Adherence of Mobile App-Based Surveys and Comparison With Traditional Surveys: eCohort Study

BackgroundeCohort studies offer an efficient approach for data collection. However, eCohort studies are challenged by volunteer bias and low adherence. We designed an eCohort embedded in the Framingham Heart Study (eFHS) to address these challenges and to compare the digital...

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Main Authors: Pathiravasan, Chathurangi H, Zhang, Yuankai, Trinquart, Ludovic, Benjamin, Emelia J, Borrelli, Belinda, McManus, David D, Kheterpal, Vik, Lin, Honghuang, Sardana, Mayank, Hammond, Michael M, Spartano, Nicole L, Dunn, Amy L, Schramm, Eric, Nowak, Christopher, Manders, Emily S, Liu, Hongshan, Kornej, Jelena, Liu, Chunyu, Murabito, Joanne M
Format: Article
Language:English
Published: JMIR Publications 2021-01-01
Series:Journal of Medical Internet Research
Online Access:http://www.jmir.org/2021/1/e24773/
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spelling doaj-f6819a15ea004bedbbac24e3eb73074e2021-04-02T18:41:09ZengJMIR PublicationsJournal of Medical Internet Research1438-88712021-01-01231e2477310.2196/24773Adherence of Mobile App-Based Surveys and Comparison With Traditional Surveys: eCohort StudyPathiravasan, Chathurangi HZhang, YuankaiTrinquart, LudovicBenjamin, Emelia JBorrelli, BelindaMcManus, David DKheterpal, VikLin, HonghuangSardana, MayankHammond, Michael MSpartano, Nicole LDunn, Amy LSchramm, EricNowak, ChristopherManders, Emily SLiu, HongshanKornej, JelenaLiu, ChunyuMurabito, Joanne M BackgroundeCohort studies offer an efficient approach for data collection. However, eCohort studies are challenged by volunteer bias and low adherence. We designed an eCohort embedded in the Framingham Heart Study (eFHS) to address these challenges and to compare the digital data to traditional data collection. ObjectiveThe aim of this study was to evaluate adherence of the eFHS app-based surveys deployed at baseline (time of enrollment in the eCohort) and every 3 months up to 1 year, and to compare baseline digital surveys with surveys collected at the research center. MethodsWe defined adherence rates as the proportion of participants who completed at least one survey at a given 3-month period and computed adherence rates for each 3-month period. To evaluate agreement, we compared several baseline measures obtained in the eFHS app survey to those obtained at the in-person research center exam using the concordance correlation coefficient (CCC). ResultsAmong the 1948 eFHS participants (mean age 53, SD 9 years; 57% women), we found high adherence to baseline surveys (89%) and a decrease in adherence over time (58% at 3 months, 52% at 6 months, 41% at 9 months, and 40% at 12 months). eFHS participants who returned surveys were more likely to be women (adjusted odds ratio [aOR] 1.58, 95% CI 1.18-2.11) and less likely to be smokers (aOR 0.53, 95% CI 0.32-0.90). Compared to in-person exam data, we observed moderate agreement for baseline app-based surveys of the Physical Activity Index (mean difference 2.27, CCC=0.56), and high agreement for average drinks per week (mean difference 0.54, CCC=0.82) and depressive symptoms scores (mean difference 0.03, CCC=0.77). ConclusionsWe observed that eFHS participants had a high survey return at baseline and each 3-month survey period over the 12 months of follow up. We observed moderate to high agreement between digital and research center measures for several types of surveys, including physical activity, depressive symptoms, and alcohol use. Thus, this digital data collection mechanism is a promising tool to collect data related to cardiovascular disease and its risk factors.http://www.jmir.org/2021/1/e24773/
collection DOAJ
language English
format Article
sources DOAJ
author Pathiravasan, Chathurangi H
Zhang, Yuankai
Trinquart, Ludovic
Benjamin, Emelia J
Borrelli, Belinda
McManus, David D
Kheterpal, Vik
Lin, Honghuang
Sardana, Mayank
Hammond, Michael M
