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Using smart phone mobility traces for the diagnosis of depressive and manic episodes in bipolar patients

Published:07 March 2014Publication History

ABSTRACT

In this paper we demonstrate how smart phone sensors, specifically inertial sensors and GPS traces, can be used as an objective "measurement device" for aiding psychiatric diagnosis. In a trial with 12 bipolar disorder patients conducted over a total (summed over all patients) of over 1000 days (on average 12 weeks per patient) we have achieved state change detection with a precision/recall of 96%/94% and state recognition accuracy of 80%. The paper describes the data collection, which was conducted as a medical trial in a real life every day environment in a rural area, outlines the recognition methods, and discusses the results.

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  1. Using smart phone mobility traces for the diagnosis of depressive and manic episodes in bipolar patients

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        cover image ACM Other conferences
        AH '14: Proceedings of the 5th Augmented Human International Conference
        March 2014
        249 pages
        ISBN:9781450327619
        DOI:10.1145/2582051

        Copyright © 2014 ACM

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        New York, NY, United States

        Publication History

        • Published: 7 March 2014

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