Poor

SIT-Q; Sedentary Behavior Questionnaire [78]

Lynch et al. 2014

34

41%;

38.0 (19.5) yr;

CAN

1) Diary – postural definition

2) Diary MET-based definition

1) Postural definition

Total 0.53 (P < 0.01)

Meals 0.19 (P = 0.11)

Transportation 0.37 (P < 0.01)

Work, study, and volunteering 0.76 (P < 0.01)

Care 0.49 (P < 0.01)

Leisure time 0.26 (P = 0.03)

2) MET-based definition

Total 0.52 (P < 0.01)

Meals 0.29 (P = 0.01)

Transportation 0.34 (P < 0.01)

Work, study, and volunteering 0.75 (P < 0.01)

Care 0.46 (P < 0.01)

Leisure time 0.26 (P = 0.03)

Poor

SIT-Q-7d; last 7-d sedentary behavior questionnaire [79]

Busschaert etl al. 2015

66

Adults:

36%;

47.7 (10.5) yr;

Older adults:

61%;

72.2 (4.4) yr;

BEL

ActivPAL

Adults:

Average day 0.49 (0.18; 0.71) P = 0.004

Wk 0.52 (0.22; 0.73) P = 0.002

Wknd 0.36 (− 0.29; 0.40) P = 0.743

Older Adults:

Average day 0.48 (0.16; 0.71) P = 0.005

Wk 0.50 (0.19; 0.72) P = 0.003

Wknd 0.38 (0.04; 0.64) P = 0.030

Fair

SIT-Q-7d; last 7-d sedentary behavior questionnaire [80]

Wijndeale et al.2014

53

38%;

38.4 (11.3) yr;

BEL

ActivPAL + domain log

Dutch version

Total 0.52 P < 0.001

Meals 0.21 P > 0.05

Transportation 0.46 P < 0.001

Occupation 0.63 P < 0.001

Screen time 0.76 P < 0.001

Other 0.36 P < 0.05

Dutch

MD 59 min (LoA − 4.81; 8.17)

Good

STAR-Q [81]

Csizmadi et al. 2014

102

40%;

M: 50.6 (6.9) yr

F: 46.0 (8.6) yr;

CAN

Doubly Labeled Water and 7-d activity diary

Total 0.40 P < 0.001

Occupational sitting 0.75

Poor

TASST TAxonomy of Self-report SB Tools [31]

6) Sum of behaviours

Chastin et al. 2018

700

48%;

64–83 yr;

GBR

ActivPal

Previous day

6) 0.23

Previous wk

6) 0.32

Unanchored

6) 0.33

All P-values< 0.001

Previous day

6) -651; 367

Previous wk

6) -755; 265

Unanchored

6) -725; 286

Excellent

WSQ; Workforce Sitting Questionnaire [82]

Chau et al. 2011

95

37%;

18–60+ yr;

AUS

Actigraph GT1M

Work: 0.45

workday: 0.34

non-work: 0.23

Total: 0.40

Total MD 44.55

(LoA − 295.31; 384.41)

Work day MD 1.58 (LoA − 227.86; 231.02)

Poor

WSQ; Workforce Sitting Questionnaire [50]

van Nassau et al. 2015

42

14%;

38 (11) yr;

AUS

ActivPAL

Day 1: 0.25 (P > 0.05)

Day 2: 0.29 (P > 0.05)

Day 3: 0.30 (P > 0.05)

No exact numbers available for MD and LoA, figure onlyFair

WSQ; Workforce Sitting Questionnaire [83]

Toledo et al. 2019

546

25%;

45.1 (16.4) yr;

USA

ActivPAL

MD (95% CI):

Work hours 47.9 min (39.2; 56.6)

Non work hours on workdays − 38.3 (− 47.4; − 29.1)

Non work hours on non-workdays − 106.7 (− 124.0; −  89.5)

Kappa agreement (95% CI): 0.13 (0.08; 0.18)

Poor
Clark et al. 2015 [84]700

45%;

59 yr (range 35–65+);

AUS

ActivPAL30.46 (0.40; 0.52)0.53*average hrs (LoA ±4,32 h)Excellent
Clemes et al. 2012 [33]44

30%;

41.5 (12.8) yr;

GBR

ActiGraph

Domain specific:

wk.: 0.54 (P < 0.001)

wknd: 0.13 (P = 0.41)

ICC

Domain:

wk.: 0.64 (P < 0.001)

wknd: 0.20 (P = 0.23)

Poor
Marshall et al. 2010 [86]101

38%;

F: 51–59 yr

M: < 50 - > 60 yr;

AUS

7-d behaviour log for correlation coefficient and ActiGraph GT1M for Bland-Altman plots

Travel

F wk. 0.47; wknd 0.20

M wk. 0.64; wknd 0.15

Work

F wk. 0.69; wknd 0.38

M wk. 0.74; wknd 0.13

TV

F wk. 0.61; wknd 0.53

M wk. 0.50; wknd 0.33

Computer

F wk. 0.74; wknd 0.64

M wk. 0.69; wknd 0.61

Other Leisure

F wk. 0.26; wknd 0.42

M wk. 0.21; wknd 0.19

F

Wk:-63.6 (− 395.5; 268.4)

Wknd: 10.8 (− 396.0; 419.7)

Poor
Van Cauwenberg et al. 2014 [87]442

45%;

74.2 (6.2) yr;

BEL

Actigraph GT3X +0.30 (P < 0.001)

MD − 81.88

(LoA − 364.16; 200.41) at 540 min/d

Poor
Visser et al. 2013 [88]83

51%;

74.3 (6.9) yr;

NLD

Actigraph Model GT3X0.35 (P < 0.05)

MD − 2.1 hrs

(LoA − 7.40; 3.25)

Poor
Logs and diaries

7-day SLIPA Log; (7-day Sedentary and Light Intensity Physical Activity Log) [89]

Barwais et al. 2014

22

48%;

26.5 (4.1) yr;

USA

GT3X0.86 (0.70; 0.94)

MD − 0.3 hrs

(LoA − 2.1; 1.6)

Poor

BAR; Bouchard Activity Record [90]

Hart et al. 2011

32

50%;

F: 30.2 (9.5) yr

M: 29.1 (7.9) yr; USA

ActivPAL0.87 P < 0.05Fair

BeWell24 Self-Monitoring App

Toledo et al. 2017 [91]

17

85%;

49.0 (8.9) yr;

USA

ActivPAL3c

ICC 0.35 (0.04; 0.56)

MD − 160.4 min

(LoA-179.8; − 141.0)

Poor

cpar24; Computer-Based 24-Hour Physical Activity Recall Instrument [92]

Kohler et al. 2017

49

49%;

50 (22–69) yr;

DEU

ActiGraph GT3X0.54

MD − 31 min

(LoA − 380; 319)

Poor

EMA; Ecological Momentary Assessment [93]

Knell et al. 2017

168

33%;

43.4 (13.1) yr;

USA

ActiGraph GT3X0.16 (P = 0.03)Poor

MARCA; Multimedia Activity Recall for Children and Adults [32]

Aguilar-Farias et al. 2015

33

34%;

74.5 (7.6) yr;

AUS

ActivPAL 3day 0.63; wk.: 0.67; wknd: 0.47Fair

MARCA; Multimedia Activity Recall for Children and Adults [94]

Gomersall et al. 2015

5852%; 28 (7.4) yr; AUSActivPAL0.77 (0.64; 0.86) P < 0.01MD 0.59 hrs (LoA − 2.35; 3.53)Good

PAMS; Physical Activity Measurement Survey [95]

Kim et al. 2017

1356

42%;

46.2 (SE 0.4) yr;

USA

SenseWear Armband Mini

Day 1: 0.45 (P = 0.04)

Day 2: 0.49 (P = 0.04)

LoA − 618.6; 176.0 minPoor

PDR; Previous Day Recall [45]

Kozey Keadle et al. 2014

1547%; 33.1 (11.5) yr; USADirect observation

ICC

Total 0.81 (0.58; 0.91) Home 0.96 (0.91; 0.98) Work/School 0.93 (0.86; 0.97 Community 0.71 (0.47; 0.86) Household activity 0.84 (0.69; 0.93) Work 0.88 (0.75; 0.94)

Education 0.12 (− 0.29; 0.48)

Transportation 0.62 (0.32; 0.81)

Leisure 0.55 (0.23; 0.77)

Poor

Time Use Survey

van der Ploeg et al. 2010 [96]

129

59%;

18–63 yr;

AUS

ActiGraph GT1M

Household

Day 1: 0.39 (P < 0.05)

Day 2: 0.49 (P < 0.05)

Leisure time

Day 1: 0.56 (P < 0.05)

Day 2: 0.47 (P < 0.05)

Transportation

Day 1: 0.50 (P < 0.05)

Day 2: 0.42 (P < 0.05)

Non-occupational sedentary time

Day 1: 0.57 (P < 0.05)

Day 2: 0.59 (P < 0.05)

Poor

Updated PDR; Updated Previous Day Recall [97]

Matthews et al. 2013

88

46%;

41.3 (14.8) yr;

USA

ActivPal

M 0.81 (0.05)

F 0.81 (0.04)

M MD 0.72 hrs

(LoA − 2.61; 4.05)

F MD 0.75 hrs

(LoA − 2.21; 3.71)

Good

F: female, M: male, MD: mean difference, LoA: limits of agreement

Table 3

Reliability of subjective sedentary behaviour measurement tools

First author (year)Measure examinedReliabilityQuality of study
IntervalnICC (95%CI)Other results
1-item questionnaires

EEPAQ; Elderly EXERNET Physical Activity Questionnaire [17]

Lopez-Rodriguez et al. 2017

2 wk730.68Good

GPAQ; Global Physical Activity Questionnaire [21]

Chu et al. 2018

1 wk78

Self-administered: 0.68 (0.47; 0.82)

Interview-administered: 0.78 (0.64; 0.88)

Good

IPAQ (short); International Physical Activity Questionnaire [26]

Craig et al. 2003

8–10 d2721

Correlation

Range: 0.18–0.95

Fair

IPAQ (short); International Physical Activity Questionnaire) [44]

Rosenberg et al. 2008

3–7 d255/257

Wk 0.59

Wknd 0.72

Total 0.81

Good

Modified MOSPA-Q; MONICA Optional Study on Physical Activity Questionnaire [28]

Chau et al. 2012

1 wk750.54 (0.36; 0.68)Good

PPAQ; Paffenbarger Physical Activity Questionnaire [29]

Simpson et al. 2015

3–6 mo1300.71 (0.61; 0.74)

Correlation

3 mo 0.39 (0.33; 0.51)

6 mo 0.43 (0.43; 0.60)

Fair

SED-GIH [30]

Larsson et al. 2018

5.2 d (min

1 d, max 16 d)

940.86 (95% CI 0.79–0.90)

Weighted Kappa

0.77 (95% CI 0.68–0.86)

Good

SQ; Single Question [32]

Aguilar-Farias et al. 2015

1 wk38D 0.79; wk. 0.80; wknd: 0.78Fair

TASST; TAxonomy of Self-report SB Tools [34]

1) Single item total times; 2) TV time

Dontje et al. 2018

1d, 1 wk18

Previous day recall:

1) 0.414 (0.227; 0.655)

2) 0.595 (0.412; 0.783)

Previous week recall:

1) 0.531 (0.1; 0.794)

2) 0.856 (0.657; 0.944)

Poor

YPAS; Yale Physical Activity Survey for Older Adults [36]

Gennuso et al. 2015

10 d580.588 P < 0.001Good
Gao et al. 2017 [102]1 d70Day-to-day variation: 9.4% ± 11.4%Poor
2–9-item questionnaires

AQuAA; Activity Questionnaire for Adults and Adolescents [38]

Chinapaw et al. 2009

2 wk470.60 (0.40; 0.74)Good

CHAMPS; Community Health Activities Model Program for Seniors [40]

Hekler et al. 2012

6 mo7480.56Fair
CHAMPS; Community Health Activities Model Program for Seniors [36] Gennuso et al. 201710 d58

