Sleep insomnia identification model using sleep quality parameters

Clinical-phenomenological categorization, etiological classification, and other factors are used to classify sleep disorders. Insomnia is a sleep disorder in which a person has difficulty in sleeping. Basic principles in the treatment of insomnia with  a goal of restoring sleep–wake cycle, as well as psychotherapy treatments, are included in sleep disorder treatment. Sleep stage classification is a crucial step in assisting physicians in diagnosis and treatment of related sleep disorders by distinguishing distinct stages of sleep. Manual sleep stage scoring is generally done by sleep specialists by visually inspecting patient's polysomnography signals. The necessity for creating an Automatic Sleep Stage Classification (ASSC) system has grown as a result of constraints of manual sleep stage scoring. We modify the existing sleep stage classification model with reduced epoch size and propose a method to identify insomnia using sleep quality parameters.

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