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Sensor-Based Sleep Stage Classification Using Deep Learning

51,50 €*

Sofort verfügbar, Lieferzeit: 1-3 Tage

Produktnummer: 18d9370cda25064f0fa4712fa660cc0365
Autor: Huang, Xinyu
Themengebiete: Artificial intelligence Deep learning Medical data science Sleep stage classification Time-series analysis
Veröffentlichungsdatum: 28.02.2023
EAN: 9783832556174
Sprache: Englisch
Seitenzahl: 167
Produktart: Kartoniert / Broschiert
Verlag: Logos Berlin
Produktinformationen "Sensor-Based Sleep Stage Classification Using Deep Learning"
Sleep is a cyclic physiological phenomenon, an important aspect of human life activity, which, like sport and diet, is a nutritional element that ensures the growth and development of the organism. Under the influence of various factors such as work and study stress and metabolic disorders, more and more people suffer from various types of sleep disorders. Sleep has become an important research topic in recent years. Sleep stage analysis plays an important role in the early detection and treatment of sleep disorders. However, different age groups show different symptoms of sleep disorders, and different sleep disorders show variability in their different sleep stages. The prevalence of sleep disorders is much higher in children than in adults. Although the classification of sleep stages in adults has been well studied, children show markedly different characteristics of sleep stages. Therefore, there is an urgent need for sleep stage classification in children. With the rapid development of intelligent computing technology, artificial intelligence has found wide application in medical research and health sciences in recent years. In the field of sleep medicine, deep learning approaches can efficiently and automatically learn abstracted relevant sleep features from collected sleep data to accurately interpret children's sleep stages accordingly. Compared to traditional sleep data analysis, this saves many manual and time resources for data annotation and helps sleep experts reduce the risk of misdiagnosing sleep disorders based on their prior knowledge. In this context, this book presents several advanced deep learning-based approaches for sleep stage classification in children using time series polysomnography recordings acquired from clinical sensor devices. Significantly improved performance in classifying sleep stages in children suffering from sleep disorders demonstrates the great potential of joint research and development between artificial intelligence and the field of sleep medicine.

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