CHAMPS: 0.638

P < 0.001

Good

FPACQ; Flemish Physical Activity Computerized Questionnaire [41]

Matton et al. 2007

2 wk102

Employed / unemployed

Eat M 0.74 (0.53; 0.86); F 0.67 (0.43; 0.82)

Sleep M 0.84 (0.70; 0.92); F 0.83 (0.70; 0.91)

Tv M 0.93 (0.86; 0.97); F 0.92 (0.84; 0.96)

Retired individuals

Eat M 0.24 (− 0.20; 0.61); F 0.14 (− 0.35; 0.58)

Sleep M 0.94 (0.86; 0.98); F 0.90 (0.75; 0.97)

Tv M 0.76 (0.49; 0.89); F 0.89 (0.72; 0.96)

Good

IPAQ (long); International Physical Activity Questionnaire [82]

Chau et al. 2011

1 wk95

Wk: 0.69 (0.56; 0.78)

Wknd: 0.65 (0.51; 0.76)

Total: 0.73 (0.61; 0.81)

Good

IPAQ (long); International Physical Activity Questionnaire [26]

Craig et al. 2003

8–10 d2721Range: 0.28–0.93Fair

IPAQ (long); International Physical Activity Questionnaire [44]

Rosenberg et al. 2008

3–7 d255/257

Wk 0.81

Wknd 0.84

Total 0.82

Good

OPAQ; Occupational Physical Activity Questionnaire [48]

Reis et al. 2005

2 wk410.78 (0.62; 0.87)Fair

OSPAQ; Occupational Sitting and Physical Activity Questionnaire [28]

Chau et al. 2012

1 wk840.89 (0.83; 0.92)Good
OSPAQ; Occupational Sitting and Physical Activity Questionnaire [51] Jancey et al. 20147 d990.66 (0.49; 0.77)Good

OSPAQ; Occupational Sitting and Physical Activity Questionnaire [49]

Pedersen et al. 2016

1 wk750.44 (0.24; 0.60)Good

PASB-Q; Physical Activity and Sedentary Behavior Questionnaire [54]

Fowles et al. 2017

7 d35

Correlation

Total SB: 0.85

Breaks: 0.86

Work: 0.88

Leisure: 0.66

All P < 0.05

Fair
Regicor Short Physical Activity Questionnaire [59] Molina et al. 20171 wk1140.908 (0.867; 0.937)Fair

RPAQ; Recent Physical Activity Questionnaire [58]

Besson at el. 2010

F 14.3 (3.7) d

M 16.4 (5.9) d

1310.76 (P < 0.001)No exact numbers available for MD and LoA, figure onlyGood

SCCS PAQ; Southern Community Cohort Study Physical Activity Questionnaire [60]

Buchowski et al. 2012

12–15 mo118

Correlation

Total: 0.33, P = 0.002

In car/bus: 0.33, P = 0.002

At work: 0.48, P < 0.001

Viewing TV/movies: 0.53, P< 0.001

Using home computer: 0.25, P = 0.02

Other: 0.24, P = 0.02

Poor
SITBRQ: Workplace Sitting Breaks Questionnaire [61] Pedisic et al. 20147–14 d96

Correlation

Freq breaks: 0.71 (0.59; 0.79)

Duration breaks: 0.59 (0.45; 0.71)

Cohen’s kappa

Freq breaks: 0.74 (0.64; 0.84)

Duration breaks: 0.61 (0.38; 0.85)

Good

Stand Up For Your Health Questionnaire [62]

Gardiner et al. 2011

7 d48

Total: 0.52 (0.27; 0.70)

TV viewing: 0.76 (0.62; 0.86)

Computer use: 0.79 (0.65; 0.88)

Reading: 0.74 (0.51; 0.86)

Socializing: 0.38 (0.11; 0.60)

Transport: 0.40 (0.14; 0.61)

Hobbies: 0.35 (0.07; 0.58)

Other: 0.04 (− 0.25; 0.32)

Fair
STAQ; Sedentary, Transportation and Activity Questionnaire [63] Mensah et al. 20161 mo32

Total 0.52 (0.22; 0.73)

Leisure 0.37 (0.03; 0.62)

Transport 0.28 (− 0.06; 0.56)

Work 0.71 (0.49; 0.84)

See article for more settings

Good

Survey of older adults’ sedentary time [64]

Gennuso et al. 2016

7 d440.48 P < 0.001Fair

Web-based physical activity questionnaire Active-Q [65]

Bonn et al. 2015

3 wk1480.80 (0.74–0.86)Good

WSWQ; Percentage-Method Improves Properties of Workers’ Sitting- and Walking-Time Questionnaire [66]

Matsoe et al. 2016

1 wk62

Non-working time:

Time = 0.49 (0.28–0.66)

Percentage = 0.71 (0.56–0.81)

Non-working day:

Time = 0.64 (0.47–0.76)

Percentage = 0.78 (0.66–0.86)

Good
Mielke et al. 2020 [70]7 d78Lin’s CCC 0.87 (0.81–0.92)Poor
Sudholz et al. 2017 [71]7 d59

Sitting time 0.78

(0.65; 0.86)

Breaks 0.65

(0.48; 0.78)

Good
≥10-item questionnaires

ASBQ: Adult sedentary Behaviour Questionnaire [21]

Chu et al. 2018

1 wk84

Self-administered:

Total 0.74 (0.51; 0.86)

Work 0.70 (0.43; 0.84)

Transport 0.59 (0.22; 0.78)

Eating 0.73 (0.48; 0.86)

TV 0.85 (0.73; 0.92) Computer 0.57 (0.32; 0.75)

Other 0.33 (0.04; 0.57)

Interview-administered

Total 0.66 (0.37; 0.81)

Work 0.89 (0.80; 0.94) Transport 0.78 (0.59; 0.88) Eating: 0.71 (0.47; 0.84)

TV 0.81 (0.67; 0.89) Computer 0.62 (0.40; 0.78) Other 0.42 (0.13; 0.64)

Good

MPAQ; Madras Physical Activity Questionnaire [73]

Anjana et al. 2015

1 mo543

Total: 0.81

TV viewing: 0.67

Good

MSTQ; Multicontext Sitting Time Questionnaire [74]

Whitfield et al. 2013

7.2 d (− 3; 13.9)21

Workday:

Total 0.76 (0.50; 0.89)

Working/reading/studying:

0.83 (0.62; 0.93)

TV/movie: 0.93 (0.84; 0.97)

Computer/video games: 0.39 (0.00; 0.70)

Transport: 0.97 (0.93; 0.99)

Socializing: 0.27 (0.00; 0.62)

Non-working:

Total 0.72 (0.42; 0.87)

Working/reading/studying: 0.65 (0.31; 0.84)

Tv/movies: 0.85 (0.67; 0.94)

Computer/video games: 0.84 (0.64; 0.93)

Transport: 0.70 (0.40; 0.87)

Socializing: 0.62 (0.27; 0.83)

Poor

SBQ; Sedentary Behaviour Questionnaire [77]

Rosenberg et al. 2010

2 wk49

Weekdays:

Total: 0.85 (0.75; 0.91) TV: 0.86 (0.76; 0.92) Computer games: 0.83 (0.72; 0.90). Sit listen to music: 0.71 (0.54; 0.83).

Sit and talk on telephone: 0.81 (0.68; 0.89). Work: 0.77 (0.63; 0.87). Reading: 0.64 (0.44; 0.78). Playing music: 0.90 (0.82; 0.94). Arts and crafts: 0.70 (0.53; 0.82).

Sitting driving in car: 0.76 (0.61; 0.86).

Weekend

Total: 0.77 (0.63; 0.86) TV: 0.83 (0.72; 0.90). Computer games: 0.80 (0.67; 0.88). Sit listen to music: 0.67 (0.49; 0.80).

Sit and talk on telephone: 0.73 (0.57; 0.84). Work: 0.64 (0.44; 0.61). Reading:0.48 (0.24; 0.67). Playing music: 0.93 (0.87; 0.96). Arts and crafts: 0.51 (0.27; 0.69). Sitting driving in car: 0.72 (0.56; 0.83).

Fair

SIT-Q; Sedentary Behavior Questionnaire [78]

Lynch et al. 2014

1 mo64

Total: 0.65 (0.49; 0.78)

Meals: 0.60 (0.42; 0.74)

Transportation: 0.59 (0.41; 0.73)

Work, study, and volunteering: 0.86 (0.78; 0.91)

Leisure: 0.61 (0.43; 0.74)

Good

SIT-Q-7d; last 7-d sedentary behavior questionnaire [79]

Busschaert etl al. 2015

Adults: 14 ± 5 d

Older adults: 9 ± 1 d

42

Adults:

Range 0.06; 1.00

Older adults:

Range − 0.20; 1.00

Poor

SIT-Q-7d; last 7-d sedentary behavior questionnaire [80]

Wijndeale et al.2014

3.3 wk. (2; 8 wk)

Dutch: 53

English:

281

Average day

Dutch

Total: 0.68 (0.50; 0.81)

Transportation: 0.58 (0.37; 0.74)

Occupation: 0.66 (0.46; 0.79)

Screen time: 0.50 (0.26; 0.68)

Other leisure time: 0.52 (0.29; 0.70)

Breaks occupation:0.26 (− 0.07; 0.54)

Breaks TV viewing: 0.31 (− 0.01; 0.57)

English

Total: 0.53 (0.44; 0.62)

Transportation:0.50 (0.40; 0.58)

Occupation: 0.74 (0.67; 0.80)

Screen time: 0.61 (0.53; 0.67)

Other leisure time: 0.45 (0.35; 0.54

Breaks occupation: 0.12 (− 0.04; 0.28)

Breaks TV viewing: 0.28 (0.15; 0.39)

See article for more settings and weekdays / weekend days

Good

STAR-Q [81]

Csizmadi et al. 2014

3 mo

6 mo

95

96

Total: 0.53 (0.37; 0.66)

0.45 (0.28; 0.59)

Work: 0.69 (0.57; 0.78) 0.69 (0.57; 0.78)

TV viewing: 0.72 (0.61; 0.80) 0.63 (0.49; 0.74)

Computer: 0.60 (0.46; 0.71) 0.62 (0.48; 0.73)

Reading: 0.56 (0.41; 0.68) 0.39 (0.21; 0.55)

Fair

TASST TAxonomy of Self-report SB Tools [34]

Dontje et al. 2018

1 d, 1 wk18

Previous day recall:

Sum of behaviours 0.743 (0.591; 0.874)

Previous week recall:

Sum of behaviours 0.758 (0.462; 0.902)

Poor

WSQ; Workforce Sitting Questionnaire [82]

Chau et al. 2011

1 wk95

Workday

Total: 0.65 (0.51; 0.75)

Transport: 0.67 (0.54; 0.77)

Work: 0.63 (0.49; 0.74)

TV: 0.91 (0.87; 0.94)

Computer: 0.56 (0.40; 0.69)

Other leisure activities: 0.68 (0.55; 0.78)

Non-work

Total: 0.80 (0.72; 0.87)

Transport: 0.60 (0.45; 0.72)

Work: 0.50 (0.33; 0.64)

TV: 0.79 (0.69; 0.85)

Computer: 0.81 (0.73; 0.87)

Other leisure activities: 0.59 (0.44; 0.71)

Total

0.73 (0.61; 0.81)

Good
Ishii et al. 2018 [85]2 wk34

Total

0.74 (0.55–0.86)

Workday

Car 0.85 (0.71–0.92)

Public transport 0.60 (0.33; 0.78)

Work 0.89 (0.80; 0.95)

TV 0.76 (0.58; 0.88)

Computer 0.72 (0.51; 0.85)

Leisure 0.45 (0.15; 0.68)

Total 0.77 (0.60; 0.88)

Non-workday

Car 0.53 (0.24; 0.74)

Public transport 0.20 (− 0.15; 0.78)

Work − 0.07 (− 0.40; 0.28)

TV 0.79 (0.63; 0.89)

Computer 0.72 (0.51; 0.85)

Leisure 0.46 (0.14; 0.69)

