Literature DB >> 32153787

Self-reported and objectively measured physical activity in people with and without chronic heart failure: UK Biobank analysis.

Johanna O'Donnell1,2, Karl Smith-Byrne3, Carmelo Velardo2, Nathalie Conrad1, Gholamreza Salimi-Khorshidi1, Aiden Doherty3, Terence Dwyer1, Lionel Tarassenko2, Kazem Rahimi1.   

Abstract

Objective: The impact of heart failure (HF) on perceived and objectively measured levels of physical activity (PA) can inform risk stratification and treatment recommendation. We aimed to compare self-reported and objectively measured PA levels in a large sample of participants with and without HF.
Methods: A validated PA questionnaire was used to estimate self-reported weekly PA among 1600 participants with HF and 387 580 participants without HF. Accelerometer data were studied in 596 participants with HF and 96 105 participants without HF for a period of 7 days. Using multivariable linear regression models, we compared the PA levels between participants with HF and without HF, focusing on both the average daily PA levels and the intensity of PAs throughout the day.
Results: PA levels were significantly lower in participants with HF using both self-report (excess metabolic equivalent of task hours per week of 26.5 (95% CI 24.7 to 28.4) vs 34.7 (95% CI 34.5 to 34.9), respectively (p<0.001)) and accelerometer measures (mean accelerations of 23.7 milligravity (95% CI 23.1 to 24.4) vs 28.1 milligravity (95% CI 28.0 to 28.1), respectively (p<0.001)). Findings were consistent across different PA intensities. Hour-by-hour comparisons showed that accelerometer-derived PA levels of patients with HF were reduced throughout the day.
Conclusion: Perceived and objectively recorded PA levels of patients with chronic HF are significantly lower than those of individuals without HF. This difference is continuous throughout the different hours of the day, with individuals with HF being on average 16% less active than individuals without HF. In patients with HF, increases in everyday activity may be a potential alternative to structured exercise programmes. © Author(s) (or their employer(s)) 2020. Re-use permitted under CC BY. Published by BMJ.

Entities:  

Keywords:  epidemiology; heart failure; heart failure treatment; public health

Mesh:

Year:  2020        PMID: 32153787      PMCID: PMC7046950          DOI: 10.1136/openhrt-2019-001099

Source DB:  PubMed          Journal:  Open Heart        ISSN: 2053-3624


Reduced levels of physical activity (PA) in heart failure (HF) patients have been associated with more severe levels of breathlessness and an increased risk of long-term mortality, however rlittle is known about PA levels of HF patients throughout the day and in comparison with non-HF individuals. In this study, we compare self-reported and accelerometer-derived PA levels in a large group of individuals with and without HF and show that both perceived and objectively recorded PA levels of patients with chronic HF are significantly lower than those of individuals without HF. In our study, accelerometer-derived measures revealed that PA levels of patients with HF are significantly reduced throughout the day. This research allows clinical staff to gain a better understanding of the impact of HF on patients’ day-to-day life. We show that both patients self-reported (perceived) and accelerometer-derived (objective) PA is significantly lower than in participants without HF when adjusting for age and sex. Furthermore, through the added detail provided by accelerometer recordings, we show that PA levels of patients with HF are significantly attenuated throughout the entire day with the exception of night hours, suggesting that HF affects the ability of patients to conduct even basic everyday PA. The latter may also suggest that increases in the activeness during everyday activities may be a potential alternative to a structured physical exercise regimen. Such interventions may be of particular benefit to patients who express concern about potential adverse effects of physical exercise.

Introduction

In patients with heart failure (HF), increases in levels of physical activity (PA) improve quality of life1 and may reduce the risk of hospitalisation and death.2 3 Therefore, many national and international guidelines strongly recommend regular PA and structured exercise training for patients with mild to moderate chronic HF.4–6 However, these recommendations are rarely achieved by patients.7 Factors influencing the adherence to recommended PA guidelines in HF include fluctuating health and patients’ external and internal motivations.8 In addition, patients’ concern about the risks associated with overdoing physical exercise has been identified as a barrier to adherence8; this might be fuelled by poor patient and doctor awareness of individuals’ ability to conduct PA. While exercise intolerance is a well-studied symptom of HF, levels of everyday PA are less well understood.5 Existing research suggests that reduced PA levels in patients with HF are associated with more severe levels of breathlessness6 7 and an increased risk of long-term mortality.9–11 However, reliable analysis of self-reported and objectively measured PA among patients with HF and their comparison with individuals without HF is limited.5 12 13 This study set out to compare PA behaviour of people with and without HF using both self-reported (perceived) and accelerometer-derived (objective) measures and to investigate objectively recorded PA levels of patients with HF throughout the day.

