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Five Million Nights: Temporal Representations in Anomaly Detection Algorithms for Wearable Health

August 27 @ 6:00 PM - 7:00 PM

Wearable health devices are widely adopted tools that continuously collect physiological data, and thus make possible passive, continuous, data-driven assessments of people’s health. Algorithms can detect acute illnesses, like COVID-19, by distinguishing physiological time series data that contains anomalous patterns, often during sleep, from presumably healthy, stable baseline data. However, some individuals’ baseline states contain shifts and fluctuations that can look like anomalous patterns but are actually dynamic characteristics of that individual’s baseline. Precision dropped substantially (-23.4% in AUC) for individuals with dynamic baselines in COVID-19 detection experiments because anomaly detection algorithms are designed to rely on the stability of baseline states. We used 5 million nights of sleep data to investigate new approaches to modeling dynamic baselines and show our temporal model improves separability by 4-10x across acute health conditions (COVID-19, flu, and fever). With this model, we drastically recovered performance (+19.4% in AUC) with large reduction in false positive errors. Modeling how people are dynamic over time is essential not only to identifying anomalous health states but also to building robust health monitoring systems in the real world, where people are inherently dynamic, and empowering individuals to take data-informed actions that meaningfully preserve their health. Speaker(s): Varun Virtual: https://events.vtools.ieee.org/m/497194

Details

Date:
August 27
Time:
6:00 PM - 7:00 PM
Website:
https://events.vtools.ieee.org/m/497194