Total 0.53 (0.24; 0.73)

Fair
Marshall et al. 2010 [86]

mean 11 d

(range 7–28 d)

101

Work

M 0.86 (0.79; 0.90)

F 0.79 (0.73; 0.84)

TV

M wk. 0.65 (0.52; 0.75);

wknd 0.62 (0.48; 0.73)

Computer

F wk. 0.63 (0.52; 0.71);

wknd: 0.72 (0.64; 0.79)

M wk. 0.62 (0.48; 0.73); wknd: 0.59 (0.44; 0.71)

Total sedentary time

M Wk MD − 4.3 min (LoA − 189.2; 180.7)

Wknd MD − 8.1 min (LoA − 195.0; 178.8)

F Wk MD − 3.9 min

(LoA − 235.4; 227.5)

Wknd MD − 5.6 min (LoA − 125.1; 113.9)

Good
Van Cauwenberg et al. 2014 [87]8 d (1.7)428

Total 0.77 (0.57; 0.89)

TV viewing: 0.92 (0.83; 0.96)

Computer use: 0.76 (0.54; 0.88)

Reading: 0.60 (0.29; 0.79)

Hobbies: 0.57 (0.26; 0.78)

Seated conversation/listening: 0.40 (0.04; 0.67)

Telephone: 0.69 (0.43; 0.84)

Public transport: 0.46 (0.11; 0.71)

Driving car: 0.79 (0.59; 0.90)

Passenger in car: 0.11 (− 0.27; 0.46)

Household: 0.12 (− 0.18; 0.53)

Resting: 0.20 (− 0.18; 0.53)

Eating: 0.46 (0.11; 0.71)

Good
Visser et al. 2013 [88]23 d (SD 8)630.71 (0.57; 0.81)Fair
Logs and diaries

BeWell24 Self-Monitoring App [91]

Toledo et al. 2017

2 wk170.65 (0.43; 0.82)Poor

cpar24; Computer-Based 24-Hour Physical Activity Recall Instrument [92]

Kohler et al. 2017

3 hrs670.75Fair

MARCA; Multimedia Activity Recall for Children and Adults [32]

Aguilar-Farias et al. 2015

0.5–1 hrs382 days before 0.72; yesterday 0.96Fair

Time Use Survey [96]

van der Ploeg et al. 2014

7 d134

Non-occupational

0.55 (0.42; 0.66)

Occupational

0.63 (0.51; 0.72)

Excellent

F: female, M: male, MD: mean difference, LoA: limits of agreement, d: day, wk: week, mo: month