Methods

Study population

This research has been conducted using the UK Biobank Resource14 (study ID 16032). Between 2006 and 2010, the UK Biobank recruited approximately 500 000 subjects aged 40–69 years from across the UK and collected a range of self-reported data, physiological measurements and biological samples at baseline. Information about health-related outcomes (before and after the baseline assessment) were obtained through linkage of the UK Biobank with data from the Office for National Statistics for death and emigration information and the Department of Health’s Hospital Episode Statistics for hospital-admission diagnoses (up until March 2015 for English residents that were either NHS-funded or NHS-treated).

Self-reported PA

Baseline assessment included information on self-reported PA measured through an adapted version of the International PA questionnaire (IPAQ)15 completed on a tablet computer. Patients were asked to state how many days they were engaged in more than 10 minutes of each, walking, moderate PA and vigorous PA in a typical week. Participants were then questioned for how many minutes they were engaged in each of the activities on a typical day. Self-reported PA data were processed using the method described by Bradbury et al 16 based on the IPAQ guidelines.17 Walking and moderate and vigorous activities were scored at 2.3, 3.0 and 7.0 excess metabolic equivalents of tasks (METs), respectively.17 In order to extract participants’ average excess METs per week, the time spent in each of the activities on a typical day was multiplied by the typical number of days doing the exercise and the respective MET scores. Self-reported average daily physically active minutes of <10 min were recorded as 0. After aggregating over the whole week, self-reported values of ≥1260 min per week (equivalent to an average of 3 hours a day) were truncated at 1260 min according to the IPAQ guidelines.16 Self-reported PA levels were reported in excess MET-hours per week. Participants who answered ‘do not know’ or ‘prefer not to answer’ to any of the self-reported PA questions were removed from the analysis.

Accelerometer-derived PA

Accelerometer data were collected for a subset of approximately 100 000 participants between May 2013 and 2015.18 UK Biobank participants were contacted via email and provided with an Axivity AX3 accelerometer (Open Lab, Newcastle, UK) if they agreed to take part in the activity data collection. Participants were told to wear the three-axial accelerometer continuously on their dominant wrist for a period of 7 days. The accelerometer recorded data at a frequency of 100 Hz and an acceleration range of ±8 g. The raw accelerometer data were calibrated19 and wear-time periods were identified using the UK Biobank preprocessing methods described by Doherty 18 Signals with poor wear-times or failure to calibrate were removed from the analysis. Accelerometer-based summary measures included the total mean acceleration over the 7-day measurement period, mean hourly acceleration and time spent within a range of different mean acceleration values as a marker of PA intensities.18 The proportion of time spent in sedentary, light, moderate and vigorous PAs was thereby defined as the proportion of time spent in accelerations of ≤25, 26–100, 101–425 and >425 milligravity, respectively.18 20

HF definition

We defined prevalent HF as any primary or secondary discharge diagnosis of HF as indicated by the following codes: ICD10 code 'I500', 'I501' or 'I509' and ICD9 code ‘4280’ or ‘4281’ prior to the assessment of PA. Given that accelerometer data were collected after questionnaire-based PA assessment and were restricted to a subsample of the total cohort, we had two partially overlapping HF populations (figure 1).
Figure 1

Summary of self-reported and accelerometer-derived PA behaviours in participants with or without HF. (A) Box plots of percentage time spent within different categories of mean age-adjusted/sex-adjusted self-reported PA among participants with (blue) or without (grey) diagnosed HF. All differences are significant (p<0.01). (B) Box plots of percentage time spent within different mean age-adjusted/sex-adjusted acceleration ranges for participants with (blue) and without (grey) diagnosed HF. All differences are significant (p<0.01). (C) Mean (solid line) and CIs (shaded area) of mean acceleration during different hours of the dayfor participants with (blue) and without (grey) diagnosed HF. HF, heart failure; PA, physical activity.

