From Personalized Medicine to Population Health: A Survey of mHealth Sensing Techniques
Zhiyuan Wang, Haoyi Xiong, Jie Zhang, Sijia Yang, Mehdi Boukhechba,, Laura E. Barnes, Daqing Zhang, Dejing Dou

TL;DR
This survey reviews mobile health sensing techniques, categorizing apps into personal and crowd sensing paradigms, and proposes a taxonomy to analyze their design and potential future directions for personalized and population health.
Contribution
It introduces a novel taxonomy system for classifying mobile health sensing apps based on their lifecycle components and sensing paradigms.
Findings
Categorizes mobile sensing apps into Personal and Crowd Sensing paradigms.
Proposes a taxonomy system for classifying app design and data processing.
Summarizes typical app designs and suggests future research directions.
Abstract
Mobile Sensing Apps have been widely used as a practical approach to collect behavioral and health-related information from individuals and provide timely intervention to promote health and well-beings, such as mental health and chronic cares. As the objectives of mobile sensing could be either \emph{(a) personalized medicine for individuals} or \emph{(b) public health for populations}, in this work we review the design of these mobile sensing apps, and propose to categorize the design of these apps/systems in two paradigms -- \emph{(i) Personal Sensing} and \emph{(ii) Crowd Sensing} paradigms. While both sensing paradigms might incorporate with common ubiquitous sensing technologies, such as wearable sensors, mobility monitoring, mobile data offloading, and/or cloud-based data analytics to collect and process sensing data from individuals, we present a novel taxonomy system with two…
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