Construct validity of subjective sedentary behaviour measurement tools EEPAQ; Elderly EXERNET Physical Activity Questionnaire [17] Lopez-Rodriguez et al. 2017 15%; 71.96 (5.48) yr; ESP 0.574 P < 0.01 GPAQ: Global Physical Activity Questionnaire [21] Chu et al. 2018 31%; 20–65 yr; SGP Self-administered: 0.46 (0.18; 0.68) Interview administered: 0.12 (− 0.11; 0.33) MD − 175.8 min (LoA − 556.1; 206.5) More details are provided in study GPAQ: Global Physical Activity Questionnaire [20] Cleland et al. 2014 54%; 44 (14) yr; GBR 0.187 P = 0.135 88%; M: 38 (8) yr F: 50 (7) yr; SVN MD − 165 min (LoA − 429; 99) GPAQ: Global Physical Activity Questionnaire [18] Laeremens et al. 2017 45%; 35 (10) yr; BEL, ESP, GBR Mid-season: 0.09 P > 0.05 Summer: 0.25 P < 0.01 Winter: 0.24 P < 0.01 GPAQ: Global Physical Activity Questionnaire [22] Metcalf et al. 2018 31%; 49.4 yr (range: 19.8–68.7); USA GPAQ: Global Physical Activity Questionnaire [23] Rudolf et al. 2020 43%; 28.3 (12.2) yr; DEU GPAQ with illustration of exemplary physical activities: 0.32 P = 0.02 GPAQ without illustration: 0.29 P = 0.03 GPAQ: Global Physical Activity Questionnaire [19] Wanner et al. 2017 49%; 47.0 (15) yr; CHE IPAQ (short); International Physical Activity Questionnaire [26] Craig et al. 2003 25–73%; 18–65 yr; 12 countries IPAQ (short); International Physical Activity Questionnaire [43] Prince et al. 2018 0%; 42.8 (11.9) yr; CAN IPAQ: MD 451.9–0.826* min IPAQ (short); International Physical Activity Questionnaire) [44] Rosenberg et al. 2008 45%; 35.9 (11.3) yr; GBR, USA, NLD Modified MOSPA-Q; MONICA Optional Study on Physical Activity Questionnaire [28] Chau et al. 2012 40%; 19–60+ yr; AUS PPAQ; Paffenbarger Physical Activity Questionnaire [29] Simpson et al. 2015 49%; M: 43.8 (15.8) yr F: 44.3 (16.5) yr; USA SED-GIH [30] Larsson et al. 2018 33%; 42.9 (8.9) yr; SWE SQ; Single Question [32] Aguilar-Farias et al. 2015 34%; 74.5 (7.6) yr; AUS SQ; Single Question [33] Clemes et al. 2012 30%; 41.5 (12.8) yr; GBR wk: 0.70 (P < 0.001) wknd: 0.55 (P < 0.001) ICC wk.: 0.82 (P < 0.001) wknd: 0.69 (P < 0.001) TASST; TAxonomy of Self-report SB Tools [31] 1) Single item total times; 2) Single item proportion; 3) TV time Chastin et al. 2018 48%; 64–83 yr; GBR Previous day 1) 0.20; 2) 0.28; 3) 0.24 Previous wk 1) 0.23; 2) 0.36; 3) 0.23 Unanchored 1) 0.20; 2) 0.32; 3) 0.26 All P-values< 0.001 Previous day 1) LoA − 147; 561 2) LoA − 22; 48 3) LoA 145; 733 Previous wk 1) LoA; − 150; 564 2) LoA; − 19; 43 3) LoA 81; 732 Unanchored 1) LoA − 135; 549 2) LoA − 19; 51 3) LoA 125; 705 T-SQ; Total sitting questionnaire [35] Kozey-Keadle et al. 2012 75%; 46.5 (10.8) yr; USA Wk MD 40.5 min (− 125.2; 22.3) Wknd MD 147.4 min (− 228.3; − 66.6) TV-Q; TV viewing [35] Kozey-Keadle et al. 2012 75%; 46.5 (10.8); USA YPAS; Yale Physical Activity Survey for Older Adults [36] Gennuso et al. 2015 kappa − 0.0003, (− 0.0025; 0.0019) 41.4%; 33.1 (10.7) yr; CHI, FIN 3 months: 0.53 (95% CI 0.34–0.68), P < 0.001 Previous day: 0.53 (95% CI 0.45–0.61) P < 0.001 3 months: MD 2.4% (LoA − 0.5%; 5.3%) Previous day: MD 2.2% (LoA 0.7%; 3.6%) MD 204.1 min (LoA 112.4–0.6*min; 463.6+  0.6*min) AQuAA; Activity Questionnaire for Adults and Adolescents [38] Chinapaw et al. 2009 36%; 30.1 (3.6) yr; NLD Cancer Prevention Study-3 Sedentary Time Survey [39] Rees-Punia et al. 2018 41%; 51.7 yr (range 31–72); USA Actigraph GT3x accelerometer + diary CHAMPS; Community Health Activities Model Program for Seniors [40] Hekler et al. 2012 43%; 66–80+ yr; USA Actigraph model 7164 and 71,256 MD − 2841.6 min (LoA − 4476.7; − 1206.5) CHAMPS; Community Health Activities Model Program for Seniors [36] Gennuso et al. 2017 CHAMPS: MD −5.21 hrs (LoA − 2.2; − 8.3) FPACQ; Flemish Physical Activity Computerized Questionnaire [41] Matton et al. 2007 77%; 22–78 yr; BEL Employed / unemployed Eat: M 0.53 (P< 0.01); F 0.56 (P< 0.01) Sleep M 0.69 (P< 0.001); F 0.60 (P< 0.001) Tv M 0.69 (P< 0.001); F 0.83 (P< 0.001) Retired Eat M 0.33; F 0.15 Sleep M 0.57 (P< 0.01); F 0.51 (P< 0.05) Tv M 0.78 (P< 0.001); F 0.80 (P< 0.001) FPACQ; Flemish Physical Activity Computerized Questionnaire [42] Scheers et al. 2012 41.4 (9.8) yr; BEL Total sedentary time 0.54 (P < 0.001) Screen time 0.57 (P = 0.648) Motorized transport 0.58 (P < 0.001) IPAQ (long); International Physical Activity Questionnaire [27] Chastin et al. 2014 67%; 41.1 (9.0) yr; GBR 0.159 (P = 0.193) IPAQ (long); International Physical Activity Questionnaire [82] Chau et al. 2011 37%; 18–60+ yr; AUS Wk: 0.47 Wknd: 0.31 Total: 0.46 IPAQ (long); International Physical Activity Questionnaire [46] Cleland et al. 2018 57%; 71.8 (6.6) yr; GBR Wk: 0.70 (P < 0.01) Wknd: 0.26 Wk: MD −168.6 min (LoA − 451.8; 114.6) Wknd d: MD − 173.9 min (LoA − 441.6; 93.8) IPAQ (long); International Physical Activity Questionnaire [26] Craig et al. 2003 25–73%; 18–65 yr; 12 countries IPAQ (long); International Physical Activity Questionnaire [44] Rosenberg et al. 2008 45%; 35.9 (11.3) yr; GBR, USA, NLD IPAQ (long); International Physical Activity Questionnaire [47] Ryan et al. 2018 48%; 73.7 (6.3) yr; GBR IPAQ (long); International Physical Activity Questionnaire [25] Wanner et al. 2016 45%; 54.6 yr; CHE MD 26.4 min (LoA − 12.0; 64.9) OPAQ; Occupational Physical Activity Questionnaire [48] Reis et al. 2005 32%; 38.8 (9.9) yr; USA OSPAQ; Occupational Sitting and Physical Activity Questionnaire [28] Chau et al. 2012 40%; 19–60+ yr; AUS OSPAQ; Occupational Sitting and Physical Activity Questionnaire [51] Jancey et al. 2014 41%; 18–50+ yr; AUS ActiGraph GT3X + on the waist or thigh MD − 25.4 min (LoA − 784.7; 733.9) OSPAQ; Occupational Sitting and Physical Activity Questionnaire [49] Pedersen et al. 2016 25%; 45.62 (10.96) yr; AUS MD 3.16% (LoA − 21.4%; 15.1%) OSPAQ; Occupational Sitting and Physical Activity Questionnaire [50] van Nassau et al. 2015 14%; 38 (11) yr; AUS Day 1: 0.37 (P < 0.05) Day 2: 0.48 (P < 0.05) Day 3: 0.35 (P < 0.05) PAS2; Physical Activity Scale [52] Pedersen et al. 2017 38%; 46.7 (8.5) yr; DNK MD −2.3 hrs (LoA − 9.04; 4.34) PASBAQ; Physical Activity and Sedentary Behaviour Assessment Questionnaire [53] Scholes et al. 2014 46%; M: 52.7 (17.7) yr F: 51.8 (17.8) yr; GBR Sedentary time for different cut-off points M < 50 cpm 0.25 (0.19; 0.31); < 100 cpm 0.25 (0.19; 0.30); < 200 cpm 0.23 (0.17; 0.29) F < 50 cpm 0.31 (0.25; 0.37); < 100 cpm 0.30 (0.24; 0.35); < 200 cpm 0.27 (0.21; 0.32) PASB-Q; Physical Activity and Sedentary Behavior Questionnaire [54] Fowles et al. 2017 19%; M: 63 (9) yr F: 55 (10) yr; USA Total SB: 0.29 P = 0.13 Breaks: 0.02 P > 0.05 PAST-U; Past-day Adults’ Sedentary Time University) [55] Clark et al. 2016 53%; 26 (IQR 23; 31) yr; AUS ICC 0.64 (0.45; 0.77) MD 0.08 hrs (LoA − 3.9; 4.1) PAT Survey; Physical Activity and Transit Survey [56] Yi et al. 2015 39%; 18–65+ yr; USA 0.32 P < 0.001 MD: 49 min (LoA − 441; 343) RPAQ; Recent Physical Activity Questionnaire [58] Besson at el. 2010 50%; F 34.3 (8.8) yr M 35.2 (9.9) yr; GBR RPAQ; Recent Physical Activity Questionnaire [57] Golubic et al. 2014 F: 0.20 (0.14; 0.25) M: 0.25 (0.19; 0.31) F: MD −3.3 hrs (LoA − 9.0; 4.1) M: MD − 2.3 hrs (LoA − 8.3; 5.5) Total MD − 3.1 hrs (LoA − 9.6; 4.9) 45%; 54.5 (12.1) yr; ESP SCCS PAQ; Southern Community Cohort Study Physical Activity Questionnaire [60] Buchowski et al. 2012 48%; 54.5 (8.4) yr; USA 37%; 18–60+ yr; AUS Freq: 0.24 (0.07; 0.40) Duration: 0.05 (− 0.12; 0.22) Stand Up For Your Health Questionnaire [62] Gardiner et al. 2011 27%; 72.8 (8.1) yr; AUS MD − 9.20 + 0.67 hrs (LoA ± 3.82) STAQ; Sedentary, Transportation and Activity Questionnaire [63] Mensah et al. 2016 47%; 40.5 (14.3) yr; FRA Total 0.54 (P < 0.001) Work 0.88 (P < 0.001) Transport 0.35 (P = 0.001) Leisure time 0.19 (P = 0.09) TV/DVD 0.46 (P < 0.001) Computer/tablet/video game 0.42 (P < 0.001) TASST; TAxonomy of Self-report SB Tools [31] 4) Sum of domains; 5) Patterns Chastin et al. 2018 48%; 64–83 yr; GBR Previous day 4) 0.23; 5) 0.17 Previous wk 4) 0.30; 5) 0.23 Unanchored 4) 0.16; 5) 0.02 All P-values< 0.001 Previous day 4) LoA − 273; 533 5) LoA − 472; 748 Previous wk 4) LoA − 413; 482 5) LoA − 529; 727 Unanchored 4) LoA-373; 529 5) LoA − 34; 980 All P-values < 0.001 0.06 (P = 0.72) Web-based physical activity questionnaire Active-Q [65] Bonn et al. 2015 100%; 65.4 (8.7) yr; SWE WSWQ; Percentage-Method Improves Properties of Workers’ Sitting- and Walking-Time Questionnaire [66] Matsoe et al. 2016 58%; F 35.8 (7.5) yr M 46.3 (8.0) yr; JPN Time method At work: 0.56 Work day, not at work: 0.51 Non-workday: 0.37 Percentage method At work: 0.65 Work day, not at work: 0.60 Non-workday: 0.53 All P < 0.05 Time method At work: MD −7 min (LoA − 241; 241) Non-workday: MD − 115 min (LoA − 588; 358) Percentage method At work: MD 35 min (LoA − 200; 269) Non-workday: MD − 56 min (LoA − 392; 281) Cartmel et al. 1992 [72] Questionnaire A Questionnaire B 38%; M 69 (66–80) yr; F 74 (59–83) yr; USA Time difference Qa 230 min P < 0.001 Qb 40 min, P = 0.47 40%; Median 34.9 (28.5–46.0) yr; AUS Sedentary time 0.39 (0.22; 0.53) Sedentary breaks 0.26 (0.11; 0.44) Sedentary time MD −2.75 + 0.47* hrs (LoA ±2.25) Active style Pro, HJA-350IT Total 0.49, P < 0.001 Workdays 0.57, P < 0.001 Non-workdays 0.23, P < 0.001 Total MD − 13.4 min/d (LoA − 361.9; 335.2) Workdays MD − 0.4 min/d (LoA − 378.9; 378.1) Non-workdays MD − 49.2 min/d (LoA − 477.7; 379.2) 100%; 79 (71–93) yr; GBR ActiGraph GT3X + 0.17 P < 0.001 53%; 40.9 (8.6) yr; DNK Work: Total 0.081 (P = 0.699) Uninterrupted sitting 0.315(P = 0.126) Leisure time at workday: Total − 0.185 (P = 0.366) Uninterrupted sitting − 0.069 (P = 0.762) Leisure day: Total 0.100 (P = 0.626) Uninterrupted sitting 0.063 (P = 0.770) Work: MD 0.0 (LoA −3.4; 3.4) Leisure: MD 2.4 (LoA − 7.8; 3.0) Uninterrupted sitting: MD 0.5 (LoA − 1.1; 2.1) 58%; 32.1 (9.9) yr; AUS Sitting time 0.24 (− 1.0; 0.47) Breaks 0.39 (0.25; 0.74) ASBQ; Adult Sedentary Behaviour Questionnaire [21] Chu et al. 2018 Self-administered: 0.31 (− 0.02; 0.58) Interview administered: − 0.07 (− 0.37; 0.24) MD 4.6 min/d (LoA − 431.2; 440.4) More details see full study D-SQ; Domain-Specific Questionnaire [35] Kozey-Keadle et al. 2012 75%; 46.5 (10.8) yr; USA Wk 176 min (96.1; 256.9) Wknd 157.6 min (22.1; 293.0) MPAQ; Madras Physical Activity Questionnaire [73] Anjana et al. 2015 53%; 44.4 (14.2) yr; IND MSTQ; Multicontext Sitting Time Questionnaire [74] Whitfield et al. 2013 44%; 34.5 (7.7) yr; USA ActiGraph GT1M Work 0.34 P = 0.13 Non-working 0.61 P= 0.01 49%; 60.5 (9.4) yr; CHE Total minutes 0.37 (0.33; 0.41) Total % of time 0.39 (0.35; 0.43) PAST-WEEK-U [76] Moulin et al. 2019 12%; ≤ 19 yr: 64% 20–24 yr: 36%; CAN NIGHTLY-WEEK-U [76] Moulin et al. 2019 4%; ≤ 19 yr: 48%; 20–24 yr: 52%; CAN MD 0.21 hrs/day (LoA − 1.75; 2.17) SBQ: Sedentary Behaviour Questionnaire [24] Kastelic et al. 2019 88%; M: 38 (8) yr F: 50 (7) yr; SVN MD − 181 min (LoA − 467; 105) SBQ; Sedentary Behaviour Questionnaire [43] Prince et al. 2018 5%; 42.8 (11.9) yr; CAN SBQ; Sedentary Behaviour Questionnaire [77] Rosenberg et al. 2010 48%; M: 43.9 (8.0) yr F: 41.2 (8.7) yr; USA Wk − 0.02 (0.78) Wknd − 0.005 (0.93) Total − 0.01 (0.81) SIT-Q; Sedentary Behavior Questionnaire [78] Lynch et al. 2014 41%; 38.0 (19.5) yr; CAN 1) Diary – postural definition 2) Diary MET-based definition 1) Postural definition Total 0.53 (P < 0.01) Meals 0.19 (P = 0.11) Transportation 0.37 (P < 0.01) Work, study, and volunteering 0.76 (P < 0.01) Care 0.49 (P < 0.01) Leisure time 0.26 (P = 0.03) 2) MET-based definition Total 0.52 (P < 0.01) Meals 0.29 (P = 0.01) Transportation 0.34 (P < 0.01) Work, study, and volunteering 0.75 (P < 0.01) Care 0.46 (P < 0.01) Leisure time 0.26 (P = 0.03) SIT-Q-7d; last 7-d sedentary behavior questionnaire [79] Busschaert etl al. 2015 Adults: 36%; 47.7 (10.5) yr; Older adults: 61%; 72.2 (4.4) yr; BEL Adults: Average day 0.49 (0.18; 0.71) P = 0.004 Wk 0.52 (0.22; 0.73) P = 0.002 Wknd 0.36 (− 0.29; 0.40) P = 0.743 Older Adults: Average day 0.48 (0.16; 0.71) P = 0.005 Wk 0.50 (0.19; 0.72) P = 0.003 Wknd 0.38 (0.04; 0.64) P = 0.030 SIT-Q-7d; last 7-d sedentary behavior questionnaire [80] Wijndeale et al.2014 38%; 38.4 (11.3) yr; BEL Dutch version Total 0.52 P < 0.001 Meals 0.21 P > 0.05 Transportation 0.46 P < 0.001 Occupation 0.63 P < 0.001 Screen time 0.76 P < 0.001 Other 0.36 P < 0.05 Dutch MD 59 min (LoA − 4.81; 8.17) STAR-Q [81] Csizmadi et al. 2014 40%; M: 50.6 (6.9) yr F: 46.0 (8.6) yr; CAN Total 0.40 P < 0.001 Occupational sitting 0.75 TASST TAxonomy of Self-report SB Tools [31] 6) Sum of behaviours Chastin et al. 2018 48%; 64–83 yr; GBR Previous day 6) 0.23 Previous wk 6) 0.32 Unanchored 