Abstract

    Open Access Research Article Article ID: ACMPH-7-234

    Classification of Sleep EEG Data in the COVID-19 Pandemic

    Bin Zhao* and Jinming Cao

    Sleep is an important part of the body’s recuperation and energy accumulation, and the quality of sleep also has a significant impact on people’s physical and mental state in the COVID-19 Pandemic. It has attracted increasing attention on how to improve the quality of sleep and reduce the impact of sleep-related diseases on health in the COVID-19 Pandemic. 

    The EEG (electroencephalogram) signals collected during sleep belong to spontaneous EEG signals. Spontaneous sleep EEG signals can reflect the body’s changes, which is also an basis for diagnosis and treatment of related diseases. 

    Therefore, the establishment of an effective model for classifying sleep EEG signals is an important auxiliary tool for evaluating sleep quality, diagnosing and treating sleep-related diseases.

    In this paper, outliers of each kind of original data were detected and deleted by using the principle of 3 Sigma and k-means clustering + Euclidean distance detection method. Then, using the Adam algorithm with adaptive learning rate constructs the Softmax multi-classification BP neural network the model, and relatively high accuracy and AUC ( Area Under Curve ) values were finally obtained in the COVID-19 Pandemic.

    Keywords:

    Published on: Mar 22, 2021 Pages: 51-54

    Full Text PDF Full Text HTML DOI: 10.17352/2455-5479.000134
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