Literature DB >> 27124611

Remote Physical Activity Monitoring in Neurological Disease: A Systematic Review.

Valerie A J Block1, Erica Pitsch2, Peggy Tahir3, Bruce A C Cree4, Diane D Allen1, Jeffrey M Gelfand4.   

Abstract

OBJECTIVE: To perform a systematic review of studies using remote physical activity monitoring in neurological diseases, highlighting advances and determining gaps.
METHODS: Studies were systematically identified in PubMed/MEDLINE, CINAHL and SCOPUS from January 2004 to December 2014 that monitored physical activity for ≥24 hours in adults with neurological diseases. Studies that measured only involuntary motor activity (tremor, seizures), energy expenditure or sleep were excluded. Feasibility, findings, and protocols were examined.
RESULTS: 137 studies met inclusion criteria in multiple sclerosis (MS) (61 studies); stroke (41); Parkinson's Disease (PD) (20); dementia (11); traumatic brain injury (2) and ataxia (1). Physical activity levels measured by remote monitoring are consistently low in people with MS, stroke and dementia, and patterns of physical activity are altered in PD. In MS, decreased ambulatory activity assessed via remote monitoring is associated with greater disability and lower quality of life. In stroke, remote measures of upper limb function and ambulation are associated with functional recovery following rehabilitation and goal-directed interventions. In PD, remote monitoring may help to predict falls. In dementia, remote physical activity measures correlate with disease severity and can detect wandering.
CONCLUSIONS: These studies show that remote physical activity monitoring is feasible in neurological diseases, including in people with moderate to severe neurological disability. Remote monitoring can be a psychometrically sound and responsive way to assess physical activity in neurological disease. Further research is needed to ensure these tools provide meaningful information in the context of specific neurological disorders and patterns of neurological disability.

Entities:  

Mesh:

Year:  2016        PMID: 27124611      PMCID: PMC4849800          DOI: 10.1371/journal.pone.0154335

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

Research over the last decade has examined accelerometer-based remote monitoring of physical activity in health and disease.[1-6] Wearable physical activity monitors have also become increasingly commonplace as consumer products, primarily marketed for fitness. When considering whether remote physical activity monitoring can inform decision-making for use in clinical populations, questions about validity, reliability, feasibility and responsiveness arise.[7-10] Physical activity is typically defined as voluntary bodily movement using skeletal muscle that requires energy beyond resting levels.[11] Measurement of physical activity is important because of established links between physical inactivity and various morbidities.[5, 12, 13] Neurological disease can also increase the risk of physical inactivity secondary to associated disability.[14-17] Physical activity monitoring using accelerometers, pedometers, and gyroscopes has gained traction in healthcare, wellness and medical research.[5, 18–20] Monitoring can focus on gait, upper or lower limb function or other patterns of body movement or behavior. Potential variables that can be used to measure physical activity include step count, activity count, activity bouts, active minutes and energy expenditure. Remote physical activity monitoring provides a convenient way of assessing movement outside of the clinic setting and may correlate with disease-specific predictors, outcomes, or interventions. However, remote measurement of physical activity in people with neurological disease has the potential to be complicated by neurological impairments such as gait abnormalities, weakness, spasticity or tremor that could confound remote measurement in these populations. While disease-specific examination and validation of remote physical activity is needed, systematically reviewing the literature across neurological disorders may reveal lessons about feasibility, implementation and interpretation that apply across neurological indications. This systematic review summarizes research on remote physical activity monitoring in neurological diseases, including multiple sclerosis (MS), stroke, Parkinson’s disease (PD), dementia, traumatic brain injury (TBI), ataxia, epilepsy and migraine. To focus primarily on physical activity outside of the immediate clinical setting, studies were included that monitored physical activity for at least 24 hours.

Methods

Data Sources

Original research studies were identified from the PubMed/MEDLINE, CINAHL and SCOPUS databases. Once relevant articles were identified, they were located individually in the Web of Science database and in Google Scholar to examine citing and cited-by articles. The search strategy used a combination of MeSH (Medical Subject Headings) terms and keywords. The search terms used alone and in combination were categorized according to PICO: Population: “multiple sclerosis,” “parkinson*,” “stroke,” “cerebrovascular accident,” “brain injury,” “ataxia,” “headache,” “migraine,” and “epilepsy”. Intervention/ indicator: “acceleromet*,” “activity monitor*,” “free living physical activity,” “pedometer,” “wearable sensor*”. Comparator/ Control: Not using the device. Inclusion criteria did not require studies to be intervention trials. Outcome: physical activity (measured heterogeneously e.g. step or activity count, movement count, bouts of activity) We also examined articles that reported physical activity monitoring in samples with “heart disease” or “diabetes” to identify if sub-populations of neurological conditions were evaluated. A medical librarian (P.T.) advised on search strategy, search terms, and methodology.

Study Selection

Studies were included if they 1) recorded human physical activity, defined as voluntary (skeletal) muscle movement during daily functioning requiring energy expenditure [3]; 2) monitored subjects for ≥24 hours; 3) used remote monitoring via devices that employ accelerometers, gyroscopes and/or pedometers to measure physical activity and capture data remotely for subsequent analysis; 4) enrolled adults 18 years of age or older with a diagnosis of MS, stroke, PD, dementia, TBI, epilepsy, migraine, headache or ataxia; 5) and were published between January 2004 and December 2014. Studies were excluded that recorded involuntary motor activity such as seizures or tremor; focused on movement during sleep or examined sleep as the primary outcome; extrapolated measures for average step counts from shorter monitoring periods; measured total daily energy expenditure (such as daily calorie consumption or diet interventions) without physical activity monitoring; or measured global positioning satellite (GPS) data exclusively rather than more direct measurement or corroboration of physical activity. We also excluded case reports and case studies. Two authors (V.B., E.P.) searched independently. Titles and abstracts were screened for relevance and supplementary review. One author (V.B.) manually searched the reference sections of complete manuscripts for additional articles. Consensus for meeting the eligibility criteria was achieved by comparing search results (V.B., E.P.).

Data extraction and Analysis

Data were extracted (V.B.) and checked (E.P., D.D.A., J.M.G), with final adjudication by consensus from two senior authors (D.D.A., J.M.G.). Variables included population studied; disease-specific severity levels; device name, placement and intent (i.e. patient behavior change or healthcare monitoring); intervention (if any); setting; demographic data; and study details, including design, funding sources and motivational factors (i.e. subject imbursement, visual display of data). Studies were graded for risk of bias based on methodology proposed by the Cochrane Collaborations [21] (see S1a and S1e Table). Conclusions and lessons learned across studies were summarized.

Results

The systematic review identified 745 studies through the databases and an additional 25 articles through recursive and manual reference searches. Once eligibility criteria were applied, 137 studies remained (Fig 1 and S1 Fig) [22]. Individual studies are summarized in Tables 1–5. Table 6 (sections a-e) documents the sample characteristics. The risk of bias with level of evidence for interventional studies is reported in S1 Table. A description of the most common devices used in the included studies appears in S2 Table.
Fig 1

PRISMA Flow Diagram.

Notes: * 1 Article includes multiple groups of neurological diagnosis—MS, Parkinson’s and neuromuscular disease—(Busse et al, 2004) α 1 Article includes TBI and Stroke (Fulk et al, 2014)

Table 1

Characteristics of Published Studies Recording Physical Activity via Remote Monitoring for >34 hours in People with Multiple Sclerosis.