6) 0.33 All P-values< 0.001 Previous day 6) -651; 367 Previous wk 6) -755; 265 Unanchored 6) -725; 286 WSQ; Workforce Sitting Questionnaire [82] Chau et al. 2011 37%; 18–60+ yr; AUS Work: 0.45 workday: 0.34 non-work: 0.23 Total: 0.40 Total MD 44.55 (LoA − 295.31; 384.41) Work day MD 1.58 (LoA − 227.86; 231.02) WSQ; Workforce Sitting Questionnaire [50] van Nassau et al. 2015 14%; 38 (11) yr; AUS Day 1: 0.25 (P > 0.05) Day 2: 0.29 (P > 0.05) Day 3: 0.30 (P > 0.05) WSQ; Workforce Sitting Questionnaire [83] Toledo et al. 2019 25%; 45.1 (16.4) yr; USA MD (95% CI): Work hours 47.9 min (39.2; 56.6) Non work hours on workdays − 38.3 (− 47.4; − 29.1) Non work hours on non-workdays − 106.7 (− 124.0; −  89.5) Kappa agreement (95% CI): 0.13 (0.08; 0.18) 45%; 59 yr (range 35–65+); AUS 30%; 41.5 (12.8) yr; GBR Domain specific: wk.: 0.54 (P < 0.001) wknd: 0.13 (P = 0.41) ICC Domain: wk.: 0.64 (P < 0.001) wknd: 0.20 (P = 0.23) 38%; F: 51–59 yr M: < 50 - > 60 yr; AUS Travel F wk. 0.47; wknd 0.20 M wk. 0.64; wknd 0.15 Work F wk. 0.69; wknd 0.38 M wk. 0.74; wknd 0.13 TV F wk. 0.61; wknd 0.53 M wk. 0.50; wknd 0.33 Computer F wk. 0.74; wknd 0.64 M wk. 0.69; wknd 0.61 Other Leisure F wk. 0.26; wknd 0.42 M wk. 0.21; wknd 0.19 F Wk:-63.6 (− 395.5; 268.4) Wknd: 10.8 (− 396.0; 419.7) 45%; 74.2 (6.2) yr; BEL MD − 81.88 (LoA − 364.16; 200.41) at 540 min/d 51%; 74.3 (6.9) yr; NLD MD − 2.1 hrs (LoA − 7.40; 3.25) 7-day SLIPA Log; (7-day Sedentary and Light Intensity Physical Activity Log) [89] Barwais et al. 2014 48%; 26.5 (4.1) yr; USA MD − 0.3 hrs (LoA − 2.1; 1.6) BAR; Bouchard Activity Record [90] Hart et al. 2011 50%; F: 30.2 (9.5) yr M: 29.1 (7.9) yr; USA BeWell24 Self-Monitoring App Toledo et al. 2017 [91] 85%; 49.0 (8.9) yr; USA ICC 0.35 (0.04; 0.56) MD − 160.4 min (LoA-179.8; − 141.0) cpar24; Computer-Based 24-Hour Physical Activity Recall Instrument [92] Kohler et al. 2017 49%; 50 (22–69) yr; DEU MD − 31 min (LoA − 380; 319) EMA; Ecological Momentary Assessment [93] Knell et al. 2017 33%; 43.4 (13.1) yr; USA MARCA; Multimedia Activity Recall for Children and Adults [32] Aguilar-Farias et al. 2015 34%; 74.5 (7.6) yr; AUS MARCA; Multimedia Activity Recall for Children and Adults [94] Gomersall et al. 2015 PAMS; Physical Activity Measurement Survey [95] Kim et al. 2017 42%; 46.2 (SE 0.4) yr; USA Day 1: 0.45 (P = 0.04) Day 2: 0.49 (P = 0.04) PDR; Previous Day Recall [45] Kozey Keadle et al. 2014 ICC Total 0.81 (0.58; 0.91) Home 0.96 (0.91; 0.98) Work/School 0.93 (0.86; 0.97 Community 0.71 (0.47; 0.86) Household activity 0.84 (0.69; 0.93) Work 0.88 (0.75; 0.94) Education 0.12 (− 0.29; 0.48) Transportation 0.62 (0.32; 0.81) Leisure 0.55 (0.23; 0.77) Time Use Survey van der Ploeg et al. 2010 [96] 59%; 18–63 yr; AUS Household Day 1: 0.39 (P < 0.05) Day 2: 0.49 (P < 0.05) Leisure time Day 1: 0.56 (P < 0.05) Day 2: 0.47 (P < 0.05) Transportation Day 1: 0.50 (P < 0.05) Day 2: 0.42 (P < 0.05) Non-occupational sedentary time Day 1: 0.57 (P < 0.05) Day 2: 0.59 (P < 0.05) Updated PDR; Updated Previous Day Recall [97] Matthews et al. 2013 46%; 41.3 (14.8) yr; USA M 0.81 (0.05) F 0.81 (0.04) M MD 0.72 hrs (LoA − 2.61; 4.05) F MD 0.75 hrs (LoA − 2.21; 3.71) F: female, M: male, MD: mean difference, LoA: limits of agreement Reliability of subjective sedentary behaviour measurement tools EEPAQ; Elderly EXERNET Physical Activity Questionnaire [17] Lopez-Rodriguez et al. 2017 GPAQ; Global Physical Activity Questionnaire [21] Chu et al. 2018 Self-administered: 0.68 (0.47; 0.82) Interview-administered: 0.78 (0.64; 0.88) IPAQ (short); International Physical Activity Questionnaire [26] Craig et al. 2003 Correlation Range: 0.18–0.95 IPAQ (short); International Physical Activity Questionnaire) [44] Rosenberg et al. 2008 Wk 0.59 Wknd 0.72 Total 0.81 Modified MOSPA-Q; MONICA Optional Study on Physical Activity Questionnaire [28] Chau et al. 2012 PPAQ; Paffenbarger Physical Activity Questionnaire [29] Simpson et al. 2015 Correlation 3 mo 0.39 (0.33; 0.51) 6 mo 0.43 (0.43; 0.60) SED-GIH [30] Larsson et al. 2018 5.2 d (min 1 d, max 16 d) Weighted Kappa 0.77 (95% CI 0.68–0.86) SQ; Single Question [32] Aguilar-Farias et al. 2015 TASST; TAxonomy of Self-report SB Tools [34] 1) Single item total times; 2) TV time Dontje et al. 2018 Previous day recall: 1) 0.414 (0.227; 0.655) 2) 0.595 (0.412; 0.783) Previous week recall: 1) 0.531 (0.1; 0.794) 2) 0.856 (0.657; 0.944) YPAS; Yale Physical Activity Survey for Older Adults [36] Gennuso et al. 2015 AQuAA; Activity Questionnaire for Adults and Adolescents [38] Chinapaw et al. 2009 CHAMPS; Community Health Activities Model Program for Seniors [40] Hekler et al. 2012 CHAMPS: 0.638 P < 0.001 FPACQ; Flemish Physical Activity Computerized Questionnaire [41] Matton et al. 2007 Employed / unemployed Eat M 0.74 (0.53; 0.86); F 0.67 (0.43; 0.82) Sleep M 0.84 (0.70; 0.92); F 0.83 (0.70; 0.91) Tv M 0.93 (0.86; 0.97); F 0.92 (0.84; 0.96) Retired individuals Eat M 0.24 (− 0.20; 0.61); F 0.14 (− 0.35; 0.58) Sleep M 0.94 (0.86; 0.98); F 0.90 (0.75; 0.97) Tv M 0.76 (0.49; 0.89); F 0.89 (0.72; 0.96) IPAQ (long); International Physical Activity Questionnaire [82] Chau et al. 2011 Wk: 0.69 (0.56; 0.78) Wknd: 0.65 (0.51; 0.76) Total: 0.73 (0.61; 0.81) IPAQ (long); International Physical Activity Questionnaire [26] Craig et al. 2003 IPAQ (long); International Physical Activity Questionnaire [44] Rosenberg et al. 2008 Wk 0.81 Wknd 0.84 Total 0.82 OPAQ; Occupational Physical Activity Questionnaire [48] Reis et al. 2005 OSPAQ; Occupational Sitting and Physical Activity Questionnaire [28] Chau et al. 2012 OSPAQ; Occupational Sitting and Physical Activity Questionnaire [49] Pedersen et al. 2016 PASB-Q; Physical Activity and Sedentary Behavior Questionnaire [54] Fowles et al. 2017 Correlation Total SB: 0.85 Breaks: 0.86 Work: 0.88 Leisure: 0.66 All P < 0.05 RPAQ; Recent Physical Activity Questionnaire [58] Besson at el. 2010 F 14.3 (3.7) d M 16.4 (5.9) d SCCS PAQ; Southern Community Cohort Study Physical Activity Questionnaire [60] Buchowski et al. 2012 Correlation Total: 0.33, P = 0.002 In car/bus: 0.33, P = 0.002 At work: 0.48, P < 0.001 Viewing TV/movies: 0.53, P< 0.001 Using home computer: 0.25, P = 0.02 Other: 0.24, P = 0.02 Correlation Freq breaks: 0.71 (0.59; 0.79) Duration breaks: 0.59 (0.45; 0.71) Cohen’s kappa Freq breaks: 0.74 (0.64; 0.84) Duration breaks: 0.61 (0.38; 0.85) Stand Up For Your Health Questionnaire [62] Gardiner et al. 2011 Total: 0.52 (0.27; 0.70) TV viewing: 0.76 (0.62; 0.86) Computer use: 0.79 (0.65; 0.88) Reading: 0.74 (0.51; 0.86) Socializing: 0.38 (0.11; 0.60) Transport: 0.40 (0.14; 0.61) Hobbies: 0.35 (0.07; 0.58) Other: 0.04 (− 0.25; 0.32) Total 0.52 (0.22; 0.73) Leisure 0.37 (0.03; 0.62) Transport 0.28 (− 0.06; 0.56) Work 0.71 (0.49; 0.84) See article for more settings Survey of older adults’ sedentary time [64] Gennuso et al. 2016 Web-based physical activity questionnaire Active-Q [65] Bonn et al. 2015 WSWQ; Percentage-Method Improves Properties of Workers’ Sitting- and Walking-Time Questionnaire [66] Matsoe et al. 2016 Non-working time: Time = 0.49 (0.28–0.66) Percentage = 0.71 (0.56–0.81) Non-working day: Time = 0.64 (0.47–0.76) Percentage = 0.78 (0.66–0.86) Sitting time 0.78 (0.65; 0.86) Breaks 0.65 (0.48; 0.78) ASBQ: Adult sedentary Behaviour Questionnaire [21] Chu et al. 2018 Self-administered: Total 0.74 (0.51; 0.86) Work 0.70 (0.43; 0.84) Transport 0.59 (0.22; 0.78) Eating 0.73 (0.48; 0.86) TV 0.85 (0.73; 0.92) Computer 0.57 (0.32; 0.75) Other 0.33 (0.04; 0.57) Interview-administered Total 0.66 (0.37; 0.81) Work 0.89 (0.80; 0.94) Transport 0.78 (0.59; 0.88) Eating: 0.71 (0.47; 0.84) TV 0.81 (0.67; 0.89) Computer 0.62 (0.40; 0.78) Other 0.42 (0.13; 0.64) MPAQ; Madras Physical Activity Questionnaire [73] Anjana et al. 2015 Total: 0.81 TV viewing: 0.67 MSTQ; Multicontext Sitting Time Questionnaire [74] Whitfield et al. 2013 Workday: Total 0.76 (0.50; 0.89) Working/reading/studying: 0.83 (0.62; 0.93) TV/movie: 0.93 (0.84; 0.97) Computer/video games: 0.39 (0.00; 0.70) Transport: 0.97 (0.93; 0.99) Socializing: 0.27 (0.00; 0.62) Non-working: Total 0.72 (0.42; 0.87) Working/reading/studying: 0.65 (0.31; 0.84) Tv/movies: 0.85 (0.67; 0.94) Computer/video games: 0.84 (0.64; 0.93) Transport: 0.70 (0.40; 0.87) Socializing: 0.62 (0.27; 0.83) SBQ; Sedentary Behaviour Questionnaire [77] Rosenberg et al. 2010 Weekdays: Total: 0.85 (0.75; 0.91) TV: 0.86 (0.76; 0.92) Computer games: 0.83 (0.72; 0.90). Sit listen to music: 0.71 (0.54; 0.83). Sit and talk on telephone: 0.81 (0.68; 0.89). Work: 0.77 (0.63; 0.87). Reading: 0.64 (0.44; 0.78). Playing music: 0.90 (0.82; 0.94). Arts and crafts: 0.70 (0.53; 0.82). Sitting driving in car: 0.76 (0.61; 0.86). Weekend Total: 0.77 (0.63; 0.86) TV: 0.83 (0.72; 0.90). Computer games: 0.80 (0.67; 0.88). Sit listen to music: 0.67 (0.49; 0.80). Sit and talk on telephone: 0.73 (0.57; 0.84). Work: 0.64 (0.44; 0.61). Reading:0.48 (0.24; 0.67). Playing music: 0.93 (0.87; 0.96). Arts and crafts: 0.51 (0.27; 0.69). Sitting driving in car: 0.72 (0.56; 0.83). SIT-Q; Sedentary Behavior Questionnaire [78] Lynch et al. 2014 Total: 0.65 (0.49; 0.78) Meals: 0.60 (0.42; 0.74) Transportation: 0.59 (0.41; 0.73) Work, study, and volunteering: 0.86 (0.78; 0.91) Leisure: 0.61 (0.43; 0.74) SIT-Q-7d; last 7-d sedentary behavior questionnaire [79] Busschaert etl al. 2015 Adults: 14 ± 5 d Older adults: 9 ± 1 d Adults: Range 0.06; 1.00 Older adults: Range − 0.20; 1.00 SIT-Q-7d; last 7-d sedentary behavior questionnaire [80] Wijndeale et al.2014 Dutch: 53 English: 281 Average day Dutch Total: 0.68 (0.50; 0.81) Transportation: 0.58 (0.37; 0.74) Occupation: 0.66 (0.46; 0.79) Screen time: 0.50 (0.26; 0.68) Other leisure time: 0.52 (0.29; 0.70) Breaks occupation:0.26 (− 0.07; 0.54) Breaks TV viewing: 0.31 (− 0.01; 0.57) English Total: 0.53 (0.44; 0.62) Transportation:0.50 (0.40; 0.58) Occupation: 0.74 (0.67; 0.80) Screen time: 0.61 (0.53; 0.67) Other leisure time: 0.45 (0.35; 0.54 Breaks occupation: 0.12 (− 0.04; 0.28) Breaks TV viewing: 0.28 (0.15; 0.39) See article for more settings and weekdays / weekend days STAR-Q [81] Csizmadi et al. 2014 3 mo 6 mo 95 96 Total: 0.53 (0.37; 0.66) 0.45 (0.28; 0.59) Work: 0.69 (0.57; 0.78) 0.69 (0.57; 0.78) TV viewing: 0.72 (0.61; 0.80) 0.63 (0.49; 0.74) Computer: 0.60 (0.46; 0.71) 0.62 (0.48; 0.73) Reading: 0.56 (0.41; 0.68) 0.39 (0.21; 0.55) TASST TAxonomy of Self-report SB Tools [34] Dontje et al. 2018 Previous day recall: Sum of behaviours 0.743 (0.591; 0.874) Previous week recall: Sum of behaviours 0.758 (0.462; 0.902) WSQ; Workforce Sitting Questionnaire [82] Chau et al. 2011 Workday Total: 0.65 (0.51; 0.75) Transport: 0.67 (0.54; 0.77) Work: 0.63 (0.49; 0.74) TV: 0.91 (0.87; 0.94) Computer: 0.56 (0.40; 0.69) Other leisure activities: 0.68 (0.55; 0.78) Non-work Total: 0.80 (0.72; 0.87) Transport: 0.60 (0.45; 0.72) Work: 0.50 (0.33; 0.64) TV: 0.79 (0.69; 0.85) Computer: 0.81 (0.73; 0.87) Other leisure activities: 0.59 (0.44; 0.71) Total 0.73 (0.61; 0.81) Total 0.74 (0.55–0.86) Workday Car 0.85 (0.71–0.92) Public transport 0.60 (0.33; 0.78) Work 0.89 (0.80; 0.95) TV 0.76 (0.58; 0.88) Computer 0.72 (0.51; 0.85) Leisure 0.45 (0.15; 0.68) Total 0.77 (0.60; 0.88) Non-workday Car 0.53 (0.24; 0.74) Public transport 0.20 (− 0.15; 0.78) Work − 0.07 (− 0.40; 0.28) TV 0.79 (0.63; 0.89) Computer 0.72 (0.51; 0.85) Leisure 0.46 (0.14; 0.69) Total 0.53 (0.24; 0.73) mean 11 d (range 7–28 d) Work M 0.86 (0.79; 0.90) F 0.79 (0.73; 0.84) TV M wk. 0.65 (0.52; 0.75); wknd 0.62 (0.48; 0.73) Computer F wk. 0.63 (0.52; 0.71); wknd: 0.72 (0.64; 0.79) M wk. 0.62 (0.48; 0.73); wknd: 0.59 (0.44; 0.71) Total sedentary time M Wk MD − 4.3 min (LoA − 189.2; 180.7) Wknd MD − 8.1 min (LoA − 195.0; 178.8) F Wk MD − 3.9 min (LoA − 235.4; 227.5) Wknd MD − 5.6 min (LoA − 125.1; 113.9) Total 0.77 (0.57; 0.89) TV viewing: 0.92 (0.83; 0.96) Computer use: 0.76 (0.54; 0.88) Reading: 0.60 (0.29; 0.79) Hobbies: 0.57 (0.26; 0.78) Seated conversation/listening: 0.40 (0.04; 0.67) Telephone: 0.69 (0.43; 0.84) Public transport: 0.46 (0.11; 0.71) Driving car: 0.79 (0.59; 0.90) Passenger in car: 0.11 (− 0.27; 0.46) Household: 0.12 (− 0.18; 0.53) Resting: 0.20 (− 0.18; 0.53) Eating: 0.46 (0.11; 0.71) BeWell24 Self-Monitoring App [91] Toledo et al. 2017 cpar24; Computer-Based 24-Hour Physical Activity Recall Instrument [92] Kohler et al. 2017 MARCA; Multimedia Activity Recall for Children and Adults [32] Aguilar-Farias et al. 2015 Time Use Survey [96] van der Ploeg et al. 2014 Non-occupational 0.55 (0.42; 0.66) Occupational 0.63 (0.51; 0.72) F: female, M: male, MD: mean difference, LoA: limits of agreement, d: day, wk: week, mo: month

