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Sleep-Energy: An Energy Optimization Method to Sleep Stage Scoring.

Bruno AristimunhaAlexandre Janoni BayerleinM Jorge CardosoWalter Hugo Lopez PinayaRaphael Yokoingawa De Camargo
Published in: IEEE access : practical innovations, open solutions (2023)
Sleep is essential for physical and mental health. Polysomnography (PSG) procedures are labour-intensive and time-consuming, making diagnosing sleep disorders difficult. Automatic sleep staging using Machine Learning (ML) - based methods has been studied extensively, but frequently provides noisier predictions incompatible with typical manually annotated hypnograms. We propose an energy optimization method to improve the quality of hypnograms generated by automatic sleep staging procedures. The method evaluates the system's total energy based on conditional probabilities for each epoch's stage and employs an energy minimisation procedure. It can be used as a meta-optimisation layer over the sleep stage sequences generated by any classifier that generates prediction probabilities. The method improved the accuracy of state-of-the-art Deep Learning models in the Sleep EDFx dataset by 4.0% and in the DRM-SUB dataset by 2.8%.
Keyphrases
  • physical activity
  • sleep quality
  • deep learning
  • mental health
  • machine learning
  • lymph node
  • obstructive sleep apnea
  • depressive symptoms
  • convolutional neural network