LGMLJan 31, 2019

Toward Sensor-based Sleep Monitoring with Electrodermal Activity Measures

arXiv:1901.11440v121 citations
Originality Synthesis-oriented
AI Analysis

This work addresses sleep monitoring for health applications but is incremental due to small sample size and limitations in detecting small changes in sleep quality.

The study tackled the problem of using electrodermal activity (EDA) data from wearable sensors for sleep monitoring by analyzing data from 77 nights on six participants, finding that EDA Magnitude strongly predicts sleep efficiency and shows promise for sleep quality classification.

We use self-report and electrodermal activity (EDA) wearable sensor data from 77 nights of sleep on six participants to test the efficacy of EDA data for sleep monitoring. We used factor analysis to find latent factors in the EDA data, and causal model search to find the most probable graphical model accounting for self-reported sleep efficiency (SE), sleep quality (SQ), and the latent EDA factors. Structural equation modeling was used to confirm fit of the extracted graph. Based on the generated graph, logistic regression and naive Bayes models were used to test the efficacy of the EDA data in predicting SE and SQ. Six EDA features extracted from the total signal over a night's sleep could be explained by two latent factors, EDA Magnitude and EDA Storms. EDA Magnitude performed as a strong predictor for SE to aid detection of substantial changes in time asleep. The performance of EDA Magnitured and SE in classifying SQ showed promise for wearable sleep monitoring applications. However, our data suggest that obtaining a more accurate sensor-based measure of SE will be necessary before smaller changes in SQ can be detected from EDA sensor data alone.

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