Assessment of construct validity and reliability

Criterion validity was defined as the degree to which the outcome measure measures the construct it purposes to measure [103]. Thigh-worn accelerometry (e.g. activPAL) was considered as the gold standard for total sedentary time, as they can more accurately distinguish between sitting and standing [11]. Hip-, waist- and wrist-worn accelerometers are frequently used as criterion measure. However, these accelerometers are not sensitive enough to distinguish between stationary standing and sitting [104]. On these grounds, studies using only hip-, waist- and wrist-worn accelerometers as criterion measure were graded with a lower level of evidence. In addition, if validity results of both thigh-worn accelerometers or hip-, waist- and wrist-worn accelerometers were included in the study, only the results of the thigh-worn accelerometers were reported in this review. Reliability was defined as the degree of consistency and reproducibility of a measurement tool. Test-retest reliability is often assessed using an ICC [103]. Since Pearson and Spearman correlation coefficients neglect systematic errors, the use of Pearson and Spearman correlation coefficient was considered as inadequate and these studies were graded with a lower level of evidence. In addition, if studies provided both ICCs and correlation coefficients, only ICCs were reported in this review. An ICC > 0.90 was considered as excellent, ICC between 0.75–0.90 was considered as good, ICC between 0.50–0.75 as moderate and > 0.50 as poor [105].

Data analyses

A meta-analysis using random effects [106] was performed to assess the pooled validity of the 1-item questionnaires, 2 to 9-item questionnaires, ≥10-item questionnaires and logs/diaries. A random effect model was used because it was unlikely that included studies were functional equivalent and results of the included studies had a large heterogeneity. Only studies expressing validity as Pearson or Spearman correlation coefficients were included in this analysis. When no correlation coefficient was provided for total sedentary time, an (unweighted) mean was calculated based on correlation coefficients of all setting and domains. Finally, I2 was calculated, which describes the proportion of total variation in effect size that was due to systematic differences between effect sizes rather than by chance [106]. Stratified analyses including only studies examining questionnaires with a good-to-excellent quality were performed to investigate if the quality of the study affected the pooled validity. Meta-analyses were performed using R with ‘Meta-Analysis with Correlations’ (MAc) package, version 1.1.1.

Results

Search results

The literature search resulted in 2423 hits (Fig. 1). After excluding duplicates, 1272 studies were screened for title and abstract. Most papers were not eligible for this review because: i. the articles did not aim to determine SB, ii. no measurement properties were assessed, and/or iii. The study was performed in children or diseased populations. In total 82 studies and 75 self-reported measurement tools were included (Table 1).

Attributes of the questionnaires, logs and diaries

The majority of the subjective measures were questionnaires and contained different domains and settings of SB (Table 2). Measurement tools differed regarding the timing (week vs weekend), recall period and number of questions. Nearly all self-reported measurement tools expressed SB in total sitting time (hrs/day or hrs/week). The PASB-Q, SITBRQ, SIT-Q, SIT-Q-7d, TASST and several other questionnaires [31, 54, 61, 67, 69, 71, 78, 79] included total sitting time, but also information about sitting bout duration or breaks in sitting time.

Validity

A total of 80 studies examined the validity of one or more methods to assess SB, resulting in a comparison of 96 unique methods (Table 2). Of the 96 results, 5 were ranked with an excellent quality of the study, 7 studies with a good quality, 9 with a fair quality and 75 with a poor quality. The most important shortcoming of the validation studies was the use of an accelerometer (n = 62) to examine criterion validity of the method to assess SB. A total of 29 studies used the gold standard approach (thigh-worn accelerometer), three studies used diaries/logs and one used direct observation to assess construct validity. Most studies calculated correlation coefficients between the criterion measure and the self-reported questionnaire, which ranged between − 0.01 to 0.90 for total sedentary time and ranged between 0.02 to 0.39 for number of sedentary bouts or breaks (Table 3). Other studies used ICCs (N = 8), kappa values (N = 2), and sensitivity and specificity outcomes (N = 1) to determine the validity, and some added Bland-Altman plots with a mean difference and limits of agreement to examine the accuracy of the method to assess SB (N = 48). Figure 2a provides an overview of the correlation coefficient of all individual studies combined with the quality of the study.
Fig. 2

Overview of construct validity (a) and test retest reliability (b). 1 EEPAQ, Lopez-Rodriguez et al. 2017; 2 GPAQ, Chu et al. 2018; 3 GPAQ, Cleland et al. 2014; 4 GPAQ, Kastelic et al. 2019; 5 GPAQ, Laeremens et al. 2017; 6 GPAQ, Metcalf et al. 2018; 7 GPAQ, Rudolf et al. 2020; 8 GPAQ, Wanner et al. 2017; 9 IPAQ (short), Craig et al. 2003; 10 IPAQ (short), Prince et al. 2018; 11 IPAQ (short), Rosenberg et al. 2008; 12 Modified MOSPA-Q, Chau et al. 2012; 13 PPAQ, Simpson et al. 2015; 14 SED-GIH,; 15 SQ, Aguilar-Farias et al. 2015; 16 SQ, Clemes et al. 2012; 17 TASST Single item total times, Dontje et al. 2018; 18 TASST TV time, Dontje et al. 2019; 19 TASST Single item total times, Chastin et al. 2018; 20 TASST Single item proportion, Chastin et al. 2018; 21 TASST TV time, Chastin et al. 2018; 22 T-SQ, Kozey-Keadle et al. 2012; 23 TV-Q, Kozey-Keadle et al. 2012; 24 YPAS, Gennuso et al. 2015; 25 Single item proportion (3 months), Gao et al. 2017; 26 Single item proportion (1 day), Gao et al. 2017; 27 Gupta et al. 2017 [29]; 28 AQuAA, Chinpaw et al. 2009; 29 Cancer Prevention Study-3 Sedentary Time Survey, Rees-Punia et al. 2018; 30 CHAMPS, Hekler et al. 2012; 31 CHAMPS, Gennuso et al. 2017; 32 FPACQ, Matton et al. 2007; 33 FPACQ, Scheers et al. 2012; 34 IPAQ (long), Chastin et al. 2014; 35 IPAQ (long), Chau et al. 2011; 36 IPAQ (long), Cleland et al. 2018; 37 IPAQ (long), Craig et al. 2003; 38 IPAQ (long), Rosenberg et al. 2008; 39 IPAQ (long), Ruan et al. 2018; 40 IPAQ (long), Wanner et al. 2016; 41 OPAQ, Reis et al. 2005; 42 OSPAQ, Chau et al. 2012; 43 OSPAQ, Jancey et al. 2014; 44 OSPAQ, Pedersen et al. 2016; 45 OSPAQ, van Nassau et al. 2015; 46 PAS2, Pedersen et al. 2017; 47 PASBAQ, Scholes et al. 2014; 48 PASB-Q total SB, Fowles et al. 2017; 49 PASB-Q breaks, Fowles et al. 2017; 50 PAST-U, Clark et al. 2016; 51 PAT Survey, Yi et al. 2015; 52 RPAQ, Besson at el. 2010; 53 RPAQ, Golubic et al. 2014; 54 Regicor Short Physical Activity Questionnaire [47] Molina et al. 2017; 55 SCCS PAQ, Buchowski et al. 2012; 56 SITBRQ bout frequency, Pedisic et al. 2014; 57 SITBRQ bout duration, Pedisic et al. 2014; 58 Stand Up For Your Health Questionnaire, Gardiner et al. 2011; 59 STAQ, Mensah et al. 2016; 60 TASST, Sum of domains, Dontje et al. 2018; 61 TASST Sum of domains, Chastin et al. 2018; 62 TASST Patterns, Chastin et al. 2018; 63 Survey of older adults’ sedentary time, Gennuso et al. 2016; 64 Web-based physical activity questionnaire Active-Q, Bonn et al. 2015; 65 WSWQ Time method, Matsoe et al. 2016; 66 WSWQ Percentage method, Matsoe et al. 2016; 67 Sedentary time, Clark et al. 2011; 68 Sedentary breaks, Clark et al. 2011; 69 Jefferis et al. 2016; 70 Lagersted-Olsen et al. 2014; 71 Mielke et al. 2020; 72 Sitting time, Sudholz et al. 2017; 73 Sitting breaks, Sudholz et al. 2017; 74 ASBQ, Chu et al. 2018; 75 D-SQ, Kozey-Keadle et al. 2012; 76 MPAQ, Anjana et al. 2015; 77 MSTQ, Whitfield et al. 2013; 78 PAFQ sitting time, Verhoog et al. 2019; 79 PAFQ sitting proportion, Verhoog et al. 2019; 80 PAST-WEEK-U, Moulin et al. 2020; 81 NIGHTLY-WEEK-U, Moulin et al. 2020; 82 SBQ, Kastelic et al. 2019; 83 SBQ, Prince et al. 2018; 84 SBQ, Rosenberg et al. 2010; 85 SIT-Q, Lynch et al. 2014; 86 SIT-Q-7d, Busschaert et al. 2015; 87 SIT-Q-7d, Wijndeale et al.2014; 88 STAR-Q, Csizmadi et al. 2014; 89 TASST Chastin et al. 2018; 90 WSQ, Chau et al. 2011; 91 WSQ, van Nassau et al. 2015; 92 WSQ, Toledo et al. 2019; 93 Clark et al. 2015; 94 Clemes et al. 2012; 95 Ishii et al. 2018; 96 Marshall et al. 2010; 97 Van Cauwenberg et al. 2014; 98 Visser et al. 2013 [64]; 99 7-day SLIPA Log, Barwais et al. 2014; 100 BAR, Hart et al. 2011; 101 BeWell24 Self-Monitoring App, Toledo et al. 2017; 102 cpar24, Kohler et al. 2017; 103 EMA, Knell et al. 2017; 104 MARCA, Aguilar-Farias et al. 2015; 105 MARCA, Gomersall et al. 2015; 106 PAMS, Kim et al. 2017; 107 Time Use Survey, van der Ploeg et al. 2014; 108 Updated PDR, Matthews et al. 2013. The studies within each category are place randomly to avoid overlap when they are aligned. An ICC > 0.90 was considered as excellent, ICC between 0.75–0.90 was considered as good, ICC between 0.50–0.75 as moderate and > 0.50 as poor

