Supervised Classification with Short-Term Memory of Sleep Stages using Cardio-respiratory and Body Movement Variables

Asma Gasmi, V. Augusto, Paul-Antoine Beaudet, J. Faucheu, C. Morin, Xavier Serpaggi, F. Vassel
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Abstract

In the context of the Internet of Things (IoT) healthcare, biophysical features collected during sleep needs robust analysis methods to be efficiently used to detect sleep disorders. In this paper, analysis methods using a limited number of input variables (cardiac, respiratory, and body movement) have been used to perform the classification of sleep stages. The efficiency of each classification method has been compared to a reference method that combines a large number of biophysical features referred to as PolySomnoGraphy (PSG). Five classical machine learning methods were evaluated by testing their accuracy on the same collected data. Finally, using a neural network with a short memory method, the classification task fitted 91.34% of the PSG classification.
使用心肺和身体运动变量对睡眠阶段短期记忆进行监督分类
在物联网(IoT)医疗保健的背景下,睡眠期间收集的生物物理特征需要强大的分析方法才能有效地用于检测睡眠障碍。在本文中,使用有限数量的输入变量(心脏、呼吸和身体运动)的分析方法来执行睡眠阶段的分类。将每种分类方法的效率与一种结合了大量生物物理特征的参考方法进行了比较,该方法被称为多导睡眠图(PSG)。通过在相同的收集数据上测试其准确性来评估五种经典机器学习方法。最后,采用神经网络短时记忆方法,分类任务拟合PSG分类的准确率达到91.34%。
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