Summary of self-reported and accelerometer-derived PA behaviours in participants with or without HF. (A) Box plots of percentage time spent within different categories of mean age-adjusted/sex-adjusted self-reported PA among participants with (blue) or without (grey) diagnosed HF. All differences are significant (p<0.01). (B) Box plots of percentage time spent within different mean age-adjusted/sex-adjusted acceleration ranges for participants with (blue) and without (grey) diagnosed HF. All differences are significant (p<0.01). (C) Mean (solid line) and CIs (shaded area) of mean acceleration during different hours of the dayfor participants with (blue) and without (grey) diagnosed HF. HF, heart failure; PA, physical activity.

Covariate definitions

Age was defined as age at the time of each PA measurement. All other covariates were based on data collected at baseline. Smoking and alcohol status were divided into never, previous or current. Social deprivation was determined using the Townsend Deprivation Index, which is an area-of-residence-based social deprivation index.21

Statistical analysis

We used multivariable linear regression to compare the mean PA between participants with HF and without HF. Analyses were carried out separately for self-reported and accelerometer-derived PA levels. Primary analyses were adjusted for age and sex. Secondary analyses were additionally adjusted for ethnicity, baseline Body Mass Index (BMI), alcohol status, smoking status and socioeconomic status. We performed two sensitivity analyses to test the impact of timing of HF diagnosis and PA assessment on the observed outcomes. In the first sensitivity analysis, we restricted comparisons to participants who had HF at baseline (ignoring any participants with incident HF report between baseline assessment and accelerometer data collection) to ensure that any observed differences between self-reported and objectively assessed PA levels were not due to a change in population classification over time. In a second sensitivity analysis, we investigated the impact of time since diagnosis of HF on any observed differences in PA levels between HF and non-HF participants. Given that both time since incident diagnosis of HF and time since last admission to hospital with HF could impact PA levels, we selected three time intervals as alternative explanatory variables: time since first report of HF, time since last report of HF hospitalisation where HF was the primary discharge diagnosis and time since last report of HF hospitalisation where HF was the primary or secondary discharge diagnosis. All analyses were done in R.22

Results

Out of a total of 502 602 UK Biobank participants, 389 180 provided valid self-reported PA information at baseline. This included 1600 participants with previously diagnosed HF. Accelerometer-based PA data of sufficient quality (to be included in the analysis) were collected for 96 701 UK Biobank participants between 2013 and 2015, of whom 596 had an HF diagnosis prior to the recording. A subset of these participants (n=244) had HF at baseline; others were diagnosed with HF between the baseline assessment and the recording of accelerometer data. Out of the total of 80 121 with self-reported PA data at baseline and a valid accelerometer recording (overlapping group), 190 had a diagnosis of HF at baseline (see figure 1). Characteristics of participants in the three subpopulations (self-reported PA, accelerometer-based PA and overlapping PA assessment) by HF status are presented in table 1. Across all populations, patients with HF were on average older than non-HF participants and were more likely to be male. Participants with HF were more likely to be overweight or obese than participants without an HF diagnosis. HF participants were more likely to have given up alcohol and to class themselves as previous or current smokers in all analyses.
Table 1

