Smartphone Apps May Help Study Cardiovascular Health, Behaviors

In a study published online by JAMA Cardiology, Euan A. Ashley, M.B., Ch.B., D.Phil., of the Stanford University, Stanford, Calif., and colleagues assessed the feasibility of measuring physical activity, fitness, and sleep from smartphones and to gain insight into activity patterns associated with life satisfaction and self-reported disease.

Studies have established the importance of physical activity, fitness, sleep, and diet for cardiovascular health, yet these studies were completed with time-consuming, in-person measurements with substantial reliance on participant recall. Mobile technology, in particular advances in smartphone sensors, offers a new approach to the study of cardiovascular health and fitness. Direct measurement of activity through always-on, low-power motion chips provides a promising alternative to questionnaire-based approaches.

In 2015, Apple Inc. introduced an open-source framework to facilitate clinical research and standardization of data collection. One of the launch smartphone apps for the framework, MyHeart Counts, is a cardiovascular health study administered entirely via smartphone, incorporating direct sensor-based measurements of physical activity and fitness, as well as questionnaire assessment of sleep, lifestyle factors, risk perception, and overall well-being.

From the launch to the time of the data freeze for this study (March to October 2015), the number of individuals (self-selected) who consented to participate was 48,968, representing all 50 states and the District of Columbia. Their median age was 36 years, and 82 percent were male. In total, 40,017 (82 percent of those who consented) uploaded data. Among those who consented, 42 percent completed 4 of the 7 days of motion data collection, and 9 percent completed all 7 days. Among those who consented, 82 percent filled out some portion of the questionnaires, and 10 percent completed the 6-minute walk test, made available only at the end of 7 days.

"Our study found 5 main results. First, we demonstrate the feasibility of consenting and engaging a large population across the United States using only smartphones. Second, we show that large-scale data can be gathered in real time from mobile devices, stored securely, transferred, deidentified, and shared securely, including with participants. Third, we find that a data set for the 6-minute walk test larger than any previously collected could be generated in weeks. Fourth, we report that state transition patterns of activity, not just absolute activity, relate to the reported presence of disease. Fifth, we conclude that there is a poor association between perceived and recorded physical activity, as well as perceived and formally estimated risk," the authors write.

"Most important, we also present the major challenges and limitations of mobile health research, including the skewed age and sex of participants, plus the rapid drop-off in engagement over time, with the resulting loss of data collection for several measures. To realize the promise of this novel approach to population health research, participant engagement needs to be optimized to maximize full participation of those who have expressed at least enough interest to download the app and consent to join the study."

"Large-scale, real-world assessment of physical activity, fitness, and sleep using mobile devices may be a useful addition to future population health studies," the researchers conclude.

McConnell MV, Shcherbina A, Pavlovic A, Homburger JR, Goldfeder RL, Waggot D, Cho MK, Rosenberger ME, Haskell WL, Myers J, Champagne MA, Mignot E, Landray M, Tarassenko L, Harrington RA, Yeung AC, Ashley EA.
Feasibility of Obtaining Measures of Lifestyle From a Smartphone AppThe MyHeart Counts Cardiovascular Health Study.
JAMA Cardiol., doi: 10.1001/jamacardio.2016.4395

The Division of Cardiovascular Medicine, Department of Medicine, Stanford University, received in-kind (software development) support from Apple Inc.

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