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Analysis and visualization of sleep stages based on deep neural networks

Patrick Krauß, Claus Metzner, Nidhi Joshi, Holger Schulze, Maximilian Traxdorf, Andreas Maier, Achim Schilling

2021Neurobiology of Sleep and Circadian Rhythms39 citationsDOIOpen Access PDF

Abstract

Automatic sleep stage scoring based on deep neural networks has come into focus of sleep researchers and physicians, as a reliable method able to objectively classify sleep stages would save human resources and simplify clinical routines. Due to novel open-source software libraries for machine learning, in combination with enormous recent progress in hardware development, a paradigm shift in the field of sleep research towards automatic diagnostics might be imminent. We argue that modern machine learning techniques are not just a tool to perform automatic sleep stage classification, but are also a creative approach to find hidden properties of sleep physiology. We have already developed and established algorithms to visualize and cluster EEG data, facilitating first assessments on sleep health in terms of sleep-apnea and consequently reduced daytime vigilance. In the following study, we further analyze cortical activity during sleep by determining the probabilities of momentary sleep stages, represented as hypnodensity graphs and then computing vectorial cross-correlations of different EEG channels. We can show that this measure serves to estimate the period length of sleep cycles and thus can help to find disturbances due to pathological conditions.

Topics & Concepts

Computer scienceSleep StagesSleep (system call)Artificial intelligenceDeep learningArtificial neural networkElectroencephalographyVigilance (psychology)Sleep apneaVisualizationMachine learningSoftwareData sciencePsychologyCognitive psychologyPolysomnographyMedicineNeuroscienceProgramming languageCardiologyOperating systemEEG and Brain-Computer InterfacesTime Series Analysis and ForecastingSleep and Wakefulness Research
Analysis and visualization of sleep stages based on deep neural networks | Litcius