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Enhanced multi-source data analysis for personalized sleep-wake pattern recognition and sleep parameter extraction

Published: 06 September 2020 Publication History

Abstract

Sleep behavior is traditionally monitored with polysomnography, and sleep stage patterns are a key marker for sleep quality used to detect anomalies and diagnose diseases. With the growing demand for personalized healthcare and the prevalence of the Internet of Things, there is a trend to use everyday technologies for sleep behavior analysis at home, having the potential to eliminate expensive in-hospital monitoring. In this paper, we conceived a multi-source data mining approach to personalized sleep-wake pattern recognition which uses physiological data and personal information to facilitate fine-grained detection. Physiological data includes actigraphy and heart rate variability and personal data makes use of gender, health status, and race information which are known influence factors. Moreover, we developed a personalized sleep parameter extraction technique fused with the sleep-wake approach, achieving personalized instead of static thresholds for decision-making. Results show that the proposed approach improves the accuracy of sleep and wake stage recognition, therefore offering a new solution for personalized sleep-based health monitoring.

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Published In

cover image Personal and Ubiquitous Computing
Personal and Ubiquitous Computing  Volume 28, Issue 1
Feb 2024
368 pages

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Springer-Verlag

Berlin, Heidelberg

Publication History

Published: 06 September 2020
Accepted: 19 August 2020
Received: 30 October 2019

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  • European Union’s Horizon 2020 research andinnovation program

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