Best practices for analyzing large-scale health data from wearables and smartphone apps

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作者
Jennifer L. Hicks
Tim Althoff
Rok Sosic
Peter Kuhar
Bojan Bostjancic
Abby C. King
Jure Leskovec
Scott L. Delp
机构
[1] Stanford University,Department of Bioengineering
[2] University of Washington,Paul G. Allen School of Computer Science & Engineering
[3] Stanford University,Computer Science Department
[4] Azumio,Department of Health Research and Policy
[5] Inc.,Stanford Prevention Research Center, Department of Medicine
[6] Stanford University School of Medicine,Department of Mechanical Engineering
[7] Stanford University School of Medicine,undefined
[8] Chan Zuckerberg Biohub,undefined
[9] Stanford University,undefined
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摘要
Smartphone apps and wearable devices for tracking physical activity and other health behaviors have become popular in recent years and provide a largely untapped source of data about health behaviors in the free-living environment. The data are large in scale, collected at low cost in the “wild”, and often recorded in an automatic fashion, providing a powerful complement to traditional surveillance studies and controlled trials. These data are helping to reveal, for example, new insights about environmental and social influences on physical activity. The observational nature of the datasets and collection via commercial devices and apps pose challenges, however, including the potential for measurement, population, and/or selection bias, as well as missing data. In this article, we review insights gleaned from these datasets and propose best practices for addressing the limitations of large-scale data from apps and wearables. Our goal is to enable researchers to effectively harness the data from smartphone apps and wearable devices to better understand what drives physical activity and other health behaviors.
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