Overview of construct validity (a) and test retest reliability (b). 1 EEPAQ, Lopez-Rodriguez et al. 2017; 2 GPAQ, Chu et al. 2018; 3 GPAQ, Cleland et al. 2014; 4 GPAQ, Kastelic et al. 2019; 5 GPAQ, Laeremens et al. 2017; 6 GPAQ, Metcalf et al. 2018; 7 GPAQ, Rudolf et al. 2020; 8 GPAQ, Wanner et al. 2017; 9 IPAQ (short), Craig et al. 2003; 10 IPAQ (short), Prince et al. 2018; 11 IPAQ (short), Rosenberg et al. 2008; 12 Modified MOSPA-Q, Chau et al. 2012; 13 PPAQ, Simpson et al. 2015; 14 SED-GIH,; 15 SQ, Aguilar-Farias et al. 2015; 16 SQ, Clemes et al. 2012; 17 TASST Single item total times, Dontje et al. 2018; 18 TASST TV time, Dontje et al. 2019; 19 TASST Single item total times, Chastin et al. 2018; 20 TASST Single item proportion, Chastin et al. 2018; 21 TASST TV time, Chastin et al. 2018; 22 T-SQ, Kozey-Keadle et al. 2012; 23 TV-Q, Kozey-Keadle et al. 2012; 24 YPAS, Gennuso et al. 2015; 25 Single item proportion (3 months), Gao et al. 2017; 26 Single item proportion (1 day), Gao et al. 2017; 27 Gupta et al. 2017 [29]; 28 AQuAA, Chinpaw et al. 2009; 29 Cancer Prevention Study-3 Sedentary Time Survey, Rees-Punia et al. 2018; 30 CHAMPS, Hekler et al. 2012; 31 CHAMPS, Gennuso et al. 2017; 32 FPACQ, Matton et al. 2007; 33 FPACQ, Scheers et al. 2012; 34 IPAQ (long), Chastin et al. 2014; 35 IPAQ (long), Chau et al. 2011; 36 IPAQ (long), Cleland et al. 2018; 37 IPAQ (long), Craig et al. 2003; 38 IPAQ (long), Rosenberg et al. 2008; 39 IPAQ (long), Ruan et al. 2018; 40 IPAQ (long), Wanner et al. 2016; 41 OPAQ, Reis et al. 2005; 42 OSPAQ, Chau et al. 2012; 43 OSPAQ, Jancey et al. 2014; 44 OSPAQ, Pedersen et al. 2016; 45 OSPAQ, van Nassau et al. 2015; 46 PAS2, Pedersen et al. 2017; 47 PASBAQ, Scholes et al. 2014; 48 PASB-Q total SB, Fowles et al. 2017; 49 PASB-Q breaks, Fowles et al. 2017; 50 PAST-U, Clark et al. 2016; 51 PAT Survey, Yi et al. 2015; 52 RPAQ, Besson at el. 2010; 53 RPAQ, Golubic et al. 2014; 54 Regicor Short Physical Activity Questionnaire [47] Molina et al. 2017; 55 SCCS PAQ, Buchowski et al. 2012; 56 SITBRQ bout frequency, Pedisic et al. 2014; 57 SITBRQ bout duration, Pedisic et al. 2014; 58 Stand Up For Your Health Questionnaire, Gardiner et al. 2011; 59 STAQ, Mensah et al. 2016; 60 TASST, Sum of domains, Dontje et al. 2018; 61 TASST Sum of domains, Chastin et al. 2018; 62 TASST Patterns, Chastin et al. 2018; 63 Survey of older adults’ sedentary time, Gennuso et al. 2016; 64 Web-based physical activity questionnaire Active-Q, Bonn et al. 2015; 65 WSWQ Time method, Matsoe et al. 2016; 66 WSWQ Percentage method, Matsoe et al. 2016; 67 Sedentary time, Clark et al. 2011; 68 Sedentary breaks, Clark et al. 2011; 69 Jefferis et al. 2016; 70 Lagersted-Olsen et al. 2014; 71 Mielke et al. 2020; 72 Sitting time, Sudholz et al. 2017; 73 Sitting breaks, Sudholz et al. 2017; 74 ASBQ, Chu et al. 2018; 75 D-SQ, Kozey-Keadle et al. 2012; 76 MPAQ, Anjana et al. 2015; 77 MSTQ, Whitfield et al. 2013; 78 PAFQ sitting time, Verhoog et al. 2019; 79 PAFQ sitting proportion, Verhoog et al. 2019; 80 PAST-WEEK-U, Moulin et al. 2020; 81 NIGHTLY-WEEK-U, Moulin et al. 2020; 82 SBQ, Kastelic et al. 2019; 83 SBQ, Prince et al. 2018; 84 SBQ, Rosenberg et al. 2010; 85 SIT-Q, Lynch et al. 2014; 86 SIT-Q-7d, Busschaert et al. 2015; 87 SIT-Q-7d, Wijndeale et al.2014; 88 STAR-Q, Csizmadi et al. 2014; 89 TASST Chastin et al. 2018; 90 WSQ, Chau et al. 2011; 91 WSQ, van Nassau et al. 2015; 92 WSQ, Toledo et al. 2019; 93 Clark et al. 2015; 94 Clemes et al. 2012; 95 Ishii et al. 2018; 96 Marshall et al. 2010; 97 Van Cauwenberg et al. 2014; 98 Visser et al. 2013 [64]; 99 7-day SLIPA Log, Barwais et al. 2014; 100 BAR, Hart et al. 2011; 101 BeWell24 Self-Monitoring App, Toledo et al. 2017; 102 cpar24, Kohler et al. 2017; 103 EMA, Knell et al. 2017; 104 MARCA, Aguilar-Farias et al. 2015; 105 MARCA, Gomersall et al. 2015; 106 PAMS, Kim et al. 2017; 107 Time Use Survey, van der Ploeg et al. 2014; 108 Updated PDR, Matthews et al. 2013. The studies within each category are place randomly to avoid overlap when they are aligned. An ICC > 0.90 was considered as excellent, ICC between 0.75–0.90 was considered as good, ICC between 0.50–0.75 as moderate and > 0.50 as poor

Meta-analyses

The correlation coefficients of logs and diaries (correlation coefficient estimate [R] = 0.63 [95% CI 0.48–0.78], I2: 95%) were substantially higher than the coefficients of the questionnaires (R = 0.35 [95% CI 0.32–0.39], I2: 90%). Furthermore, correlation coefficient estimates of the questionnaires with ≥10-item (R = 0.37 [95% CI 0.30–0.43], I2: 86%)) did not differ much from the questionnaires with fewer items (1-item questionnaire R = 0.34 [95% CI 0.30–0.39], I2: 68%; 2 to 9-item questionnaires R = 0.35 [95% CI 0.29–0.41], I2: 93%) (Fig. 2a). Stratified analyses, including only studies examining questionnaires with a good-to-excellent quality, revealed similar results (R questionnaires = 0.35 [95% CI 0.28–0.42], I2: 87%).

Reliability

Reliability for total sitting time and number of breaks in sitting time was determined in 44 studies. One study was rated with excellent quality; other studies were rated with good (n = 27), fair (n = 16), and poor (n = 8) quality. Most studies with a lower quality of the study were limited by a small sample size and calculation of correlation coefficients instead of ICCs. The time interval between the first and second assessment ranged between 0.5 h and 15 months, but most studies had an interval of 1–2 weeks (n = 40, Table 3). The majority of the studies calculated the ICC to examine the test-retest reliability of SB, but some studies used correlation coefficients (N = 6), Bland-Altman plots with mean difference and limits of agreement (N = 2), and kappa values (N = 2). The ICC of the test-retest reliability of the subjective measures of SB ranged between 0.44 and 0.91 (Table 3, Fig. 2b). The ICC estimates were comparable between the logs and diaries, ≥10-items questionnaires, 2 to 9-item questionnaires, and 1-item questionnaires.

Discussion

Time spent in SB has markedly increased over the last few decades and is expected to continue to increase even further [107]. Since SB is associated with many adverse health outcomes [4-6], exposure to excessive levels of SB represents an emerging health threat, particularly in the least physically active [108]. To improve quality and guide future studies in this rapidly expanding area of research, this systematic review assessed the validity and reliability of subjective measures of SB, taking the methodological quality into account. We present the following observations. First, despite the presence of several measures to assess SB, significant variability in measurement properties and quality of the studies is present. Second, criterion validity of the subjective measures ranged between poor to excellent (R range − 0.01 to 0.90), in which the quality of most studies (i.e. level of evidence) was poor. Third, the validity of the logs/diaries was more favourable compared to the validity of questionnaires, with little improvement in validity of questionnaires when including multiple questions. Fourth, a moderate-to-good reliability was found for questionnaires and logs/diaries, with the quality of these studies being largely fair-to-good. Taken together, logs and diaries are recommended to validly and reliably assess SB when only self-report measures are available. However, considering limitations pertaining to logs and diaries (e.g. time constraint, resources), one may prefer using questionnaires in larger scaled observations.