Author / YearMS phenotypeNumber of people with RRMSEDSS score or equivalent PDDSDevice name (Manufacturer)Modality of the deviceStudy DesignMean AgeExperimental Group NControl Group NMonitoring LengthFunding source
Balantrapu et al, 2014 [23]Mix of RRMS and SP/PPMS69 of entire sample0–5.5ActiGraph GT3X (b*)Walking /gait/ LE physical activityCross-Sectional>5044407 daysNot stated/ unfunded
Cavanaugh et al, 2011 [24]Undefined/ Diagnosis of MSN/A< = 4.5 or >4.5SAM (b*)Walking /gait/ LE physical activityCross-Sectional>5021N/A7 daysPrivate Foundation
Dlugonski et al, 2011 [25]RRMS210–5.5ActiGraph 7164, OMRON pocket pedometer (b*)Walking /gait/ LE physical activityIntervention18–5021N/A7 daysNot stated/ unfunded
Dlugonski & Motl, 2012 [26]RRMS460–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional18–5046N/A7 daysNot stated/ unfunded
Dlugonski et al, 2013 [27]Mix of RRMS and SP/PPMS575 (89.2%)0–5.5ActiGraph 7164, ActiGraph GT3X / Yamax SW-200 (b*)Walking /gait/ LE physical activityCross-Sectional18–50645N/A7 daysPrivate Foundation
Doerksen et al, 2007 [28]Mix of RRMS and SP/PPMS174Not statedYamax SW-200 (b*)Walking /gait/ LE physical activityCross-Sectional18–50196N/A7 daysNot stated/ unfunded
Filipovic Grcic et al, 2013 [29]RRMS820–5.5SAM (b*)Walking /gait/ LE physical activityCross-Sectional18–5082N/A7 daysPrivate Foundation
Filipovic Grcic et al, 2011 [30]RRMS490–5.5SAM (b*)Walking /gait/ LE physical activityInterventional18–5049N/A7 daysNot stated/ unfunded
Gijbels et al, 2010 [31]Mix of RRMS and SP/PPMS230–5.5SAM (b*)Walking /gait/ LE physical activityCross-Sectional18–5050N/A7 daysPrivate Foundation
Gosney et al, 2007 [32]Mix of RRMS and SP/PPMS174Not statedActiGraph 7164, Yamax SW-200 (b*)Walking /gait/ LE physical activityCross-Sectional18–50196N/A7 daysPrivate Foundation
Hale et al, 2008 (c*)[33]UndefinedN/ANot statedThe TriTrac RT3 (Stayhealthy Inc.)Walking /gait/ LE physical activityLongitudinal>501197 days—repeated oncePrivate Foundation
Klaren et al, 2013 [34]Mix of RRMS and SP/PPMS7110–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-sectional and longitudinal18–508001377 daysPrivate Foundation
Klassen et al, 2008 [35]Undefined/ Diagnosis of MSN/A0–5.5The TriTrac RT3 (Stayhealthy Inc.)Walking /gait/ LE physical activityCross-Sectional18–503092–6 daysPrivate Foundation
Kos et al, 2007 [36]Undefined/ Diagnosis of MSN/A0–5.5ActiGraph 7164, ActiGraph GT3X (b*)Walking /gait/ LE physical activityCross-Sectional18–5019102–6 daysPrivate Foundation
Lamers et al, 2013 [37]SPMSN/A> or = 7Motionlogger® Basic, AccelerometersUpper extremity/ arm movementCross-Sectional>5030307 daysPrivate Foundation
Learmonth et al, 2013 [38]Mix of RRMS and SP/PPMS650–5.5ActiGraph GT3X (b*)Walking /gait/ LE physical activityCross-Sectional18–5082N/A7 daysPrivate Foundation
Learmonth et al, 2013 [39]Mix of RRMS and SP/PPMS790–5.5ActiGraph GT3X (b*)Walking /gait/ LE physical activityCross-Sectional>5096N/A7 daysPrivate Foundation
Morris et al, 2008 [40]Mix of RRMS and SP/PPMS151 (SR)Not statedActiGraph accelerometer (b*)Walking /gait/ LE physical activityCross-Sectional>501731367 daysGovernment
Motl et al, 2013a [41]RRMS2690–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityLongitudinal18–50269N/A7 days—x 6 separated by 6 monthsPrivate Foundation
Motl et al, 2007b [42]Mix of RRMS and SP/PPMS86(a*)Not statedActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional>50133N/A7 daysNot stated/ unfunded
Motl et al, 2010a [43]RRMS260–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional18–5026N/A7 daysNot stated/ unfunded
Motl & Dlugonski, 2011 [44]RRMS180–5.5ActiGraph 7164, Digi-Walker SW-201 (b*)Walking /gait/ LE physical activityInterventional18–5018N/A7 days—repeated onceNot stated/ unfunded
Motl et al, 2011a [45]Mix of RRMS and SP/PPMS5020–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional18–50561N/A7 daysPrivate Foundation / Government
Motl et al, 2011b [46]Undefined/ Diagnosis of MSN/A6SAMWalking /gait/ LE physical activityCross-Sectional>5033N/A7 daysPrivate Foundation
Motl et al, 2014a [47]Mix of RRMS and SP/PPMS5190–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityLongitudinal18–50536N/A7 days—repeated oncePrivate Foundation / Government
Motl et al, 2014b [48]Mix of RRMS and SP/PPMS67Not statedActiGraph GT3X (b*)Walking /gait/ LE physical activityLongitudinal18–5082N/A7 days—repeated oncePrivate Foundation
Motl et al, 2012a [49]Mix of RRMS and SP/PPMS36Not statedActiGraph 7164, Yamax SW-200 (b*)Walking /gait/ LE physical activityCross-sectional18–5018207 days—repeated onceNot stated/ unfunded
Motl et al, 2009a [50]Mix of RRMS and SP/PPMS2460–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional18–50292N/A7 daysGovernment
Motl et al, 2006a [51]Mix of RRMS and SP/PPMS260–5.5ActiGraph 7164, Yamax SW-200 (b*)Walking /gait/ LE physical activityCross-Sectional18–5030N/A7 days—repeated oncePrivate Foundation
Motl et al, 2007c [52]Mix of RRMS and SP/PPMS174Not statedActiGraph 7164, Yamax SW-200 (b*)Walking /gait/ LE physical activityCross-Sectional18–50196N/A7 daysNot stated/ unfunded
Motl et al, 2008a [53]Mix of RRMS and SP/PPMS246Not statedActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional18–50292N/A7 daysGovernment
Motl et al, 2010b [54]RRMS2690–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional18–50269N/A7 days—repeated onceGovernment
Motl & McAuley, 2009a [55]Mix of RRMS and SP/PPMS2390–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityLongitudinal18–50292N/A7 days—repeated onceGovernment
Motl & McAuley, 2011 [56]Mix of RRMS and SP/PPMS2460–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityLongitudinal18–50276N/A7 days—repeated oncePrivate Foundation
Motl & McAuley, 2009b [57]Mix of RRMS and SP/PPMS2460–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityLongitudinal18–50276N/A7 days—repeated onceGovernment
Motl & McAuley, 2009c [58]Mix of RRMS and SP/PPMS2460–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityLongitudinal18–50276N/A7 days—repeated oncePrivate Foundation
Motl et al, 2013b [59]Mix of RRMS and SP/PPMS2150–5.5ActiGraph GT3X (b*) Measuring wheel / GAITRite (CIR Systems, Inc.)Walking /gait/ LE physical activityCross-Sectional18–50256N/A7 daysNot stated/ unfunded
Motl et al, 2013c [60]Mix of RRMS and SP/PPMS7100–5.5ActiGraph 7164, ActiGraph GT3X, Yamax SW-200 (b*)Walking /gait/ LE physical activityObservational18–507861577 daysPrivate Foundation
Motl et al, 2012b [61]Mix of RRMS and SP/PPMS400–5.5ActiGraph 7164 (b*), open-circuit spirometry system (TrueOne, Parvo Medics), GAITRite (CIR Systems, Inc.)Walking /gait/ LE physical activityCross-Sectional18–5044N/A7 daysPrivate Foundation
Motl et al, 2009b [62]Mix of RRMS and SP/PPMS820–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional>50133N/A7 daysNot stated/ unfunded
Motl et al, 2006c [63]Mix of RRMS and SP/PPMS174Not statedActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional18–50196N/A7 daysNot stated/ unfunded
Motl et al, 2006b [64]Mix of RRMS and SP/PPMS174Not statedActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional18–50196N/A7 daysNot stated/ unfunded
Motl et al, 2007d [65]Mix of RRMS and SP/PPMS1740–5.5Yamax SW-200 (b*)Walking /gait/ LE physical activityCross-Sectional18–50196N/A7 daysNot stated/ unfunded
Motl et al, 2008b [66]Mix of RRMS and SP/PPMS650–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional18–5080N/A7 daysNot stated/ unfunded
Motl et al, 2007a [67]Mix of RRMS and SP/PPMS171Not statedActiGraph 7164, Yamax SW-200 (b*)Walking /gait/ LE physical activityCross-Sectional18–50193N/A7 daysNot stated/ unfunded
Pilutti et al, 2012 [68]Mix of RRMS and SP/PPMS1340–5.5ActiGraph GT3X (b*)Walking /gait/ LE physical activityCross-Sectional>50168N/A7 daysPrivate Foundation
Pilutti et al, 2014 [69]Mix of RRMS and SP/PPMS620–5.5ActiGraph GT3X, Yamax SW-200 (b*)Walking /gait/ LE physical activityRCT18–5037397 days—repeated oncePrivate Foundation
Ranadive et al, 2012 [70]Mix of RRMS and SP/PPMS290–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional18–5033337 daysPrivate Foundation
Rietberg et al, 2014 [71]Mix of RRMS and SP/PPMS260–5.5Vitaport, portable activity monitor (TEMEC Instruments)Walking /gait/ LE physical activityCross-Sectional18–5043261 dayPrivate Foundation
Rietberg et al, 2010 [72]Mix of RRMS and SP/PPMS260–5.5Vitaport, portable activity monitor (TEMEC Instruments)Walking /gait/ LE physical activityCross-Sectional18–5043N/A2 days—x2 separated by 24hrsNot stated/ unfunded
Sandroff et al, 2013 [73]Mix of RRMS and SP/PPMS650–5.5ActiGraph GT3X (b*)Walking /gait/ LE physical activityLongitudinal18–5082N/A7 days—repeated oncePrivate Foundation
Sandroff et al, 2012 [74]Mix of RRMS and SP/PPMS660–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional18–5077777 daysPrivate Foundation
Sandroff & Motl, 2013 [75]Mix of RRMS and SP/PPMS370–5.5ActiGraph 7164, ActiGraph GT3X (b*)Walking /gait/ LE physical activityCross-Sectional18–5041412–6 daysPrivate Foundation
Scott et al, 2011 [76]“Primary & Progressive MS”N/ANot statedActiGraph GT1M (b*)Walking /gait/ LE physical activityCross-Sectional>5015147 daysPrivate Foundation
Shammas et al, 2014 [77]Mix of RRMS and SP/PPMS80–5.5Move II activity sensor (movisens GmbH)Walking /gait/ LE physical activityLongitudinal18–5011N/A10 days every 3 months for a yearNot stated/ unfunded
Snook et al, 2009 [78]Mix of RRMS and SP/PPMS580–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional18–5074N/A7 daysNot stated/ unfunded
Snook & Motl, 2008 [79]Mix of RRMS and SP/PPMS620–5.5ActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional18–5080N/A7 daysNot stated/ unfunded
Sosnoff et al, 2010 [80]Mix of RRMS and SP/PPMS566ActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional>5070N/A7 daysNot stated/ unfunded
Ward et al, 2013 [81]RRMS25Not statedActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional18–5025267 daysPrivate Foundation
Weikert et al, 2010 [82]RRMS269Not statedActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional18–50269N/A7 daysPrivate Foundation
Weikert et al, 2012 [83]Mix of RRMS and SP/PPMS56Not statedActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-Sectional18–5033337 daysPrivate Foundation

Abbreviations: EDSS = Kurtzke expanded disability scale; PDDS = Patient determined disease steps (correlated to EDSS): PDDS 1 = mild MS disability, PDDS mean 2 or 3 = moderate disability; RRMS = relapsing remitting multiple sclerosis; SP = Secondary progressive; PPMS = Primary progressive multiple sclerosis; SR = self reported, LE = lower extremity; N/A = not applicable; SAM = StepWatch Activity Monitor

(a*) = 29/86 participants (34%) used an assistive device during the ambulatory tests.

(b*) = Yamax SW-200 is a pedometer. Manufacturer: Yamax-Digiwalker, HRM USA INC, ActiGraph 7164 and GT3X use accelerometers. Manufacturer: Manufacturing Technology Inc /Health One Technology, SAM uses an accelerometer and microprocessor. Manufacturers: Orthocare Innovations/ or Manufacturer: Modus health llc, OMRON pocket pedometer. Manufacturer: HJ-720ITC, OMRON Corporation

(c*) = Study included multiple cohorts with different neurological diagnoses.

Table 5

Characteristics of Published Studies Recording Physical Activity via Remote Monitoring for ≥24 hours in People with Traumatic Brain Injury, Ataxia and Studies with Multiple Conditions.

