Multi-task deep-learning for sleep event detection and stage classification
- URL: http://arxiv.org/abs/2501.09519v1
- Date: Thu, 16 Jan 2025 13:09:37 GMT
- Title: Multi-task deep-learning for sleep event detection and stage classification
- Authors: Adriana Anido-Alonso, Diego Alvarez-Estevez,
- Abstract summary: We propose a multi-task deep-learning approach for the simultaneous detection of sleep events and hypnogram construction in one single pass.
We investigate the performance of the resulting method in identifying different assembly combinations of EEG arousals, respiratory events (apneas and hypopneas) and sleep stages.
- Score: 0.0
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- Abstract: Polysomnographic sleep analysis is the standard clinical method to accurately diagnose and treat sleep disorders. It is an intricate process which involves the manual identification, classification, and location of multiple sleep event patterns. This is complex, for which identification of different types of events involves focusing on different subsets of signals, resulting on an iterative time-consuming process entailing several visual analysis passes. In this paper we propose a multi-task deep-learning approach for the simultaneous detection of sleep events and hypnogram construction in one single pass. Taking as reference state-of-the-art methodology for object-detection in the field of Computer Vision, we reformulate the problem for the analysis of multi-variate time sequences, and more specifically for pattern detection in the sleep analysis scenario. We investigate the performance of the resulting method in identifying different assembly combinations of EEG arousals, respiratory events (apneas and hypopneas) and sleep stages, also considering different input signal montage configurations. Furthermore, we evaluate our approach using two independent datasets, assessing true-generalization effects involving local and external validation scenarios. Based on our results, we analyze and discuss our method's capabilities and its potential wide-range applicability across different settings and datasets.
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