Baseline characteristics of UK Biobank participants

Self-reported PAAccelerometer-derived PAOverlapping PA
No HFHFP valueNo HFHFP valueNo HFHFP value
n387 580160096 10559680 121190<0.001
Age (years)57 (50–63)63 (59–67)<0.00163 (56–69)66 (65–72)<0.00157 (50–62)62 (58–65)<0.001
Female202 169 (52%)324 (20%)<0.00154 293 (57%)153 (26%)43 727 (55%)28 (15%)
Male185 411 (48%)1276 (80%)41 812 (44%)443 (74%)36 394 (46%)162 (85%)
Ethnic background0.750.740.40
 White367 547 (95%)1526 (95%)92 803 (97%)579 (98%)77 490 (97%)186 (98%)
 Mixed or non-white18 915 (5%)67 (4%)2968 (3%)15 (2%)2413 (3%)3 (2%)
 Missing 1118 (<1%)7 (<1%)334 (<1%) 2 (<1%)218 (<1%)1 (<1%)
BMI (kg/m2)<0.001<0.001<0.001
 <24.9127 352 (33%)259 (16%)36 815 (38%)120 (20%)31 033 (39%)43 (23%)
 ≥25 and <30165 702 (43%)617 (39%)39 488 (41%)247 (42%)33 073 (41%)74 (39%)
 ≥30 and <3564 782 (17%)466 (29%)13 736 (14%)144 (25%)11 209 (14%)50 (26%)
 ≥3524 159 (6%)226 (14%)4810 (5%)77 (13%)3783 (5%)19 (10%)
 Missing 5585 (2%)32 (2%)1256 (1%)8 (1%)1023 (1%)4 (2%)
Alcohol status<0.0010.003<0.004
 Never14 891 (4%)94 (6%)2790 (3%)27 (5%)2161 (3%)6 (3%)
 Previous12 987 (3%)156 (10%)2620 (3%)48 (8%)2118 (3%)15 (8%)
 Current359 513 (93%)1349 (84%)90 614 (94%)521 (87%)75 825 (95%)169 (89%)
 Missing189 (<1%)1 (<1%) 81 (<1%)017 (<1%)0
Smoking status<0.0010.002<0.002
 Never212 488 (55%)565 (35%)54 839 (57%)237 (40%)45 656 (57%)77 (41%)
 Previous134 923 (35%)842 (53%)34 477 (36%)307 (52%)28 815 (36%)101 (53%)
 Current39 197 (10%)189 (12%)6633 (7%)50 (8%)5526 (7%)12 (6%)
 Missing 972 (<1%)0156 (<1%)2 (<1%)124 (<1%)0
Socioeconomic status0.060.870.13
 Q177 446 (20%)213 (13%)21 154 (22%)110 (18%)17 765 (22%)27 (14%)
 Q277 444 (20%)272 (17%)20 338 (21%)130 (22%)16 987 (21%)51 (27%)
 Q377 451 (20%)285 (18%)19 666 (21%)121 (20%)16 380 (20%)33 (17%)
 Q477 404 (20%)330 (21%)18 969 (20%)117 (20%)15 841 (20%)50 (26%)
 Q577 250 (20%)497 (31%)15 868 (17%)118 (20%)13 047 (16%)29 (15%)
 Missing585 (<1%) 0110 (<1%) 0 101 (<1%)0

Quantile borders for the Townsend score were –6.26, –3.97, –2.84, –1.44, 1.11, 11.00 based on the participants with self-reported PA data.

Participants with poor wear quality and missing calibration coefficients are not included in the table. P values were calculated using the Kolmogorov-Smirnov test for continuous variables and the χ2 test for categorical variables. The overlapping group refers to individuals who were included in the self-reported analysis and also had sufficient-quality accelerometer recordings.

BMI, Body Mass Index; HF, heart failure; PA, physical activity.

Baseline characteristics of UK Biobank participants Quantile borders for the Townsend score were –6.26, –3.97, –2.84, –1.44, 1.11, 11.00 based on the participants with self-reported PA data. Participants with poor wear quality and missing calibration coefficients are not included in the table. P values were calculated using the Kolmogorov-Smirnov test for continuous variables and the χ2 test for categorical variables. The overlapping group refers to individuals who were included in the self-reported analysis and also had sufficient-quality accelerometer recordings. BMI, Body Mass Index; HF, heart failure; PA, physical activity. The mean age/sex-adjusted self-reported PA level per week was 26.5 (95% CI 24.7 to 28.4) MET-hours per week for participants with diagnosed HF vs 34.7 (95% CI 34.5 to 34.9) MET-hours per week for participants without any prior diagnosis of HF (p<0.01) (see figure 2). The results did not change substantially when the model was further adjusted for BMI, alcohol consumption, smoking status and social deprivation score (table 2). Both times since first and last HF-related hospitalisation did not significantly affect PA levels reported by patients with HF either (table 3). According to the self-reported data, patients with HF spent less time in all types of reported PA, including walking and moderate and vigorous PAs (figure 3A).
Figure 2

Flowchart of the participants included in the baseline and accelerometer analyses. Some participants included in the accelerometer analysis did not provide self-reported activity data at baseline; others developed HF in the period between baseline assessment and accelerometer recording. Participants falling into both the baseline and accelerometer analysis groups (overlapping analysis) were included in a separate sensitivity analysis. HF, heart failure.