Spartano, Nicole L
Dunn, Amy L
Schramm, Eric
Nowak, Christopher
Manders, Emily S
Liu, Hongshan
Kornej, Jelena
Liu, Chunyu
Murabito, Joanne M
spellingShingle Pathiravasan, Chathurangi H
Zhang, Yuankai
Trinquart, Ludovic
Benjamin, Emelia J
Borrelli, Belinda
McManus, David D
Kheterpal, Vik
Lin, Honghuang
Sardana, Mayank
Hammond, Michael M
Spartano, Nicole L
Dunn, Amy L
Schramm, Eric
Nowak, Christopher
Manders, Emily S
Liu, Hongshan
Kornej, Jelena
Liu, Chunyu
Murabito, Joanne M
Adherence of Mobile App-Based Surveys and Comparison With Traditional Surveys: eCohort Study
Journal of Medical Internet Research
author_facet Pathiravasan, Chathurangi H
Zhang, Yuankai
Trinquart, Ludovic
Benjamin, Emelia J
Borrelli, Belinda
McManus, David D
Kheterpal, Vik
Lin, Honghuang
Sardana, Mayank
Hammond, Michael M
Spartano, Nicole L
Dunn, Amy L
Schramm, Eric
Nowak, Christopher
Manders, Emily S
Liu, Hongshan
Kornej, Jelena
Liu, Chunyu
Murabito, Joanne M
author_sort Pathiravasan, Chathurangi H
title Adherence of Mobile App-Based Surveys and Comparison With Traditional Surveys: eCohort Study
title_short Adherence of Mobile App-Based Surveys and Comparison With Traditional Surveys: eCohort Study
title_full Adherence of Mobile App-Based Surveys and Comparison With Traditional Surveys: eCohort Study
title_fullStr Adherence of Mobile App-Based Surveys and Comparison With Traditional Surveys: eCohort Study
title_full_unstemmed Adherence of Mobile App-Based Surveys and Comparison With Traditional Surveys: eCohort Study
title_sort adherence of mobile app-based surveys and comparison with traditional surveys: ecohort study
publisher JMIR Publications
series Journal of Medical Internet Research
issn 1438-8871
publishDate 2021-01-01
description BackgroundeCohort studies offer an efficient approach for data collection. However, eCohort studies are challenged by volunteer bias and low adherence. We designed an eCohort embedded in the Framingham Heart Study (eFHS) to address these challenges and to compare the digital data to traditional data collection. ObjectiveThe aim of this study was to evaluate adherence of the eFHS app-based surveys deployed at baseline (time of enrollment in the eCohort) and every 3 months up to 1 year, and to compare baseline digital surveys with surveys collected at the research center. MethodsWe defined adherence rates as the proportion of participants who completed at least one survey at a given 3-month period and computed adherence rates for each 3-month period. To evaluate agreement, we compared several baseline measures obtained in the eFHS app survey to those obtained at the in-person research center exam using the concordance correlation coefficient (CCC). ResultsAmong the 1948 eFHS participants (mean age 53, SD 9 years; 57% women), we found high adherence to baseline surveys (89%) and a decrease in adherence over time (58% at 3 months, 52% at 6 months, 41% at 9 months, and 40% at 12 months). eFHS participants who returned surveys were more likely to be women (adjusted odds ratio [aOR] 1.58, 95% CI 1.18-2.11) and less likely to be smokers (aOR 0.53, 95% CI 0.32-0.90). Compared to in-person exam data, we observed moderate agreement for baseline app-based surveys of the Physical Activity Index (mean difference 2.27, CCC=0.56), and high agreement for average drinks per week (mean difference 0.54, CCC=0.82) and depressive symptoms scores (mean difference 0.03, CCC=0.77). ConclusionsWe observed that eFHS participants had a high survey return at baseline and each 3-month survey period over the 12 months of follow up. We observed moderate to high agreement between digital and research center measures for several types of surveys, including physical activity, depressive symptoms, and alcohol use. Thus, this digital data collection mechanism is a promising tool to collect data related to cardiovascular disease and its risk factors.
url http://www.jmir.org/2021/1/e24773/
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