Author / YearPathology/ DiagnosisTime Since Diagnosis/InjuryDevice name (Manufacturer)Modality of the deviceStudy DesignMean AgeExperimental group NControl group NMonitoring LengthFunding source
Fulk et al, 2014**[96]TBI / Stroke> 3 monthsStepWatch Activity Monitor/ Fitbit Ultra/ Nike Fuelband/ Yamax DigiWalker SW-701 (a*)Walking /gait/ LE physical activityCross-sectional> 5050N/A1 dayNot stated
Hassett et al, 2014 [157]TBI> 3 monthsActiGraph GT3X (a*)Walking /gait/ LE physical activityCross-sectional18–5030N/A7 daysPrivate foundation
Subramony et al, 2012 [158]Spino-cerebellar Ataxia>5–10 yearsStepWatch Activity Monitor (a*)Walking /gait/ LE physical activityCross-sectional> 5019N/A7daysNot stated
Hale et al, 2008 (b*)[33]Stroke/PD/ MS> 6 months stroke (N/A others diagnosis)The TriTrac RT3 (Stayhealthy Inc.)Walking /gait/ LE physical activityCross-sectional> 50389Av. of 3 days and 7 days, repeated oncePrivate Foundation
Busse et al, 2004 (b*)[145]PD, MS, NeuromuscularN/AStepWatch activity monitor (a*)Walking /gait/ LE physical activityCross-sectional> 5010107 days repeated onceGovernment

Abbreviations: TBI = Traumatic brain injury, PD = Parkinson’s disease, MS = Multiple sclerosis, N/A = not applicable, LE = lower extremity, Av. average

(a*) = Yamax DigiWalker SW-701 is a pedometer. Manufacturer: YAMAX Health & Sports Inc, ActiGraph GT3X use accelerometers. Manufacturer: Manufacturing Technology Inc /Health One Technology, StepWatch activity monitor uses an accelerometer and microprocessor. Manufacturers: Orthocare Innovations/ or Manufacturer: Modus health llc, Fitbit uses an accelerometer. Manufacturer: Fitbit Inc., Nike Fuelband uses accelerometers. Manufacturer: Nike Inc.

(b*) = Study included multiple cohorts with different neurological diagnoses

** This study is included in Table 1b—Stroke.

Table 6

Summary Characteristics of Studies by Neurological Diagnosis.

Section a:MULTIPLE SCLEROSIS
Number of studiesPercent (%)Notes
Number of Articles Identified61Median year published: 2011
Mean Age of Participants / Years
(18–50)4980.3
(>50)1219.7
SexGreater % of females
Both5996.7
Female only23.3
MS Phenotype- 79% of participants in all included MS studies had RRMS
(RRMS)1016.4
(SPMS)11.6
(Relapsing and Progressive)4472.2
(“Diagnosed with MS” / Undefined)69.8
Disability Level (EDSS and PDDS equivalent)EDSS/PDDS: 6 (2, 3.3%), ≥7 (2, 3.3%)
(0–5.5)4065.6
(>5.5)46.7
(Not stated)1727.9
Mean Disease Duration / Years0–1 year (0.0%), >1 year– 5 years (0.0%) when reported
(>5–10)2845.9
(>10–20)2947.5
(>20)11.6
(Not stated)34.9
Reporting of Paralysis/Paresis00.0
Reporting of Tremor11.6- As an exclusion criteria [36]
Monitoring Length
(1 day)11.6
(2–6 days)34.9
(7 days)4167.2
(7 days, repeated once)1321.3
(2 days, x2—separated by 24 hours)11.6
(7 days, every 6 months—for 2.5yrs)11.6
(10 days, every 3 months—for 1yr)11.6
Device Used in Physical Activity Monitoring
*(ActiGraph 7164)3862.3
*(ActiGraph GT3X)1219.7
*(Yamax SW-200 pedometer)1016.4
(Other)1016.4
(StepWatch Activity Monitor)58.2
(RT3 accelerometer)11.6
Device Intent
(Healthcare monitoring)5386.9
(Patient behavior change)69.8
(Both)23.3
Device Placement
(Unaffected hip)4370.5
(Posterior waist)46.6
(Unaffected ankle)46.6
(Not stated)46.6
(Right hip)34.9
(Both wrists)23.3
(Right ankle)11.6
Device Modality- Both (0, 0.0%)
(Walking/ gait activity)60
(Upper extremity/arm activity)1
Defined Acceptable Full Days Monitoring
(Yes)4474.6- For yes (44): > 10 hours of data (30, 68.2%), < 60 minutes of zero scores (24, 54.5%), >3 days per week (7, 15.9%), >5 days per week (2, 4.5%), undefined (10, 22.7%)
(No)1525.4
Study SettingClinic (0, 0.0%)
(Home/ community)4878.7
(Both Clinic and Home)1321.3
Study Design
(Observational)5793.4
(Interventional)46.6
Total N range
[Control and neurological group]
(Lowest N)11-
(Greatest N)943-
Neurological groups N range
(Lowest N)11-
(Greatest N)800-
Study FundingDevice manufacturer (0, 0.0%)
(Private Foundation)3150.8
(Not stated/ unfunded at time of publication)2236.1
(Government)69.8
(Both)23.3
Section b:STROKE
Number of Articles Identified41Median year published: 2011
Mean Age of Participants>50100
SexBoth100
Type of Stroke
(Undefined)2356.1
(Both Ischemic and Hemorrhagic)1126.8Ischemic (Middle cerebral artery: 2, 14.3%, undefined: 13, 92.9%)
(Ischemic)37.3
(Hemorrhagic)24.9
(Transient Ischemic Attack)12.4
(other)12.4
Time Since Stroke
(≤7 days—acute)614.6
(8–14 days)37.3
(>14 days– 3 months)37.3
(>3 months)2868.3
(Undefined)12.4
Reporting of Paralysis/Paresis
(Yes)3892.7
(No)37.3
Reporting of Tremor
(Yes)12.4
(No)4097.6
Monitoring Length
(1 day)512.2
(2–6 days)2868.3
(5 days)12.4
(7 days)49.8
(24 hours at 4 time points over 6 months)12.4
(3 days at: baseline x2, post-Intervention and 3 month follow-up)12.4
(4 weeks: data from 5 days before and after intervention)12.4
Device Used in Physical Activity Monitoring
(Other)2561.0
(ActiGraph 7164)24.9
(StepWatch)1331.7
(Intelligent Device for Energy Expenditure and Physical Activity)37.3
(Yamax SW-200 pedometer)12.4
Device Intent
(Healthcare monitoring)3482.9
(Behavior change)37.3
(Both)49.8
Device Modality
(Walking/ gait activity)2458.5
(Upper extremity/arm activity)1434.1
(Both)37.3
Defined Acceptable Full Day
(Yes)2765.9
(No)1434.1
Study Setting
(Home)1843.9
(Home and Out patient)1024.4
(Home and Hospital—acute care)12.4
(Hospital—acute care)922.0
(Hospital—acute care and Out patient)12.4
(Out patient)24.9
Study Design
(Observational)3482.9
(Interventional)717.1
Blinding
(Yes)717.1-If Yes: clinician and analyst (3/5), participant (3/5), researcher and analyst (1/5)
(No)3482.9
Total N range-
(Lowest N)10
(Greatest N)786
Neurological groups N range-
(Lowest N)8
(Greatest N)408
Study Funding
(Government)1434.1
(Private Foundation)1229.3
(Not stated/unfunded at time of publication)1024.4
(Both)512.2
Section c:PARKINSON’S DISEASE
Number of Articles Identified20Median year published: 2012
Mean Age of Participants>50100
SexBoth100
Reporting of Paralysis/Paresis
(No)20100
Reporting of Tremor
(Yes)735.0
(No)1365.0
Monitoring Length
(1 day)420.0
(2–6 days)630.0
(7 days)840.0
(7 days—repeated once)15.0
24 hrs x2, 48 hrs once (each separated by 1 week)15.0
Device Used in Physical Activity Monitoring
(Other)1365.0
(StepWatch)315.0
(ActiGraph GT3X)210.0
(ActivPAL)210.0
Device Intent
(Healthcare monitoring)1995.0
(Behavior change)15.0
Device Placement
(Anterior waist)525.0
(Posterior waist)315.0
(Both ankles)315.0
(Both wrists)315.0
(Hip unaffected or non-dominant)15.0
(Multiple limbs)525.0
Device Modality
(Walking/ gait activity)1995.0
(Upper extremity/arm activity)00.0
(Both)15.0
Defined Acceptable Full Day
(Yes)1260.0- For Yes: greater than 10 hours minutes of zero scores (2), more than 3 days per week (3), undefined (5)
(No)840.0
Study Setting-
(Home)1365.0
(Home and Out patient)630.0
(Hospital—acute care)15.0
Study Design
(Observational)1995.0- Cross sectional (17), longitudinal (2)
(Interventional)15.0
Blinding
(No)1890.0
(Yes)210.0- If Yes, who was blinded: participants (1), analyst (1)
Total N range-
(Lowest N)4
(Greatest N)467
Neurological groups N range-
(Lowest N)4
(Greatest N)467
Study Funding
(Government)525.0
(Private Foundation)630.0
(Both)630.0
(Not stated/ unfunded at time of publication)315.0
(Device manufacturer)(0)0.0- 1 author: co-inventor of the device, not involved in data collection or analysis of results
Section: dDEMENTIA
Number of Articles Identified11Median year published: 2012
Mean Age of Participants>50100
Sex
(Both)11100
Cognitive Scoring
(Mild)327.3
(Moderate)327.3
(Mild—Moderate)327.3- MMSE cut off <24/30: Mild/ Moderate
(Moderate—Severe)218.2
Presumed Pathology
(Alzheimer’s)545.5
(Probable Alzheimer’s and other dementia)19.1
(Alzheimer’s / Lewy body/ Frontotemporal /other dementia)218.2
(Dementia diagnosis)218.2
(Frontotemporal / other dementia)19.1
Reporting of Paralysis/Paresis
(No)11100
Reporting of Tremor
(Yes)19.1
(No)1090.9
Monitoring Length
(2–6 days)654.5
(7 days)327.3
(7 days—repeated x4)19.1
(Median of 9 days)19.1
Device Used in Physical Activity Monitoring
(Other)11100
Device Intent
(Healthcare monitoring)11100
(Behavior change)00.0
Device Placement
(Left or non-dominant wrist)327.3
(Right or dominant wrist19.1
(Both wrists)19.1
(Left ankle)19.1
(Both ankles)19.1
(Right hip)19.1
(Other/ Multiple limbs)327.3
Device Modality
(Walking/ gait activity)981.8
(Upper extremity/arm activity)00.0
(Both)218.2
Defined Acceptable Full Day
(Yes)872.7-For Yes: greater than 10 hours of data (2), less than 60 minutes of zero scores (1), more than 3 days per week (1), undefined (4)
(No)327.3
Study Setting
(Home)872.7
(SNF)327.3
Study Design
(Observational)11100- Cross sectional (9), longitudinal (2)
Blinding1
(No)1100
Total N range
(Lowest N)12
(Greatest N)774-
Neurological groups N range-
(Lowest N)10
(Greatest N)774
Study Funding
(Private Foundation)654.5
(Both Government and Private)218.2
(Not stated/ unfunded at time of publication)327.3
Section e:TRAUMATIC BRAIN INJURY
Number of Articles Identified1
Mean Age of Participants
(18–50)1100
(>50)00.0
SexBoth100
Time Since Diagnosis
(> 3 months)1100
Device Used in Physical Activity Monitoring
(ActiGraph GT3X)1100
Device Modality
(Walking/ gait activity)1100
Monitoring Length
(7 days)120.0
Neurological groups N30-
Funding
(Private Foundation)1100
ATAXIA
Number of Articles Identified1
Mean Age of Participants0
(18–50)1
(>50)
SexBoth100
Device Modality
(Walking/ gait activity)1100
Monitoring Length
(7 days)1100
Neurological groups N19-
Funding
(Not stated /unfunded at time of publication)1100
ACROSS MULTIPLE NEUROLOGICAL DIAGNOSES
Number of Articles Identified3
Diagnosis133.3
(TBI/ Stroke)
(Stroke/PD/MS)133.3
(PD/AD/Neuromuscular disorder)133.3
Mean Age of Participants
(18–50)00.0
(>50)3100
SexBoth100
Device Modality
(Walking/ gait activity)3100
Monitoring Length
(1 day)133.3
(7 days)133.3
(Average of 3 days and 7 days, repeated once)133.3
Neurological groups N range
(Lowest N)10-
(Greatest N)50-
Funding
(Government)133.3
(Private Foundation)133.3
(Not stated /unfunded at time of publication)133.3

