A Machine Learning Approach to Automatic Classification of Eight Sleep Disorders
Dylan Zhuang, Ivey Rao, and Ali K Ibrahim

TL;DR
This study develops a multi-channel deep learning model that classifies eight sleep disorders with over 95% accuracy using raw polysomnography signals, outperforming models based on spectral features.
Contribution
The paper introduces a novel multi-channel deep learning approach utilizing raw signals for sleep disorder classification, demonstrating superior performance over spectral feature-based models.
Findings
Raw signals significantly improve classification accuracy.
ECG signals are most important among modalities.
Deep learning model achieves over 95% sensitivity and specificity.
Abstract
In this research, we attempt to answer the following basic research questions: Is a machine learning model able to classify all types of sleep disorders with high accuracy? Among the different modalities of sleep disorder signals, are some more important than others? Do raw signals improve the performance of a deep learning model when they are used as inputs? Prior research showed that most sleep disorders belong to eight categories. To study the performance of machine learning models in classifying polysomnography recordings into the eight categories of sleep pathologies, we selected the Cyclic Alternating Pattern Sleep Database. We developed a multi-channel Deep Learning model where a set of Convolutional Neural Networks were applied to six channels of raw signals of different modalities, including three channels of EEG signals and one channel each of EMG, ECG , and EOG signals. To…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Sleep and Work-Related Fatigue · Obstructive Sleep Apnea Research