Validity of measures of SB

This meta-analysis showed that the overall validity for instruments to assess SB characteristics was moderate to low. These observations raise the question whether these results relate to the poor validity of methods to assess SB per se or the poor quality of the studies that were included. Excluding studies with lower quality from our meta-analyses reinforced the poor-to-moderate validity of the various methods, suggesting measures of SB possess poor validity. It is important to indicate that questionnaires examining physical activity show similarly poor level of validity [8]. This highlights the difficulty of examining subjective physical (in) activity behaviours with questionnaires, a finding that seems present across the whole physical activity spectrum: from SB to exercise. Due to the low validity and the large variation in quality, the results of different studies are difficult to compare or harmonise. More importantly, the large variety in validity and questionnaire characteristics (i.e. type and context of SBs) prevents the identification of one (or few) questionnaire(s) that can be recommended for all type of future research that aim to examine SB. Factors explaining the poorer variation in validity of the questionnaires versus diaries/logs may relate to differences in qualitative attributes (e.g. recall period and questions/formats). For example, diaries/logs typically adopt a short recall period (e.g. every 15–30 min), whilst questionnaires are often filled in covering a longer recall period (i.e. day, week, and/or month). Consequently, diaries and logs are less reliant on long-term recall and can more accurately capture sporadic and intermittent behaviours. This fits with the higher validity of diaries/logs versus questionnaires. Unfortunately, this approach of using diaries/logs comes with the cost of high participant burden (in time), which subsequently may limit the response and compliance rate and introduce reporting bias. Another potential limitation of logs/diaries is that repeatedly filling in SBs may influence participants’ behaviour and cause (unwanted) adjustment of SB. These factors should be considered when deciding on the preferred way to assess SB in a future study. Previous work-related poor validity of questionnaires to systematic and random error, specifically reporting and recall bias which may lead to a low agreement with over- and underestimation (Table 2). For example, a potential underestimation of SB in single-item questionnaires was suggested [15, 104], whereas wider limits of agreement in questionnaires are present with multiple items [104]. Another factor contributing to validity of questionnaires may relate to the number of questions, and therefore detail of information, with more questions on SB potentially improving the criterion validity of the measurement tool. In contrast to this hypothesis, our analysis revealed no substantial differences between the criterion validity of the 1-item, 2-to-9-item and ≥ 10-item questionnaires. One possible explanation is that participants find it difficult to recall SB, with multiple-item questionnaires making it even more complicated to replicate detailed and domain-specific patterns of SB [31]. Furthermore, some behaviours are easier to remember because these are more habitual and restricted to certain periods during the day, e.g. TV viewing, computer use or sitting at work [15, 31, 86]. Finally, multiple-item questionnaires may over-report SB because subjects may report sedentary activities twice when using sub-scales (e.g. driving while listing to music). Although more questions may cover multiple domains and provide more detailed information, the complexity of these questionnaires may contribute to the negligible improvement in criterion validity of multiple-item questionnaires for total sedentary time. Nonetheless, exploring multiple domains of sitting may still seem relevant. For example, some domains are more strongly associated with poor health outcomes [12-14], whilst detailed information about domains may provide insight for intervention development.

Reliability of subjective measures of SB

Despite the significant heterogeneity in validity of the various measures to assess SB, the reliability of the questionnaires and diaries or logs were moderate-to-good. Importantly, these conclusions are based on studies with a fair-to-good quality. A central question pertaining to the reliability of questionnaires is whether differences are present in reliability for weekdays versus weekend days or for workdays versus non-workdays, especially given the marked differences in (sedentary) behaviour that exist between these days [104]. Indeed, our study found that approximately 50% of included studies reported a ≥ 10% better reliability to assess SB during weekdays versus weekend days or during workdays versus non-workdays (Table 3). These observations support a previous review, which reported higher reliability for weekdays compared to weekend days [104]. Moreover, we found that reliability was better for specific behaviours, such as TV viewing, compared to a more general categories, such as ‘other leisure time activities’. An explanation for this finding is that more specific and regularly performed behaviours have a higher reliability [15].

Choosing an appropriate measurement tool

Logs and diaries have a higher validity compared to the questionnaires, are less reliant on long-term recall and can more accurately capture sporadic and intermittent behaviours. Therefore, we recommend logs and dairies as self-reported measurement tools. However, important limitations such as time constrains, lack of resources and the potential to influence participants’ behaviour, make them less useful for large-scale observational studies and/or intervention studies. Within the spectrum of questionnaires, there is no obvious preference for a single questionnaire. In fact, the most appropriate tool seems to depend on the nature of the study, especially since this review showed large variety in both validity and questionnaire characteristics (i.e. type and context of SBs). Therefore, some studies will benefit from questionnaires focusing on specific domains of SB, whilst others will benefit from a reliable estimate of total sedentary time or distribution of SB. Furthermore, when performing an intervention study, measures will benefit from the ability to measure changes across time. Since this ability was not examined within this review, we cannot make specific recommendations related to this type of studies. Nonetheless, these characteristics should be taken into account when planning such studies. Ultimately, and when feasible, a combination of objective and subjective assessments is preferred to provide valid and reliable insight into SB.

Conclusions

This review identified the widespread (and rapidly growing) use of a large range of self-reported measures of SB, which significantly differ in type, extensiveness, complexity and duration. Our results indicated that the criterion validity of subjective measures ranged between poor and excellent, whereas the quality of most studies was poor. The validity of the logs/diaries was significantly higher compared to the questionnaires, with little improvement in criterion validity of questionnaires when increasing items to assess SB. Therefore, when only self-report measures are feasible, logs and diaries are recommended to validly and reliably assess SB, but due to time constraints and resources related to logs and diaries, 1-item questionnaires may be preferred in large-scale studies when showing similar validity and reliability compared to longer questionnaires. Whenever feasible, the combination of objective and subjective assessments will provide the most valid and reliable method to assess SB. Additional file :1 Table S1. Search strategy. Table S2. Assessing the quality of studies examining the criterion validity. Table S3. Assessing the quality of studies examining the reliability.
  101 in total

1.  Evaluation of a questionnaire to assess sedentary and active behaviors in the Southern Community Cohort Study.

Authors:  Maciej S Buchowski; Charles E Matthews; Sarah S Cohen; Lisa B Signorello; Jay H Fowke; Margaret K Hargreaves; David G Schlundt; William J Blot
Journal:  J Phys Act Health       Date:  2011-08-02

2.  Reliability and validity of CHAMPS self-reported sedentary-to-vigorous intensity physical activity in older adults.

Authors:  Eric B Hekler; Matthew P Buman; William L Haskell; Terry L Conway; Kelli L Cain; James F Sallis; Brian E Saelens; Lawrence D Frank; Jacqueline Kerr; Abby C King
Journal:  J Phys Act Health       Date:  2012-02

3.  The Sedentary Time and Activity Reporting Questionnaire (STAR-Q): reliability and validity against doubly labeled water and 7-day activity diaries.

Authors:  Ilona Csizmadi; Heather K Neilson; Karen A Kopciuk; Farah Khandwala; Andrew Liu; Christine M Friedenreich; Yutaka Yasui; Rémi Rabasa-Lhoret; Heather E Bryant; David C W Lau; Paula J Robson
Journal:  Am J Epidemiol       Date:  2014-07-19       Impact factor: 4.897

4.  Validity of self-report methods for measuring sedentary behaviour in older adults.

Authors:  Nicolás Aguilar-Farías; Wendy J Brown; Timothy S Olds; G M E E Geeske Peeters
Journal:  J Sci Med Sport       Date:  2014-08-15       Impact factor: 4.319

5.  Demographic-specific Validity of the Cancer Prevention Study-3 Sedentary Time Survey.

Authors:  Erika Rees-Punia; Charles E Matthews; Ellen M Evans; Sarah K Keadle; Rebecca L Anderson; Jennifer L Gay; Michael D Schmidt; Susan M Gapstur; Alpa V Patel
Journal:  Med Sci Sports Exerc       Date:  2019-01       Impact factor: 5.411

6.  Reliability and validity of the occupational physical activity questionnaire.

Authors:  Jared P Reis; Katrina D Dubose; Barbara E Ainsworth; Caroline A Macera; Michelle M Yore
Journal:  Med Sci Sports Exerc       Date:  2005-12       Impact factor: 5.411

Review 7.  Time use and physical activity: a shift away from movement across the globe.

Authors:  S W Ng; B M Popkin
Journal:  Obes Rev       Date:  2012-06-14       Impact factor: 9.213

8.  Assessment of physical activity and inactivity in multiple domains of daily life: a comparison between a computerized questionnaire and the SenseWear Armband complemented with an electronic diary.

Authors:  Tineke Scheers; Renaat Philippaerts; Johan Lefevre
Journal:  Int J Behav Nutr Phys Act       Date:  2012-06-12       Impact factor: 6.457

9.  Reliability and validity of the international physical activity questionnaire compared to calibrated accelerometer cut-off points in the quantification of sedentary behaviour and physical activity in older adults.

Authors:  Declan J Ryan; Jorgen A Wullems; Georgina K Stebbings; Christopher I Morse; Claire E Stewart; Gladys L Onambele-Pearson
Journal:  PLoS One       Date:  2018-04-19       Impact factor: 3.240

10.  Validity and responsiveness of four measures of occupational sitting and standing.

Authors:  Femke van Nassau; Josephine Y Chau; Jeroen Lakerveld; Adrian E Bauman; Hidde P van der Ploeg
Journal:  Int J Behav Nutr Phys Act       Date:  2015-11-25       Impact factor: 6.457

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  15 in total

1.  An Arabic Sedentary Behaviors Questionnaire (ASBQ): Development, Content Validation, and Pre-Testing Findings.

Authors:  Hazzaa M Al-Hazzaa; Shaima A Alothman; Nada M Albawardi; Abdullah F Alghannam; Alaa A Almasud
Journal:  Behav Sci (Basel)       Date:  2022-06-08

2.  Design and Validation of a Questionnaire to Assess the Leisure Time Physical Activity of Adult Women in Gipuzkoa.

Authors:  Olaia Eizagirre-Sagastibeltza; Uxue Fernandez-Lasa; Javier Yanci; Estibaliz Romaratezabala; Ruth Cayero; Iñaki Iturrioz; Oidui Usabiaga
Journal:  Int J Environ Res Public Health       Date:  2022-05-08       Impact factor: 4.614

3.  Prediction framework for upper body sedentary working behaviour by using deep learning and machine learning techniques.

Authors:  Rama Krishna Reddy Guduru; Aurelijus Domeika; Milda Dubosiene; Kristina Kazlauskiene
Journal:  Soft comput       Date:  2021-08-25       Impact factor: 3.732

4.  Changes in Physical Activity and Sedentary Behaviour in Cardiovascular Disease Patients during the COVID-19 Lockdown.

Authors:  Bram M A van Bakel; Esmée A Bakker; Femke de Vries; Dick H J Thijssen; Thijs M H Eijsvogels
Journal:  Int J Environ Res Public Health       Date:  2021-11-13       Impact factor: 4.614

5.  Alternatives for Measuring Sitting Accumulation in Workplace Surveys.

Authors:  Bronwyn K Clark; Samantha K Stephens; Ana D Goode; Genevieve N Healy; Elisabeth A H Winkler
Journal:  J Occup Environ Med       Date:  2021-12-01       Impact factor: 2.162

6.  Validity of Domain-Specific Sedentary Time Using Accelerometer and Questionnaire with activPAL Criterion.

Authors:  Rina So; Tomoaki Matsuo
Journal:  Int J Environ Res Public Health       Date:  2021-12-03       Impact factor: 3.390

7.  Increased Gaming During COVID-19 Predicts Physical Inactivity Among Youth in Norway-A Two-Wave Longitudinal Cohort Study.

Authors:  Ellen Haug; Silje Mæland; Stine Lehmann; Ragnhild Bjørknes; Lars Thore Fadnes; Gro Mjeldheim Sandal; Jens Christoffer Skogen
Journal:  Front Public Health       Date:  2022-02-14

8.  Objective and subjective measurement of sedentary behavior in human adults: A toolkit.

Authors:  Justin Aunger; Janelle Wagnild
Journal:  Am J Hum Biol       Date:  2020-12-05       Impact factor: 2.947

9.  Validity and Reliability of International Physical Activity Questionnaires for Adults across EU Countries: Systematic Review and Meta Analysis.

Authors:  Vedrana Sember; Kaja Meh; Maroje Sorić; Gregor Starc; Paulo Rocha; Gregor Jurak
Journal:  Int J Environ Res Public Health       Date:  2020-09-30       Impact factor: 3.390

10.  Questionnaires measuring movement behaviours in adults and older adults: Content description and measurement properties. A systematic review.

Authors:  Bruno Rodrigues; Jorge Encantado; Eliana Carraça; Eduarda Sousa-Sá; Luís Lopes; Dylan Cliff; Romeu Mendes; Marlene Nunes Silva; Cristina Godinho; Rute Santos
Journal:  PLoS One       Date:  2022-03-11       Impact factor: 3.240

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