Abbreviations: yrs: years, hrs: hours, MMSE: Mini-Mental Status Examination, SNF: Skilled Nursing Facility, N: number,

*: Used in conjunction with another activity monitor TBI: Traumatic Brain Injury, MS: Multiple Sclerosis, PD: Parkinson’s disease, AD: Alzheimer’s disease.

PRISMA Flow Diagram.

Notes: * 1 Article includes multiple groups of neurological diagnosis—MS, Parkinson’s and neuromuscular disease—(Busse et al, 2004) α 1 Article includes TBI and Stroke (Fulk et al, 2014) Abbreviations: EDSS = Kurtzke expanded disability scale; PDDS = Patient determined disease steps (correlated to EDSS): PDDS 1 = mild MS disability, PDDS mean 2 or 3 = moderate disability; RRMS = relapsing remitting multiple sclerosis; SP = Secondary progressive; PPMS = Primary progressive multiple sclerosis; SR = self reported, LE = lower extremity; N/A = not applicable; SAM = StepWatch Activity Monitor (a*) = 29/86 participants (34%) used an assistive device during the ambulatory tests. (b*) = Yamax SW-200 is a pedometer. Manufacturer: Yamax-Digiwalker, HRM USA INC, ActiGraph 7164 and GT3X use accelerometers. Manufacturer: Manufacturing Technology Inc /Health One Technology, SAM uses an accelerometer and microprocessor. Manufacturers: Orthocare Innovations/ or Manufacturer: Modus health llc, OMRON pocket pedometer. Manufacturer: HJ-720ITC, OMRON Corporation (c*) = Study included multiple cohorts with different neurological diagnoses. Abbreviations: N/A = not applicable, U/D = undefined, non-commercial, HR = heart rate, m = months (a*) = Study included multiple cohorts with different neurological diagnoses. (b*) = Intelligent Device for Energy Expenditure and Physical Activity. Manufacturers: MiniSun Company, Octagonal basic motion loggers. Manufacturers: Amubulatory Monitoring Inc., Yamax SW-200 is a pedometer. Manufacturer: Yamax-Digiwalker, HRM USA INC, ActiGraph 7164 and GT3X use accelerometers. Manufacturer: Manufacturing Technology Inc./ Health One Technology, StepWatch activity monitor use accelerometers and microprocessors. Manufacturer: Modus health llc/ or Manufacturers: Orthocare Innovations, Actiwatch. Manufacturer: Cambridge Neurotechnology, Fitbit uses accelerometers. Manufacturer: Fitbit Inc., Nike Fuel band uses accelerometers. Manufacturer: Nike Inc. Abbreviations: N/A = not applicable, ECOLOG = ECOlogical neurobehavior LOGger (a*) = PERFORM (Multi-parametric system for continuous effective assessment and Monitoring of motor status in Parkinson's disease and other neurodegenerative disease) (b*) = Yamax SW-200 is a pedometer. Manufacturer: Yamax-Digiwalker, HRM USA INC, ActiGraph 7164 and GT3X use accelerometers. Manufacturer: Manufacturing Technology Inc/ Health One Technology, StepWatch activity monitor use accelerometers and microprocessors. Manufacturer: Modus health llc/ or Manufacturers: Orthocare Innovations (c*) = Study included multiple cohorts with different neurological diagnoses. Abbreviations: MCI = mild cognitive impairment, AD = Alzheimer’s Disease, U/D = undefined, MMSE = mini mental state exam, N/A = not applicable, LE = Lower extremity, N = number (a*) = Shimmer—Wireless Sensor Platform for Wearable Applications. Internet: http://www.shimmer-research.com Abbreviations: TBI = Traumatic brain injury, PD = Parkinson’s disease, MS = Multiple sclerosis, N/A = not applicable, LE = lower extremity, Av. average (a*) = Yamax DigiWalker SW-701 is a pedometer. Manufacturer: YAMAX Health & Sports Inc, ActiGraph GT3X use accelerometers. Manufacturer: Manufacturing Technology Inc /Health One Technology, StepWatch activity monitor uses an accelerometer and microprocessor. Manufacturers: Orthocare Innovations/ or Manufacturer: Modus health llc, Fitbit uses an accelerometer. Manufacturer: Fitbit Inc., Nike Fuelband uses accelerometers. Manufacturer: Nike Inc. (b*) = Study included multiple cohorts with different neurological diagnoses ** This study is included in Table 1b—Stroke. Abbreviations: yrs: years, hrs: hours, MMSE: Mini-Mental Status Examination, SNF: Skilled Nursing Facility, N: number, *: Used in conjunction with another activity monitor TBI: Traumatic Brain Injury, MS: Multiple Sclerosis, PD: Parkinson’s disease, AD: Alzheimer’s disease.

Multiple Sclerosis

The majority of the 61 studies (60/61, 98.4%) that remotely monitored activity in MS [23-82] (Tables 1 and 6 section a) measured physical activity by walking; one study focused on upper extremity movement.[83] The length of continuous monitoring ranged from 3 to 7 days for each discrete measurement period [33, 66] with 7 days being the measurement paradigm for the majority (41/61, 67.2%) of studies. Most of the studies (44/61, 72.2%) [23, 27, 28, 31, 32, 34, 37, 39, 41, 44, 46–56, 58–74, 76–79, 82, 84] included both relapsing and progressive MS phenotypes; >78% of participants had relapsing MS. Although MS disease duration varied, studies primarily included persons with disease duration of less than 20 years. Fifty-two studies focused on people having mild to moderate disability (able to walk without a cane or support) [23, 25–27, 29–31, 34–37, 40, 42–44, 47–50, 52, 55–61, 64, 65, 67–74, 76, 78, 79], and only two studies reported inclusion of people with greater levels of disability (requiring a walker or wheelchair for mobility).[24, 83] One research group (Department of Kinesiology and Community Health, University of Illinois at Urbana-Champaign, Urbana, Illinois) authored 49/61 studies (81.7%)[23, 25–28, 32, 34, 37, 39–69, 72–74, 78–82]; results from studies conducted by other groups generally corroborated this group’s results. No studies reported direct research funding by monitoring device manufacturers. In two studies focused on people with MS, average daily activity and step count measured via wearable accelerometers correlated with performance-based and self-reported walking mobility and physical activity.[78, 81] A third study observed that accelerometers correlate only with performance-based measures of walking (6-minute walk; [6MW,] and the Timed-Up and Go, test; [TUG]) and not self-reported walking activity.[82] People with MS record lower levels of physical activity than the general population and unaffected controls.[23, 27, 28, 32, 34, 37, 38, 52, 63, 66, 69, 73, 75, 77, 80] People with MS also frequently fail to reach daily levels of intensity and duration recommended for the general population.[85] Lower physical activity levels in MS are associated with higher levels of disability and lower scores in a range of clinical and self-reported outcomes such as walking speed and endurance (Timed 25-Foot Walk [23, 24, 29, 30, 37, 38, 62, 68, 76], 2-minute walk and 6MW [23–25, 31, 37, 38, 44, 49, 60, 67, 80, 82]), fatigue (i.e. Fatigue Severity Scale)[40, 48, 57], depression (i.e. Hospital Anxiety and Depression Scale [48, 57, 68]), self-efficacy, [39, 40, 62] and balance (Berg Balance Scale [24, 31, 38], TUG [23, 31, 80, 82]). Higher levels of physical activity correlate significantly with better performance on mobility measures in the clinic, self-reported disability questionnaires and cognitive processing speed.[41, 45, 53] Lower physical activity in MS correlates with age, [64] disease duration, [34] progressive forms of MS, [27] spasticity, [23] and unemployment, [27] but not race.[34] However, rate of disability accumulation over 6 months was similar in an active versus a more sedentary group in one study.[50] Of the 4 studies in MS that tested interventions, internet-based interventions appear to be beneficial in promoting objective and self-reported physical activity and are associated with decreased disability.[26, 30, 42, 68]

Stroke

More than half of the studies (24/41 studies, 58.5%)[15, 86–125] that reported on activity monitoring post-stroke (Tables 2 and 6 section b) measured walking or gait; 14 studies (34.1%)[94, 98, 99, 103, 104, 109, 115, 118, 119, 121–125] assessed upper extremity or arm movement; and 3 (7.3%)[100, 112, 120] measured both arm movement and walking. One study included participants with either a diagnosis of stroke (n = 30) or TBI (n = 20). This study is listed under both diagnostic headings and results are analyzed by diagnosis group.[126] Monitoring duration was usually between 2 and 6 days (28 studies, 68.3%)[86–93, 98–102, 104, 105, 110–114, 117–120, 122–125], although one study monitored step count for 4 weeks, reporting change in daily average steps between the 5 days prior and post intervention.[106] Monitoring usually commenced between 3 and 6 months after the stroke (28, 68.3%)[15, 86–88, 92–97, 101, 102, 104, 106–111, 113, 114, 116, 117, 119, 122–125]. Fewer than 40% of studies reported details about the type of stroke (i.e. ischemic or hemorrhagic and/or neuroanatomical localization). The presence and side of paralysis or paresis was reported in 92.7% (38/41)[15, 86–101, 103, 104, 106–125] of the articles; one article reported on the presence or absence of tremor as a potential confounder.[125] During monitoring, participants were in the “home/ community” or “hospital—acute care” settings; none of these studies specifically monitored patient activity in acute rehabilitation or at skilled nursing facilities.
Table 2

Characteristics of Published Studies Recording Physical Activity via Remote Monitoring for ≥24 hours in People with Stroke.

