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Published in: Translational Behavioral Medicine 4/2017

01-12-2017 | Original Research

Adherence with physical activity monitoring wearable devices in a community-based population: observations from the Washington, D.C., Cardiovascular Health and Needs Assessment

Authors: Leah R Yingling, BS, Valerie Mitchell, BA, Colby R Ayers, MS, Marlene Peters-Lawrence, RN, Gwenyth R Wallen, RN, PhD, Alyssa T Brooks, PhD, James F. Troendle, PhD, Joel Adu-Brimpong, BS, Samantha Thomas, BS, JaWanna Henry, MPH, Johnetta N Saygbe, BS, Dana M Sampson, MS, MBA, Allan A Johnson, PhD, Avis P Graham, PhD, RD, LDN, Lennox A Graham, DM, Kenneth L Wiley Jr, PhD, Tiffany Powell-Wiley, MD, MPH

Published in: Translational Behavioral Medicine | Issue 4/2017

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Abstract

Wearable mobile health (mHealth) technologies offer approaches for targeting physical activity (PA) in resource-limited, community-based interventions. We sought to explore user characteristics of PA tracking, wearable technology among a community-based population within a health and needs assessment. In 2014–2015, we conducted the Washington, D.C., Cardiovascular Health and Needs Assessment in predominantly African-American churches among communities with higher obesity rates and lower household incomes. Participants received a mHealth PA monitor and wirelessly uploaded PA data weekly to church data collection hubs. Participants (n = 99) were 59 ± 12 years, 79% female, and 99% African-American, with a mean body mass index of 33 ± 7 kg/m2. Eighty-one percent of participants uploaded PA data to the hub and were termed “PA device users.” Though PA device users were more likely to report lower household incomes, no differences existed between device users and non-users for device ownership or technology fluency. Findings suggest that mHealth systems with a wearable device and data collection hub may feasibly target PA in resource-limited communities.
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Metadata
Title
Adherence with physical activity monitoring wearable devices in a community-based population: observations from the Washington, D.C., Cardiovascular Health and Needs Assessment
Authors
Leah R Yingling, BS
Valerie Mitchell, BA
Colby R Ayers, MS
Marlene Peters-Lawrence, RN
Gwenyth R Wallen, RN, PhD
Alyssa T Brooks, PhD
James F. Troendle, PhD
Joel Adu-Brimpong, BS
Samantha Thomas, BS
JaWanna Henry, MPH
Johnetta N Saygbe, BS
Dana M Sampson, MS, MBA
Allan A Johnson, PhD
Avis P Graham, PhD, RD, LDN
Lennox A Graham, DM
Kenneth L Wiley Jr, PhD
Tiffany Powell-Wiley, MD, MPH
Publication date
01-12-2017
Publisher
Springer US
Published in
Translational Behavioral Medicine / Issue 4/2017
Print ISSN: 1869-6716
Electronic ISSN: 1613-9860
DOI
https://doi.org/10.1007/s13142-016-0454-0

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