Long-term participant retention and engagement patterns in an app and wearable-based multinational remote digital depression study
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Published:2023-02-17
Issue:1
Volume:6
Page:
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ISSN:2398-6352
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Container-title:npj Digital Medicine
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language:en
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Short-container-title:npj Digit. Med.
Author:
Zhang YuezhouORCID, Pratap AbhishekORCID, Folarin Amos A.ORCID, Sun ShaoxiongORCID, Cummins NicholasORCID, Matcham Faith, Vairavan SrinivasanORCID, Dineley Judith, Ranjan YatharthORCID, Rashid Zulqarnain, Conde Pauline, Stewart Callum, White Katie M., Oetzmann CarolinORCID, Ivan Alina, Lamers Femke, Siddi Sara, Rambla Carla HernándezORCID, Simblett SaraORCID, Nica Raluca, Mohr David C.ORCID, Myin-Germeys Inez, Wykes TilORCID, Haro Josep Maria, Penninx Brenda W. J. H., Annas PeterORCID, Narayan Vaibhav A., Hotopf Matthew, Dobson Richard J. B.ORCID,
Abstract
AbstractRecent growth in digital technologies has enabled the recruitment and monitoring of large and diverse populations in remote health studies. However, the generalizability of inference drawn from remotely collected health data could be severely impacted by uneven participant engagement and attrition over the course of the study. We report findings on long-term participant retention and engagement patterns in a large multinational observational digital study for depression containing active (surveys) and passive sensor data collected via Android smartphones, and Fitbit devices from 614 participants for up to 2 years. Majority of participants (67.6%) continued to remain engaged in the study after 43 weeks. Unsupervised clustering of participants’ study apps and Fitbit usage data showed 3 distinct engagement subgroups for each data stream. We found: (i) the least engaged group had the highest depression severity (4 PHQ8 points higher) across all data streams; (ii) the least engaged group (completed 4 bi-weekly surveys) took significantly longer to respond to survey notifications (3.8 h more) and were 5 years younger compared to the most engaged group (completed 20 bi-weekly surveys); and (iii) a considerable proportion (44.6%) of the participants who stopped completing surveys after 8 weeks continued to share passive Fitbit data for significantly longer (average 42 weeks). Additionally, multivariate survival models showed participants’ age, ownership and brand of smartphones, and recruitment sites to be associated with retention in the study. Together these findings could inform the design of future digital health studies to enable equitable and balanced data collection from diverse populations.
Funder
Innovative Medicines Initiative
Publisher
Springer Science and Business Media LLC
Subject
Health Information Management,Health Informatics,Computer Science Applications,Medicine (miscellaneous)
Reference76 articles.
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