Author / yearType of StrokeTime Since StrokeDevice name (Manufacturer)Modality of the device:Study DesignMean AgeExperimental group NControl group NMonitoring LengthFunding source
Alzahrani et al, 2012 [84]Undefined> 3 monthsIntelligent Device for Energy Expenditure and Physical Activity (b*)Walking /gait/ LE physical activityCross-sectional>5042N/A2–6 daysGovernment
Alzahrani et al, 2011 [85]Undefined> 3 monthsIntelligent Device for Energy Expenditure and Physical Activity (b*)Walking /gait/ LE physical activityCross-sectional>5042212–6 daysGovernment
Alzahrani et al, 2009 [86]Undefined> 3 monthsIntelligent Device for Energy Expenditure and Physical Activity (b*)Walking /gait/ LE physical activityCross-sectional>5042N/A2–6 daysPrivate foundation
Askim et al, 2013 [87]Ischemic / Hemorrhagic8–14 daysPAL2, with a tilt switch (Gorman Promed Pty ltd)Walking /gait/ LE physical activityCross-sectional>5028N/A2–6 daysPrivate foundation
Baert et al, 2012 [88]Ischemic / HemorrhagicUndefinedYamax SW-200 (b*), Polar RS-400 HR monitor (Polar Electro Oy®)Walking /gait/ LE physical activityCross-sectional>5016N/A2–6 daysPrivate foundation
Barak et al, 2014 [89]Ischemic / Hemorrhagic> 14 days—3monthsStepWatch Activity Monitor (b*)Walking /gait/ LE physical activityCross-sectional>50408N/A2–6 daysGovernment
Bowden et al, 2008 [90]Undefined> 3 monthsStepWatch Activity Monitor (b*), GAITRite (CIR Systems, Inc.)Walking /gait/ LE physical activityCross-sectional>5059N/A2–6 daysGovernment / Private foundation
Butler & Evenson, 2014 [15]Undefined> 3 monthsActiGraph 7164 (b*)Walking /gait/ LE physical activityCross-sectional>502625247 daysGovernment
Danks et al, 2014 [91]Undefined> 3 monthsStepWatch Activity Monitor (b*)Walking /gait/ LE physical activityOpen- label>5016N/A2–6 daysNone listed
de Niet et al, 2007 [92]Hemorrhagic> 3 monthsStroke-ULAM (Upper Limb Activity Monitor) (Biometrics Ltd)Upper extremity/ arm movementCross-sectional>501851 dayNone listed
Dobkin et al, 2011 [93]Undefined> 3 monthsThe Medical Daily Activity Wireless Network (3M Corporation)Walking /gait/ LE physical activityCross-sectional>501251 dayGovernment
Frazer et al, 2013 [94]Undefined> 3 monthsDynaPort MiniMod (McRoberts. B.V.)Walking /gait/ LE physical activityCross-sectional>5014N/A7 daysNone listed
Fulk et al, 2010 [95]Undefined> 3 monthsStepWatch Activity Monitor (b*)Walking /gait/ LE physical activityCross-sectional>5012N/A7 daysNone listed
Fulk et al, 2014 (a*)[96]Mixed population: TBI and Stroke (Undefined)> 3 monthsStepWatch Activity Monitor/ Fitbit Ultra/ Nike Fuelband/ Yamax SW-701 (b*)Walking /gait/ LE physical activityCross-sectional> 5050N/A1 dayNot stated
Gebruers et al, 2014 [97]Ischemic / Hemorrhagic≤ 7 days (acute)Octagonal basic motion loggers (b*)Upper extremity/ arm movementCross-sectional>50129N/A2–6 daysGovernment
Gebruers et al, 2013 [98]Ischemic / Hemorrhagic≤ 7 days (acute)Octagonal basic motion loggers (b*)Upper extremity/ arm movementCross-sectional>50129192–6 daysPrivate foundation
Gebruers et al, 2008 [99]Ischemic≤ 7 days (acute)Octagonal basic motion loggers (b*)Both Upper extremity and WalkingCross-sectional>5039N/A2–6 daysPrivate foundation
Haeuber et al, 2004 [100]Ischemic> 3 monthsStepWatch Activity Monitor (b*)Walking /gait/ LE physical activityCross-sectional>5017N/A2–6 daysGovernment
Knarr et al, 2013 [101]Undefined> 3 monthsStepWatch Activity Monitor (b*)Walking /gait/ LE physical activityCross-sectional>5098N/A2–6 daysGovernment
Lang et al, 2007 [102]Ischemic / Hemorrhagic8–14 daysActiGraph 7164 (MTI Health Services) (b*)Upper extremity/ arm movementCross-sectional>5034101 dayGovernment
Lemmens et al, 2014 [103]Undefined> 3 monthsActiwatch-AW7 (CamNtech Ltd), Haptic Master (MOOG, Nieuw-Vennep, NL)Upper extremity/ arm movementRCT>50882–6 daysPrivate foundation
Manns & Baldwin, 2009 [104]Undefined> 14 days—3monthsStepWatch Activity Monitor (b*)Walking /gait/ LE physical activityCross-sectional>5010N/A2–6 daysPrivate foundation
Michael et al, 2009 [105]Ischemic/ Hemorrhagic> 3 monthsStepWatch Activity Monitor (b*)Walking /gait/ LE physical activityIntervention>5010N/A5 daysGovernment / Private foundation
Michielsen et al, 2012 [106]Undefined> 3 monthsStroke-Upper Limb-Activity Monitor (ULAM) (Biometrics Ltd)Upper extremity/ arm movementCross-sectional>5038181 dayNone listed
Moore et al, 2010 [107]Unilateral supratentorial stroke> 3 monthsStepWatch Cyma Inc.Walking /gait/ LE physical activityIntervention>5020N/A1 m (5 days pre-post interventi-on)Government
Mudge et al, 2009 [108]Undefined> 3 monthsStepWatch Activity Monitor (b*)Walking /gait/ LE physical activityRCT>5031273 days x4Government/ Private foundation
Mudge & Stott, 2009 [109]Undefined> 3 monthsStepWatch Activity Monitor (b*)Walking /gait/ LE physical activityCross-sectional>5049N/A2–6 daysGovernment / Private foundation
Mudge & Stott, 2008 [110]Undefined> 3 monthsStepWatch Activity Monitor (b*)Walking /gait/ LE physical activityCross-sectional>5040N/A2–6 daysNone listed
Rand & Eng, 2012 [111]Ischemic / Hemorrhagic> 14 days—3monthsActical (Philips Respironics)Both Upper extremity and WalkingCross-sectional>5060402–6 daysPrivate foundation
Rand et al, 2010 [112]Undefined> 3 monthsActical (Philips Respironics)Walking /gait/ LE physical activityCross-sectional>5040N/A2–6 daysPrivate foundation
Rand et al, 2009 [113]Ischemic / Hemorrhagic> 3 monthsActical (Philips Respironics)Walking /gait/ LE physical activityCross-sectional>5040N/A2–6 daysGovernment
Reiterer et al, 2008 [114]Ischemic / Hemorrhagic≤ 7 days (acute)Actiwatch (b*)Upper extremity/ arm movementLongitudinal>5028N/A24 hrs x4, over 6 mNone listed
Robinson et al, 2011 [115]Undefined> 3 monthsVKRFitness Twin Step Pedometer (VKRFitness)Walking /gait/ LE physical activityCross-sectional>5050N/A7 daysNone listed
Roos et al, 2012 [116]Undefined> 3 monthsStepWatch Activity Monitor (b*)Walking /gait/ LE physical activityCross-sectional>5051142–6 daysGovernment
Seitz et al, 2011 [117]Ischemic (MCA)≤ 7 days (acute)Actiwatch (b*)Upper extremity/ arm movementCross-sectional>502572–6 daysGovernment
Shim et al, 2014 [118]Undefined> 3 monthsAccelerometer (FITMETER 2010; KOREA) (U/D)Upper extremity/ arm movementCross-sectional>5040N/A2–6 daysPrivate foundation
Strommen et al, 2014 [119]Transient ischemic attack / Ischemic≤ 7 days (acute)Actical (Philips Respironics)Both Upper extremity and WalkingCross-sectional>50100N/A2–6 daysPrivate foundation
Thrane et al, 2011 [120]Hemorrhagic8–14 daysActiGraph GT1M (b*)Upper extremity/ arm movementCross-sectional>5031N/A1 dayNone listed
Uswatte et al, 2005 [121]Undefined> 3 monthsModel 71256 Activity monitors (Manufacturing Technologies Inc.)Upper extremity/ arm movementIntervention>5010102–6 daysGovernment
Uswatte et al, 2006 [122]Ischemic / Hemorrhagic> 3 monthsWireless accelerometer (Manufacturing Technologies Inc.)Upper extremity/ arm movementIntervention>5082872–6 daysGovernment
Uswatte et al, 2009 [123]Undefined> 3 monthsWireless accelerometer (Manufacturing Technologies Inc.)Upper extremity/ arm movementCross-sectional>509N/A2–6 daysGovernment/ Private foundation
Van der Pas et al, 2011 [124]Undefined> 3 monthsActiWatch AW7a (b*)Upper extremity/ arm movementCross-sectional>5045N/A2–6 daysPrivate foundation

Abbreviations: N/A = not applicable, U/D = undefined, non-commercial, HR = heart rate, m = months

(a*) = Study included multiple cohorts with different neurological diagnoses.