Table 2

Comparison of mean daily PA in patients with versus without HF with cumulative adjustments for covariates

ModelHF mean PA (CI)No HF mean PA (CI)P value of HF status
Self-reported (in METs)
 Baseline (age and sex, HF)26.5 (24.7 to 28.4)34.7 (34.5 to 34.9)<0.001
 Baseline+ethnicity26.6 (24.7 to 28.4)34.7 (34.5 to 34.9)<0.001
 Baseline+BMI28.2 (26.4 to 30.1)34.7 (34.5 to 34.9)<0.001
 Baseline+alcohol status26.5 (24.6 to 28.3)34.7 (34.5 to 34.9)<0.001
 Baseline+smoking status26.4 (24.5 to 28.2)34.7 (34.5 to 34.9)<0.001
 Baseline+Townsend26.1 (24.3 to 28.0)34.7 (34.5 to 34.9)<0.001
 Baseline+all of the above27.7 (25.8 to 30.0)34.7 (34.4 to 35.0)<0.001
Accelerometer-derived (in milligravity)
 Baseline (age and sex, HF)23.7 (23.1 to 24.4)28.1 (28.0 to 28.1)<0.001
 Baseline+ethnicity23.7 (23.1 to 24.4)28.1 (28.0 to 28.2)<0.001
 Baseline+BMI24.7 (24.0 to 25.3)28.1 (28.0 to 28.2)<0.001
 Baseline+alcohol status23.7 (23.1 to 24.4)28.1 (28.0 to 28.1)<0.001
 Baseline +smoking status23.7 (23.1 to 24.4)28.1 (28.0 to 28.2)<0.001
 Baseline+Townsend23.8 (23.1 to 24.4)28.1 (28.0 to 28.2)<0.001
 Baseline+all of the above24.7 (24.1 to 25.4)28.1 (27.9 to 28.2)<0.001

P values are reported for HF status adjusted for the listed covariates.

BMI, Body Mass Index; HF, heart failure; MET, metabolic equivalent of task; PA, physical activity.

Table 3

Secondary analysis: adjusting for time since first and last hospitalisation

ModelP value of ‘time since’ variable
Self-reported
 Baseline+time since first diagnosis0.29
My Baseline+time since last hospitalisation0.65
 Baseline+time since last primary hospitalisation0.91
Accelerometer-derived
 Within HF
 Baseline+time since first diagnosis0.69
 Baseline+time since last hospitalisation0.10
 Baseline+time since last primary hospitalisation0.58

The baseline model includes age, sex and HF status as input variables.

HF, heart failure.

Figure 3

Comparison of self-reported (p<0.001) and accelerometer-derived (p<0.001) physical activityPA in participants with or without heart failureHF. Shaded areas depict unadjusted physical activityPA distributions and dashed lines show age-adjusted/sex-adjusted mean physical activityPA. HF, heart failure; MET, metabolic equivalent of task; PA, physical activity.

Flowchart of the participants included in the baseline and accelerometer analyses. Some participants included in the accelerometer analysis did not provide self-reported activity data at baseline; others developed HF in the period between baseline assessment and accelerometer recording. Participants falling into both the baseline and accelerometer analysis groups (overlapping analysis) were included in a separate sensitivity analysis. HF, heart failure. Comparison of mean daily PA in patients with versus without HF with cumulative adjustments for covariates P values are reported for HF status adjusted for the listed covariates. BMI, Body Mass Index; HF, heart failure; MET, metabolic equivalent of task; PA, physical activity. Secondary analysis: adjusting for time since first and last hospitalisation The baseline model includes age, sex and HF status as input variables. HF, heart failure. Comparison of self-reported (p<0.001) and accelerometer-derived (p<0.001) physical activityPA in participants with or without heart failureHF. Shaded areas depict unadjusted physical activityPA distributions and dashed lines show age-adjusted/sex-adjusted mean physical activityPA. HF, heart failure; MET, metabolic equivalent of task; PA, physical activity. During the assessment, participants with diagnosed HF wore their accelerometers for a median of 6.9 (25th and 75th percentiles 6.8 and 7.0, respectively). Participants without HF wore the devices for an average of 6.9 (6.7 and 7.0) days. The mean acceleration values were significantly higher in participants without HF than those with HF (28.1 (95% CI 28.0 to 28.1) milligravity vs 23.7 (95% CI 23.1 to 24.4) milligravity, respectively; p<0.001) (figure 2). This result did not change when additional potential covariates were adjusted for (table 2). The age/sex-adjusted analysis of the percentage time spent within certain PA intensities showed that patients with HF spent a larger proportion of time sedentary and less time in light, moderate and vigorous PAs (figure 3b). The analysis of hourly mean acceleration values showed that patients with HF were significantly less active throughout the entire day (figure 3c). Between the hours of 06:00 and 19:00, participants without HF achieved approximately 20% higher mean acceleration per hour than HF participants when adjusting for age and sex. Median times since first HF-related hospitalisation were 3.6 (95% CI 1.6 to 6.1) years for the self-reported analysis and 4.2 (95% CI 2.0 to 8.2) years for the accelerometer analysis. Median times since last hospitalisation were 2.9 (95% CI 1.2 to 5.5) years and 3.3 (95% CI 1.3 to 6.9) years, respectively. The time since first report of HF or since last HF-related hospitalisation did not have a significant impact on the mean acceleration values measured (table 3). The results of the sensitivity analysis, restricting the comparisons to the overlapping group of participants who had HF at baseline and adjusting for age and sex, were broadly consistent with our main results (online supplementary figure S1).

