Toward Real-Time Circadian Phase Estimation with Low Latency from Wearable Sensing Data
Mengzhu Xu, Nemanja Cabrilo, Merel van Gilst, Jean-Paul Linnartz

TL;DR
This paper presents a low latency, real-time framework for estimating human circadian phase using wearable data, reducing the need for full cycle recordings and enabling edge deployment.
Contribution
It introduces a novel approach that estimates instantaneous circadian phase from short historical data windows, improving real-time monitoring feasibility.
Findings
Estimation accuracy saturates at around 8 hours of data history.
Tree-based models plateau beyond 480 minutes, sequence models benefit from longer history.
Achieved a mean CMAE of 1.19 hours using only light and activity data.
Abstract
Accurate estimation of the human circadian phase plays an important role in personalized health monitoring, but most existing wearable-based approaches operate retrospectively and require full circadian cycle recordings, leading to high estimation latency and substantial data and computational burden for real-time deployment on edge devices. In this study, we investigated whether circadian phase can be estimated in real time using only short historical windows of wearable data. We propose a low latency framework that estimates instantaneous circadian phase from past observations, with a cosinor-fitted core body temperature rhythm serving as the reference. Data from a free-living field study involving 14 participants were used to systematically evaluate the effects of sensor modality selection, historical window length, and model class under participant-based cross-validation. The…
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