(b*) = Intelligent Device for Energy Expenditure and Physical Activity. Manufacturers: MiniSun Company, Octagonal basic motion loggers. Manufacturers: Amubulatory Monitoring Inc., Yamax SW-200 is a pedometer. Manufacturer: Yamax-Digiwalker, HRM USA INC, ActiGraph 7164 and GT3X use accelerometers. Manufacturer: Manufacturing Technology Inc./ Health One Technology, StepWatch activity monitor use accelerometers and microprocessors. Manufacturer: Modus health llc/ or Manufacturers: Orthocare Innovations, Actiwatch. Manufacturer: Cambridge Neurotechnology, Fitbit uses accelerometers. Manufacturer: Fitbit Inc., Nike Fuel band uses accelerometers. Manufacturer: Nike Inc.

Post-stroke, people tend to have a lower frequency of moderate to vigorous bouts of physical activity and are less likely to reach generally recommended minimum levels of physical activity than healthy controls.[15, 86] However, one study found that the “time participants spent on their feet” was similar to healthy controls.[86] Lower physical activity level post-stroke is associated with poor balance and greater depression scores.[88] Four intervention studies were identified: 3 aimed at improving arm function, [104, 122, 123] and 1 successfully increased daily step counts using a goal-directed step activity-monitoring program.[93] An observational study showed little change in daily limb use with accelerometer results, despite significant improvements in clinical measures.[112] Measuring both upper extremities post-stroke facilitated differentiation of uni- vs. bi-manual tasks, distribution of arm usage, and comparison of impaired vs. unimpaired arm function.[104] Spontaneous early arm movement activity was associated with greater neurological recovery post stroke, [118] although results varied regarding prediction of upper extremity recovery. [100, 119–121, 124, 125]

Parkinson’s Disease

All 20 studies [127-146] that reported on activity monitoring in PD (Tables 3 and 6 section c) measured physical activity through walking. Durations of monitoring were mostly for 2–6 days (6, 35.0%)[127, 134–136, 140, 144] or 7 days (8, 40.0%).[129–133, 137, 142, 143] Thirty-five per cent of studies (7/20) reported on the presence or absence of tremor as a potential confounder.[127, 134–136, 139–141]
Table 3

Characteristics of Published Studies Recording Physical Activity via Remote Monitoring for ≥24 hours in People with Parkinson’s Disease.

Author / YearParkinson’s Level of SeverityDevice name (Manufacturer)Modality of the deviceStudy DesignMean AgeExperimental group NControl group NMonitoring LengthFunding source
Cancela et al, 2014 [125]MildPERFORM (a*)Walking /gait/ LE physical activityCross-sectional> 5011N/A2–6 daysGovernment/ Private foundation
Cavanaugh et al, 2012 [126]Mild /moderateStepWatch activity monitor (b*)Walking /gait/ LE physical activityLongitudinal>5033N/A7 days—repeated oncePrivate foundation
Chastin et al, 2010 [127]Mild /moderateActivPAL (PAL Technologies Ltd)Walking /gait/ LE physical activityCross-sectional> 5017177 daysDevice manufacturer (Involved—without monetary exchange)
Dontje et al, 2013 [128]MildTracmorD (Philips New Wellness Solutions, Lifestyle Incubator)Walking /gait/ LE physical activityCross-sectional> 50467N/A7 daysGovernment /Private foundation
El-Gohary et al, 2013 [129]Mild /moderateOpal sensors (APDM, Inc.)Walking /gait/ LE physical activityCross-sectional> 5012187 daysGovernment
Ellis et al, 2011 [130]Moderate /severeStepWatch activity monitor (b*)Walking /gait/ LE physical activityCross-sectional> 50164967 daysGovernment /Private foundation
Ford et al, 2010 [131]Mild /moderateStepWatch activity monitor (b*)Walking /gait/ LE physical activityCross-sectional> 5112N/A7 daysPrivate foundation
Garcia Ruiz & Sanchez Bernardos, 2008 [132]Mild /moderateAAM ActiTrac (ActiTrac 8.29 IM Systems)Both Upper extremity and WalkingCross-sectional> 5028N/A2–6 daysNot reported
Hideyuki & Hitoshi, 2011 [133]Mild /moderateMVP-A3-05A-SD (MicroStone Corporation), Activity Monitoring And Evaluation System (Solid Brains Co., Ltd)Walking /gait/ LE physical activityCross-sectional> 509N/A1 dayNot reported
Hideyuki & Hitoshi, 2014 [134]Mild /moderateMVP-A3-05A-SD (MicroStone Corporation)Walking /gait/ LE physical activityInterventional>5010N/A2–6 daysPrivate foundation
Iluz et al, 2014 [135]Mild /moderate /severeDynaPort Hybrid, (McRoberts)Walking /gait/ LE physical activityCross-sectional> 5033N/A2–6 daysGovernment
Lord et al, 2013 [136]Mild /moderateActivPAL (PAL Technologies Ltd)Walking /gait/ LE physical activityCross-sectional> 5089977 daysGovernment
Moore et al, 2011 [137]N/AInvenSense IDG-300 (Freescale Semiconductor MMA7260QT)Walking /gait/ LE physical activityCross-sectional> 50491 dayGovernment /Private foundation
Pan et al, 2007 [138]Mild /severeECOLOG (Ruputer Pro, Seiko Instruments)Walking /gait/ LE physical activityCross-sectional> 501962–6 daysGovernment /Private foundation
Rochester et al, 2006 [139]Mild /moderateVitaport Activity Monitor (TEMEC Instruments Inc.)Walking /gait/ LE physical activityCross-sectional> 5015101 dayPrivate foundation
Wallen et al, 2014a [140]Mild /moderateActiGraph GT3X, Yamax LS2000 (b*)Walking /gait/ LE physical activityCross-sectional> 5051617 daysPrivate foundation
Wallen et al, 2014b [141]Mild /moderateActiGraph GT3X (b*)Walking /gait/ LE physical activityCross-sectional> 5065157 daysGovernment
Weiss et al, 2014 [142]Mild /moderateDynaPort Hybrid system (McRoberts)Walking /gait/ LE physical activityCross-sectional> 50107N/A2–6 daysPrivate foundation
White et al, 2007 [143]Mild /moderate2 uni-axial (M92962) and 1 bi-axial (M92961) piezo-resistive accelerometersWalking /gait/ LE physical activityLongitudinal> 509N/A24hrs x2, 48 hrs x1 (each separated by 1 week)Government
Yoneyama et al, 2013 [144]Moderate/SevereMimamori-gait system (Mitsubishi Chemical)Walking /gait/ LE physical activityCross-sectional> 5010171 dayNot reported
Busse et al, 2004 (c*)[145]N/AStepWatch activity monitor (b*)Walking /gait/ LE physical activityLongitudinal> 5010107 days—repeated onceGovernment

Abbreviations: N/A = not applicable, ECOLOG = ECOlogical neurobehavior LOGger

(a*) = PERFORM (Multi-parametric system for continuous effective assessment and Monitoring of motor status in Parkinson's disease and other neurodegenerative disease)

(b*) = Yamax SW-200 is a pedometer. Manufacturer: Yamax-Digiwalker, HRM USA INC, ActiGraph 7164 and GT3X use accelerometers. Manufacturer: Manufacturing Technology Inc/ Health One Technology, StepWatch activity monitor use accelerometers and microprocessors. Manufacturer: Modus health llc/ or Manufacturers: Orthocare Innovations

(c*) = Study included multiple cohorts with different neurological diagnoses.

One activity-monitoring device (DynaPort Hybrid) was able to differentiate between ON/OFF phases and detect “missteps/ near falls” in people with PD in the clinic and home environments.[136] Participants wore the device in the clinic while missteps were induced, an algorithm was developed to detect deviations from their gait patterns, and the algorithms were validated during an additional three days of device wear-time outside the clinic. Abnormal gait patterns, such as lower amplitude and greater step-to-step variability, were associated with fall risk in people with PD whereas total walking amount was not.[144] People with PD tend to take fewer steps and do shorter bouts of physical activity than the general population.[130, 137, 147] A reduction in total number of steps per day correlates with PD progression, [128] and milder severity of PD is associated with higher physical activity levels.[135] People with PD tend to have a smaller number of longer sedentary periods than healthy controls, although total sedentary time is similar.[129] An intervention study aimed at increasing physical activity in people with PD resulted in increased muscle strength and flexibility, self-directed exercise frequency and duration, reduced fear of falls, but no overall change in the total amount of physical activity.[135]

Dementia

Nine [148-156] of the 11 [148-158] studies (81.8%) that reported on activity monitoring in dementia (Tables 4 and 6 section d) measured physical activity as walking. Two studies focused on upper extremity or arm movement in addition to walking or gait.[157, 158] Monitoring typically lasted 2–6 days (6/11 studies, 54.5%).[149, 153, 155–158] Most studies involved people with a presumed Alzheimer's dementia or a combination of Alzheimer’s dementia and frontotemporal or Lewy Body dementias (8/11 studies, 72.7%).[148–150, 152, 153, 155, 157, 158] Severity of cognitive dysfunction was usually mild to moderate (9/11 studies, 81.8%).[148, 149, 151–157, 159] Only 2 studies involved people with severe cognitive disability.[150, 158]
Table 4

Characteristics of Published Studies Recording Physical Activity via Remote Monitoring for ≥24 hours in People with Dementia.

