A novel health risk model based on intraday physical activity time series collected by smartphones
We compiled a demo application and collected a motion database of more than 10,000 smartphone users to produce a health risk model trained on physical activity streams. We turned to adversarial domain adaptation and employed the UK Biobank dataset of motion data, augmented by a rich set of clinical...
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Main Authors | , , , |
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Format | Journal Article |
Language | English |
Published |
06.12.2018
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Subjects | |
Online Access | Get full text |
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Summary: | We compiled a demo application and collected a motion database of more than
10,000 smartphone users to produce a health risk model trained on physical
activity streams. We turned to adversarial domain adaptation and employed the
UK Biobank dataset of motion data, augmented by a rich set of clinical
information as the source domain to train the model using a deep residual
convolutional neuron network (ResNet). The model risk score is a biomarker of
ageing, since it was predictive of lifespan and healthspan (as defined by the
onset of specified diseases), and was elevated in groups associated with
life-shortening lifestyles, such as smoking. We ascertained the target domain
performance in a smaller cohort of the mobile application that included users
who were willing to share answers to a short questionnaire related to their
disease and smoking status. We thus conclude that the proposed pipeline
combining deep convolutional and Domain Adversarial neuron networks (DANN) is a
powerful tool for disease risk and lifestyle-associated hazard assessment from
mobile motion sensors that are transferable across devices and populations. |
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DOI: | 10.48550/arxiv.1812.02522 |