Discussion

Our analysis of PA levels in the UK Biobank population showed that both perceived and objectively measured PA levels of patients with HF were significantly reduced in comparison with people without HF. The accelerometer-derived PA comparison showed that individuals with HF were on average 16% less physically active than individuals without a prior diagnosis of HF. This is in agreement with, although slightly lower than, previous findings from small-scale studies, which suggested that patients with HF are 44%–65% less physically active (based on step counts/movement-related activity) than individuals without HF.9 13 23 24 Moreover, our study extends previous studies and shows that the average lower-level of PA was not due to a reduction in more intense types of activities but due to a generally less active lifestyle throughout the day, with peak differences occurring between 06:00 and 20:00. To our knowledge, this is the first study giving an insight into HF PA levels throughout the day. Past studies have shown that self-reported PA levels are low to moderately correlated with objectively recorded PA levels25 26 and may be affected by socioeconomic factors.27 Despite this, the general message of both the self-reported (perceived) and accelerometer-derived (objective) measurements investigated as part of this analysis was consistent. However, accelerometer recordings can provide a more detailed and precise assessment of activity levels of patients with HF throughout the day and over time. PA levels of patients with HF within this cohort were not significantly affected by time after diagnosis of HF. These results contrast with findings by Miura et al,2 who studied self-reported PA levels in 4500 Japanese patients with HF and found that less than 30% of patients with HF managed to maintain their self-reported PA levels over a 1.4year time span. Both selection and survival bias intrinsic to the UK Biobank accelerometer data might have distorted the measured effect of time since first and last HF-related hospitalisations on PA levels. Further studies will therefore be needed to quantify the degree and determinants of change in PA over time. Limitations of this study include its cross-sectional nature and the fact that both the self-reported and accelerometer data provided by the UK Biobank might be affected by selection bias, resulting in a healthier than normal study population represented in this analysis.28 This would lead to a sample not representative of the HF population at large. Thus, our findings may be more applicable to patients with less severe chronic HF. In summary, our results show that perceived and objectively recorded PA levels of patients with chronic HF are significantly lower than those of individuals without HF. This difference is continuous throughout the different hours of the day and suggests that increases in everyday activity may be a potential alternative to structured exercise programmes.
  23 in total

1.  International physical activity questionnaire: 12-country reliability and validity.

Authors:  Cora L Craig; Alison L Marshall; Michael Sjöström; Adrian E Bauman; Michael L Booth; Barbara E Ainsworth; Michael Pratt; Ulf Ekelund; Agneta Yngve; James F Sallis; Pekka Oja
Journal:  Med Sci Sports Exerc       Date:  2003-08       Impact factor: 5.411

2.  Level of Activities Associated With Mobility During Everyday Life in Patients With Chronic Congestive Heart Failure as Measured With an "Activity Monitor".

Authors:  Hendrika Rita van den Berg-Emons; Johannes Hans Bussmann; Aggie Balk; Dorinde Keijzer-Oster; Henk Stam
Journal:  Phys Ther       Date:  2001-09-01

3.  Physical Functioning, Physical Activity, Exercise Self-Efficacy, and Quality of Life Among Individuals With Chronic Heart Failure in Korea: A Cross-Sectional Descriptive Study.