Author / YearPresumed pathologyCognitive scoreDevice name (Manufacturer)Modality of the deviceStudy DesignMean AgeExperimental group NControl group NMonitoring LengthFunding source
David et al, 2012 [146]ADMildMicroMini (MotionLogger, Ambulatory- Monitoring)Walking /gait/ LE physical activityCross-sectional> 50107N/A7 daysGovernment / Private foundation
Erickson et al, 2013 [147]AD /other dementiaAD/MCI/Control (U/D)BodyMedia (SenseWear)Walking /gait/ LE physical activityCross-sectional> 5039282–6 daysPrivate foundation
Gietzelt et al, 2014 [148]ADModerate/ severeShimmer sensor (a*)Walking /gait/ LE physical activityLongitudinal> 5040N/A7 days—x4Private foundation
Gietzelt et al, 2013 [149]Dementia diagnosisMMSE cut off <24/30: Mild/ ModerateShimmer sensor (a*)Walking /gait/ LE physical activityCross-sectional> 5010107 daysNot stated
Greiner et al, 2007 [150]ADModerate. Mean MMSE 11.2 ± 5.5.Activity monitoring system (Matrix Co.)Walking /gait/ LE physical activityCross-sectional> 5012N/A7 daysPrivate foundation
Hoffmeyer et al, 2012 [151]ADModerateShimmer sensor (U/D)Walking /gait/ LE physical activityCross-sectional> 5016162–6 daysNot stated
James et al, 2012 [152]Dementia diagnosisMild / moderateActical® (Mini Mitter)Walking /gait/ LE physical activityCross-sectional> 5070624Median 9 (range 2–16) daysGovernment / Private foundation
Kirste et al, 2014 [153]ADMildShimmer sensors (U/D)Walking /gait/ LE physical activityCross-sectional> 5023232–6 daysNot stated
Nagels et al, 2007 [154]AD / Lewy body/ Frontotempo-ral /other dementiaModerateOctagonal basic motionlogger (Ambulatory monitoring)Both Upper extremity and WalkingCross-sectional> 50110N/A2–6 daysPrivate foundation
Nagels et al, 2006 [155]AD / Lewy body/ Frontotempo-ral /other dementiaModerate/ severeOctagonal basic motionlogger (Ambulatory monitoring)Both Upper extremity and WalkingCross-sectional> 50110N/A2–6 daysPrivate foundation
Yuki et al, 2012 [156]Frontotempo-ral / other dementiaMildLifecorder (Suzuken)Walking /gait/ LE physical activityLongitudinal> 50774N/A2–6 daysPrivate foundation

Abbreviations: MCI = mild cognitive impairment, AD = Alzheimer’s Disease, U/D = undefined, MMSE = mini mental state exam, N/A = not applicable, LE = Lower extremity, N = number

(a*) = Shimmer—Wireless Sensor Platform for Wearable Applications. Internet: http://www.shimmer-research.com

Physical activity level in people with dementia depended on stage of disease. People with mild Alzheimer’s dementia have lower mean physical activity (associated with apathy and more daytime napping)[148] and lower step count per day [149] compared to people with mild cognitive impairment (MCI) or healthy controls. Monitoring was feasible in people with cognitive impairment [149, 155] and accelerometry was able to distinguish partners with and without early Alzheimer’s disease even before deficits were clinically visible.[155] Monitoring in people with dementia distinguished “intensive wandering behavior,” which, when assessed along with estimations of energy expenditure, facilitated accurate calculation of nutritional requirement.[152]

Traumatic Brain Injury

The single study in TBI concluded that 7 days of accelerometry was feasible in 30 people more than 3 months post-TBI (adherence >86%). Physical activity was below recommended levels.[160] Data were more reliable than a self-reported physical activity questionnaire to determine amount, but not type of, moderate to vigorous physical activity.[160]

Ataxia

In a single study of physical activity monitoring in ataxia, 19 participants with spinocerebellar ataxia wore a step activity monitor for 7 days; greater physical activity was associated with shorter disease duration and lower disability scores.[161] The remaining studies that reported physical activity monitoring in mixed populations [33, 126, 147] measured walking activity or gait (Tables 5 and 6 section e). One study observed 50 people with either TBI or stroke over the age of 50 and greater than 3 months post injury assessing various activity monitoring systems.[126] Another study evaluated a tri-axial accelerometer (TriTrac RT3) over 7 days in a study sample of patients with stroke (> 6 months in duration) (20), PD (7), or MS (11), and sedentary healthy controls (9).[33] Mobility was more accurately assessed using 7-day activity monitoring than with a patient reported measure. A third study measured step count in participants with PD (10), MS (10), primary muscle disorder (10) and healthy controls (30) over 7 days in free-living conditions.[147] Neurological patients were observed to have a lower level of physical activity than healthy controls.

Reliability and Validity

Many studies provided evidence of the reliability of various devices. For the StepWatch Activity Monitor post-stroke, the test-retest interclass correlation coefficient (ICC) values were 0.93–0.99 over a minimum of 3 days.[110] Other studies documented similar ICC values for Actical accelerometer activity counts (ICC >0.94; 95% CI 0.91–0.97) in people post-stroke with no differences between workdays and weekend days.[114] In MS, test-retest ICC values were 0.91 and 0.88 for steps per day and activity counts per day (ActiGraph GT3X), respectively, over 6 months, although the ICC was smaller for people with greater disability (ICC = 0.672 for activity counts/day and ICC = 0.774 for steps/day).[37] In a direct comparison in MS, seven days of monitoring (ActiGraph 7164) produced an ICC of 0.93 whereas three days yielded an ICC of 0.80, with no difference noted between days of the week (weekdays or weekend days) when measuring walking activity or gait.[66] A 7-day period (using a TriTrac RT3 accelerometer) was most reliable in patients with stroke, MS or PD.[33] In PD, 24 hours of monitoring was found to be reliable to record a participants’ functional activity (average step count, inactive vs. active minutes using an activity monitor).[145] In spinocerebellar ataxia, internal consistency was highest with 7-days of monitoring, but 3 days of monitoring using a step activity monitor still correlated strongly with 7-day measures.[161] Evidence of validity primarily comes from comparison of activity data collected remotely with established performance-based and self-report measures. In MS, number of steps per day correlates with the Expanded Disability Status Scale (EDSS), the Patient Determined Disease Steps (PDDS) scale, performance-based ambulatory measures in the clinic and patient-reported outcomes.[24, 31, 37, 38] Post-stroke, the ICC was high when comparing activity counts for the paretic and non-paretic hip (0.96), [114] but correlation was moderate when comparing activity with patient-reported activity questionnaires.[90] Post-stroke, activity counts for the upper extremity had high predictive value for good arm recovery; [98-100] both arms are used less than by healthy controls, and less arm activity correlates with increased impairment and reduced muscle activity measured by EMG.[98, 99, 103, 118–125] In TBI, activity counts were more accurate than questionnaires in characterizing levels of moderate to vigorous physical activity.[160] In spinocerebellar ataxia, average step count across 7 days correlated strongly with disability scores and moderately with walking speed.[161]

Discussion

This systematic review examines a decade of literature on remote monitoring of physical activity in people with neurological diseases. Physical activity monitoring is feasible in these populations, including in those with impaired cognition. Some of the evidence was sparse: very few of the eligible studies used remote activity monitoring as an outcome for an intervention (9/134), [26, 30, 42, 68, 93, 104, 122, 123, 135] indicating that use of these tools in neurological populations is still primarily in an observational or validation phase. Nevertheless, the data in some diagnostic groups indicate that remote monitoring of physical activity can be a clinically useful way to assess activity status over time. A wide array of variables can be used to measure physical activity. The most common are permutations of activity count or step count. However, other activity variables may provide better prognostic value in disease-specific situations. For example, length and number of moderate to vigorous activity bouts [86, 105] reflected differences better than total step count in some studies following stroke, [86, 116] whereas total step count, highest step rate in 1 minute, highest step rate in 5 minutes, and peak activity index appeared most reliable in others.[110] Detection of upper limb recovery via accelerometer measures of arm/upper extremity movement was also favored post-stroke, [98–100, 103, 104, 109, 112, 118–125] and may prove helpful in other populations, such as upper limb function in MS. In PD, average number of steps per day correlated with activity level and disease progression in many studies.[128, 132, 133] However, in a minority there was no correlation between activity count and patient-reported assessments of symptom severity.[140] Physical activity monitoring using specialized devices may also be used to predict fall-risk and measure missteps in PD, [129] functionality that, if replicated and validated, could be very be useful in other neurological populations, including MS and stroke. Across diagnoses, physical activity is consistently lower in neurological populations than in those without neurological disease.[34–36, 83, 129, 148, 149] The total amount of activity or step counts measured via accelerometers is lower in MS (e.g.[63, 69]), dementia (e.g.[151, 153]), and stroke [118] than in controls. In people with moderate to severe PD, pattern of activity was different (sedentary bouts were longer) but total volume of sedentary time was similar to controls.[129] In those with mild to moderate PD, speed of turns was slower than in healthy controls, and reductions in daily ambulatory activity (volume of moderate to vigorous physical activity) were detected over a year, even without evident changes in clinical measures of gait or disease severity.[128] Remote physical activity monitoring for durations of >24 hours was feasible in the neurological populations studied; [76] however, adherence was a potential concern. Post-stroke, the placement of sensors in pockets (confounding clothing movement with activity and increasing risk of leaving the device behind when changing clothes), impaired mental status, depression, and device discomfort (leading to withdrawal of 25% of patients from one study) all reduced adherence.[89, 91, 96] In PD, patients concerned with appearance also had reduced adherence (affecting over a quarter of participants in one study).[127] Physical activity monitoring for extended periods of time was well tolerated in people with Alzheimer's Disease, although adherence was lower (83%) compared to healthy controls (100%).[149] Tolerability was not recorded as a significant problem in studies involving people with MS, although adherence and loss of data from attrition was noted in several studies (S1a Table). Intervention studies in stroke are heterogeneous with regards to adherence and walking performance. A circuit-based rehabilitation study aimed at increasing stroke patients’ amount and rate of walking in their home environment, found high adherence rates to the program.[108] Specific mention of device adherence was not recorded.[108] A separate intervention study recording steps per day during 4 weeks, reported ~25% attrition due to non-compliance.[106] Interventional studies testing physical activity monitoring in stroke patients observed changes in clinical and patient-reported measures, but, perhaps in part due to inadequate adherence, failed to demonstrate changes in physical activity (average steps per day) in the home environment. [107, 108] Likewise, home intervention for increasing activity in people with PD observed improvements in strength, flexibility and a reduction in fear of falling, without noting changes is overall daily physical activity levels.[135] Studies in MS, however, indicated that Internet-based exercise interventions can help to increase physical activity (activity/ steps per day), and improve self-reported disease symptoms and self-efficacy over 6 months.[42, 68] The few reviewed intervention studies using remote monitoring affirm that measuring activity levels of patients with minimal invasiveness in their natural environment has potential advantages over traditional self-reported and clinic-based measures. Self-reported measures are easy to obtain through questionnaires but are prone to recall bias. Performance-based measures in clinic can provide a useful snapshot of physical activity and may have prognostic value but are primarily measures of physical activity patients are capable of rather than how active patients actually are in their natural environment.[107, 108] Future intervention studies should continue measuring outcomes in multi-faceted ways as researchers gather more evidence of the relationship between the different categories of measures. The accelerometer-based activity monitors used in many of the included studies are not primarily designed or marketed for consumer use, with current prices ranging from ~$200 to $600, which do not include software (~$2000) necessary for data analysis (S2 Table). Many commercially available monitors have not yet been evaluated in neurological populations. One recent study in healthy individuals showed no systematic bias when comparing step counts recorded via commercially available activity monitors (i.e. Fitbit) versus research grade accelerometers (ActiGraph).[162, 163] However, the accuracy of non-research grade activity monitors remains an active source of debate, [10, 19, 164–167] as does the failure of activity monitors to efficiently track many non-walking-based physical activities such as swimming, cycling, strength training and yoga.[168] Lessons learned from this systematic review lead to several recommendations for translation of remote physical activity monitoring in neurological indications. 1) Remote physical activity monitoring research would benefit from standardization in reporting. We provide a checklist that might aid researchers and clinicians in future research and clinical use (Fig 2). 2) While remote monitoring devices and measurement protocols should be tested and validated in specific neurological conditions, solutions are likely to translate across neurological conditions that share patterns of functional impairment. 3) Activity monitors have the potential to be retooled with suites of variables specific to particular diagnostic indications. For example, a disease-specific remote monitoring suite for MS might include step and activity count, fall detection, upper extremity function and temperature sensors to correlate with possible heat-induced demyelination-related disability. Additional functionality could include reminders to exercise, take medication or keep to a schedule for bowel and bladder maintenance.[169] For all diagnostic groups, monitors could be tailored to track adherence to home exercise programs. If worn for longer periods of time, they could detect continuation of or changes in activity after specific punctate interventions (pharmacologic, medical, telehealth, or exercise-based) aimed to increase activity levels. Further studies are needed for longer periods of time (continuously for months/years) to determine the feasibility and responsiveness of activity monitoring devices for these purposes.
Fig 2

