A Bayesian Circadian Hidden Markov Model to Infer Rest-Activity Rhythms Using 24-hour Actigraphy Data
Jiachen Lu, Qian Xiao, Cici Bauer

TL;DR
This paper introduces a Bayesian Circadian Hidden Markov Model that leverages 24-hour actigraphy data to accurately infer rest-activity rhythms and their health implications, outperforming traditional methods especially with limited data.
Contribution
The study presents a novel Bayesian HMM incorporating circadian oscillators for analyzing 24-hour activity data, improving state identification and health risk assessment.
Findings
BCHMM outperforms frequentist approaches in state detection.
Worsened RAR correlates with higher diabetes risk.
Model effectively captures 24-hour activity patterns.
Abstract
24-hour actigraphy data collected by wearable devices offer valuable insights into physical activity types, intensity levels, and rest-activity rhythms (RAR). RARs, or patterns of rest and activity exhibited over a 24-hour period, are regulated by the body's circadian system, synchronizing physiological processes with external cues like the light-dark cycle. Disruptions to these rhythms, such as irregular sleep patterns, daytime drowsiness or shift work, have been linked to adverse health outcomes including metabolic disorders, cardiovascular disease, depression, and even cancer, making RARs a critical area of health research. In this study, we propose a Bayesian Circadian Hidden Markov Model (BCHMM) that explicitly incorporates 24-hour circadian oscillators mirroring human biological rhythms. The model assumes that observed activity counts are conditional on hidden activity states…
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Taxonomy
TopicsMental Health Research Topics · Circadian rhythm and melatonin · Time Series Analysis and Forecasting