Authors:  Haejung Lee; Sunjoo Boo; Jihyoung Yu; Soon-Rim Suh; Kook Jin Chun; Jong Hyun Kim
Journal:  J Nurs Res       Date:  2017-04       Impact factor: 1.682

4.  Relation of daily activity levels in patients with chronic heart failure to long-term prognosis.

Authors:  J T Walsh; A Charlesworth; R Andrews; M Hawkins; A J Cowley
Journal:  Am J Cardiol       Date:  1997-05-15       Impact factor: 2.778

5.  What influences physical activity in people with heart failure?: a qualitative study.

Authors:  Stephanie Tierney; Heather Elwers; Chandbi Sange; Mamas Mamas; Martin K Rutter; Martin Gibson; Ludwig Neyses; Christi Deaton
Journal:  Int J Nurs Stud       Date:  2011-04-03       Impact factor: 5.837

6.  Daily walking performance as an independent predictor of advanced heart failure: Prediction of exercise capacity in chronic heart failure.

Authors:  Melissa Jehn; Arno Schmidt-Trucksäss; Tibor Schuster; Michael Weis; Henner Hanssen; Martin Halle; Friedrich Koehler
Journal:  Am Heart J       Date:  2009-02       Impact factor: 4.749

7.  Reduced customary activity in chronic heart failure: assessment with a new shoe-mounted pedometer.

Authors:  D J Hoodless; K Stainer; N Savic; P Batin; M Hawkins; A J Cowley
Journal:  Int J Cardiol       Date:  1994-01       Impact factor: 4.164

8.  Association between physical activity and body fat percentage, with adjustment for BMI: a large cross-sectional analysis of UK Biobank.

Authors:  Kathryn E Bradbury; Wenji Guo; Benjamin J Cairns; Miranda E G Armstrong; Timothy J Key
Journal:  BMJ Open       Date:  2017-03-24       Impact factor: 2.692

9.  Physical activity of UK adults with chronic disease: cross-sectional analysis of accelerometer-measured physical activity in 96 706 UK Biobank participants.

Authors:  Joseph Barker; Karl Smith Byrne; Aiden Doherty; Charlie Foster; Kazem Rahimi; Rema Ramakrishnan; Mark Woodward; Terence Dwyer
Journal:  Int J Epidemiol       Date:  2019-08-01       Impact factor: 7.196

10.  A comparison of direct versus self-report measures for assessing physical activity in adults: a systematic review.

Authors:  Stéphanie A Prince; Kristi B Adamo; Meghan E Hamel; Jill Hardt; Sarah Connor Gorber; Mark Tremblay
Journal:  Int J Behav Nutr Phys Act       Date:  2008-11-06       Impact factor: 6.457

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Journal:  Mayo Clin Proc       Date:  2022-06-23       Impact factor: 11.104

2.  Physical activity, sedentary behaviors and all-cause mortality in patients with heart failure: Findings from the NHANES 2007-2014.

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4.  Using Wearable Activity Trackers to Predict Type 2 Diabetes: Machine Learning-Based Cross-sectional Study of the UK Biobank Accelerometer Cohort.

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Journal:  Sensors (Basel)       Date:  2021-12-09       Impact factor: 3.576

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7.  Perceived barriers and enablers influencing physical activity in heart failure: A qualitative one-to-one interview study.

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8.  Objectively measured adherence to physical activity among patients with coronary artery disease: Comparison of the 2010 and 2020 World Health Organization guidelines and daily steps.

Authors:  Prisca Eser; Nathalia Gonzalez-Jaramillo; Selina Weber; Jan Fritsche; Riccardo Femiano; Charlotte Werner; Flurina Casanova; Arjola Bano; Oscar H Franco; Matthias Wilhelm
Journal:  Front Cardiovasc Med       Date:  2022-09-28

9.  Prognostic impact of physical activity patterns after percutaneous coronary intervention. Protocol for a prospective longitudinal cohort. The PIPAP study.

Authors:  Nathalia Gonzalez-Jaramillo; Prisca Eser; Flurina Casanova; Arjola Bano; Oscar H Franco; Stephan Windecker; Lorenz Räber; Matthias Wilhelm
Journal:  Front Cardiovasc Med       Date:  2022-09-30

Review 10.  Exercise: a molecular tool to boost muscle growth and mitochondrial performance in heart failure?

Authors:  Kirsten T Nijholt; Pablo I Sánchez-Aguilera; Suzanne N Voorrips; Rudolf A de Boer; B Daan Westenbrink
Journal:  Eur J Heart Fail       Date:  2022-01-09       Impact factor: 17.349

  10 in total

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