Checklist for Standardization of Reporting for Remote Physical Activity Monitoring in Neurological Disease.

From: Moher D, Liberati A, Tetzlaff J, Altman DG, The PRISMA Group (2009). Preferred Reporting Items for Systematic Reviews and Meta-Analyses: The PRISMA Statement. PLoS Med 6(6): e1000097. doi:10.1371/journal.pmed1000097 For more information, visit: www.prisma-statement.org.

Checklist for Standardization of Reporting for Remote Physical Activity Monitoring in Neurological Disease.

From: Moher D, Liberati A, Tetzlaff J, Altman DG, The PRISMA Group (2009). Preferred Reporting Items for Systematic Reviews and Meta-Analyses: The PRISMA Statement. PLoS Med 6(6): e1000097. doi:10.1371/journal.pmed1000097 For more information, visit: www.prisma-statement.org. Limitations of this review include the focus on adults with neurological disease; lessons learned do not necessarily extend to pediatric populations with these conditions. This review also focuses specifically on physical activity monitoring and by necessity does not analyze advances in non-voluntary activities that can also be assessed via remote monitoring, such as seizure detection and sleep. Because only 9 of the 134 studies were interventional, our review does not include a meta-analysis. In conclusion, this review records emerging evidence to support the use of remote physical activity monitoring in neurological care and neurorehabilitation. Because some patients already regularly perform such monitoring on themselves using commercial wearable devices or through their smartphones, providers also need to become familiar with these technologies and strategies for interpretation and to consider this knowledge translation when planning future studies.

PRISMA checklist.

(TIFF) Click here for additional data file.

Risk of Bias for Individual Studies.

(a = multiple sclerosis, b = stroke, c = Parkinson’s disease, d = Dementia/Alzheimer’s disease, and e = Multiple neurological disorders) (DOCX) Click here for additional data file.

Summary of Common Monitors Used In Studies Monitoring Physical Activity for ≥ 24 Hours.

(PDF) Click here for additional data file.

Level of Evidence Intervention studies.

(DOCX) Click here for additional data file.
  157 in total

1.  Quantified measurement of activity provides insight into motor function and recovery in neurological disease.

Authors:  M E Busse; O R Pearson; R Van Deursen; C M Wiles
Journal:  J Neurol Neurosurg Psychiatry       Date:  2004-06       Impact factor: 10.154

2.  Capturing ambulatory activity decline in Parkinson's disease.

Authors:  James T Cavanaugh; Terry D Ellis; Gammon M Earhart; Matthew P Ford; K Bo Foreman; Leland E Dibble
Journal:  J Neurol Phys Ther       Date:  2012-06       Impact factor: 3.649

3.  Ambulatory activity of stroke survivors: measurement options for dose, intensity, and variability of activity.

Authors:  Patricia J Manns; Evan Baldwin
Journal:  Stroke       Date:  2009-01-15       Impact factor: 7.914

4.  Validity of physical activity measures in ambulatory individuals with multiple sclerosis.

Authors:  Robert W Motl; Edward McAuley; Erin M Snook; Jennifer A Scott
Journal:  Disabil Rehabil       Date:  2006-09-30       Impact factor: 3.033

5.  Surface EMG characteristics of people with multiple sclerosis during static contractions of the knee extensors.

Authors:  Sasha M Scott; Adrienne R Hughes; Stuart D R Galloway; Angus M Hunter
Journal:  Clin Physiol Funct Imaging       Date:  2010-08-27       Impact factor: 2.273

6.  Physical activity and quality of life in multiple sclerosis: intermediary roles of disability, fatigue, mood, pain, self-efficacy and social support.

Authors:  Robert W Motl; Edward McAuley; Erin M Snook; Rachael C Gliottoni
Journal:  Psychol Health Med       Date:  2009-01       Impact factor: 2.423

7.  Symptom cluster as a predictor of physical activity in multiple sclerosis: preliminary evidence.

Authors:  Robert W Motl; Edward McAuley
Journal:  J Pain Symptom Manage       Date:  2009-03-28       Impact factor: 3.612

8.  Accelerometry in persons with multiple sclerosis: measurement of physical activity or walking mobility?

Authors:  Madeline Weikert; Robert W Motl; Yoojin Suh; Edward McAuley; Daniel Wynn
Journal:  J Neurol Sci       Date:  2010-01-08       Impact factor: 3.181

9.  Preferred reporting items for systematic reviews and meta-analyses: the PRISMA statement.

Authors:  David Moher; Alessandro Liberati; Jennifer Tetzlaff; Douglas G Altman
Journal:  BMJ       Date:  2009-07-21

10.  Randomized controlled trial of a teleconference fatigue management plus physical activity intervention in adults with multiple sclerosis: rationale and research protocol.

Authors:  Matthew Plow; Marcia Finlayson; Robert W Motl; Francois Bethoux
Journal:  BMC Neurol       Date:  2012-10-16       Impact factor: 2.474

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  66 in total

1.  Continuous daily assessment of multiple sclerosis disability using remote step count monitoring.

Authors:  V J Block; A Lizée; E Crabtree-Hartman; C J Bevan; J S Graves; R Bove; A J Green; B Nourbakhsh; M Tremblay; P-A Gourraud; M Y Ng; M J Pletcher; J E Olgin; G M Marcus; D D Allen; B A C Cree; J M Gelfand
Journal:  J Neurol       Date:  2016-11-28       Impact factor: 4.849

Review 2.  Motion sensors in multiple sclerosis: Narrative review and update of applications.

Authors:  Jeffer Eidi Sasaki; Brian Sandroff; Marcas Bamman; Robert W Motl
Journal:  Expert Rev Med Devices       Date:  2017-10-18       Impact factor: 3.166

3.  Quantity and quality of gait and turning in people with multiple sclerosis, Parkinson's disease and matched controls during daily living.

Authors:  Vrutangkumar V Shah; James McNames; Martina Mancini; Patricia Carlson-Kuhta; Rebecca I Spain; John G Nutt; Mahmoud El-Gohary; Carolin Curtze; Fay B Horak
Journal:  J Neurol       Date:  2020-01-11       Impact factor: 4.849

4.  Six-Month Effectiveness of Remote Activity Monitoring for Persons Living With Dementia and Their Family Caregivers: An Experimental Mixed Methods Study.

Authors:  Joseph E Gaugler; Rachel Zmora; Lauren L Mitchell; Jessica M Finlay; Colleen M Peterson; Hayley McCarron; Eric Jutkowitz
Journal:  Gerontologist       Date:  2019-01-09

5.  "It's Like a Cyber-Security Blanket": The Utility of Remote Activity Monitoring in Family Dementia Care.

Authors:  Lauren L Mitchell; Colleen M Peterson; Shaina R Rud; Eric Jutkowitz; Andrielle Sarkinen; Sierra Trost; Carolyn M Porta; Jessica M Finlay; Joseph E Gaugler
Journal:  J Appl Gerontol       Date:  2018-03-04

6.  Physical Function and Pre-Amputation Characteristics Explain Daily Step Count after Dysvascular Amputation.

Authors:  Matthew J Miller; Paul F Cook; Paul W Kline; Chelsey B Anderson; Jennifer E Stevens-Lapsley; Cory L Christiansen
Journal:  PM R       Date:  2019-04-17       Impact factor: 2.298

7.  Psychosocial Factors Influence Physical Activity after Dysvascular Amputation: A Convergent Mixed-Methods Study.

Authors:  Matthew J Miller; Megan A Morris; Dawn M Magnusson; Kelly Putnam; Paul F Cook; Margaret L Schenkman; Cory L Christiansen
Journal:  PM R       Date:  2020-09-16       Impact factor: 2.298

Review 8.  [Remote assessment of idiopathic Parkinson's disease : Developments in diagnostics, monitoring and treatment].

Authors:  U Kleinholdermann; J Melsbach; D J Pedrosa
Journal:  Nervenarzt       Date:  2019-12       Impact factor: 1.214

9.  Impact of Nutritional Intake on Function in People with Mild-to-Moderate Multiple Sclerosis.

Authors:  Lacey Bromley; Peter J Horvath; Susan E Bennett; Bianca Weinstock-Guttman; Andrew D Ray
Journal:  Int J MS Care       Date:  2019 Jan-Feb

Review 10.  Physical Activity Monitoring in Patients with Neurological Disorders: A Review of Novel Body-Worn Devices.

Authors:  Oonagh M Giggins; Ieuan Clay; Lorcan Walsh
Journal:  Digit Biomark       Date:  2017-06-12
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