2024
DOI: 10.21203/rs.3.rs-4040917/v1
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State-of-the-art Sleep Arousal Detection Evaluated on a Comprehensive Clinical Dataset

Franz Ehrlich,
Tony Sehr,
Moritz Brandt
et al.

Abstract: Aiming to apply automatic arousal detection to support sleep laboratories, we evaluated an optimized, state-of-the-art approach using data from daily work in our university hospital sleep laboratory. Therefore, a machine learning algorithm was trained and evaluated on 3423 polysomnograms of people suffering from various sleep disorders. The model architecture is a U-net that accepts 50 Hz signals as input. We compared this algorithm with models trained on publicly available datasets, and evaluated these models… Show more

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