Title
Collecting and Analyzing Millions of mHealth Data Streams
Abstract
Players across the health ecosystem are initiating studies of thousands, even millions, of participants to gather diverse types of data, including biomedical, behavioral, and lifestyle in order to advance medical research. These efforts to collect multi-modal data sets on large cohorts coincide with the rise of broad activity and behavior tracking across industries, particularly in healthcare and the growing field of mobile health (mHealth). Government and pharmaceutical sponsored, as well as patient-driven group studies in this arena leverage the ability of mobile technology to continuously track behaviors and environmental factors with minimal participant burden. However, the adoption of mHealth has been constrained by the lack of robust solutions for large-scale data collection in free-living conditions and concerns around data quality. In this work, we describe the infrastructure Evidation Health has developed to collect mHealth data from millions of users through hundreds of different mobile devices and apps. Additionally, we provide evidence of the utility of the data for inferring individual traits pertaining to health, wellness, and behavior. To this end, we introduce and evaluate deep neural network models that achieve high prediction performance without requiring any feature engineering when trained directly on the densely sampled multivariate mHealth time series data. We believe that the present work substantiates both the feasibility and the utility of creating a very large mHealth research cohort, as envisioned by the many large cohort studies currently underway across therapeutic areas and conditions.
Year
DOI
Venue
2017
10.1145/3097983.3098201
KDD
Keywords
Field
DocType
mHealth,wearables,time series,neural networks
Health care,Data science,Mobile technology,Data mining,Data collection,Data quality,Computer science,mHealth,Feature engineering,Mobile device,Government
Conference
ISBN
Citations 
PageRank 
978-1-4503-4887-4
3
0.39
References 
Authors
14
4
Name
Order
Citations
PageRank
Tom Quisel130.73
Luca Foschini288489.16
Alessio Signorini340.82
David Kale422013.58