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A Comparative Investigation of PSG Signal Patterns to Classify Sleep Disorders Using Machine Learning Techniques

机译:使用机器学习技术对PSG信号模式进行睡眠障碍分类的比较研究

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Patients with Non-Communicable Diseases (NCDs) are increasing around the globe. Possible causes of the NCDs are continuously being investigated. One of them is a sleep disorder. In order to detect specific sleep disorders, the Polysomnography (PSG), is necessary. However, due to the lack of the PSG in many hospitals, researchers attempt to discover alternative approaches. This article demonstrates comparisons of sleep disorder classifications using machine learning techniques. Three main machine learning techniques have been compared including Classification And Regression Tree (CART), k-Mean Clustering (KMC) and Support Vector Machine (SVM). The SVM achieves the best classification results in NREM-1 and NREM-2. The CART performs superior in NREM-3 and REM. Implications in terms of medical diagnosis, there are two main selected features, SaO2 and Pulse, based on the CART in all of the sleep stages. The features may be pieces of evidences to predict various types of sleep disorders.
机译:非传染性疾病(NCD)患者在全球范围内呈上升趋势。 NCD的可能原因正在不断研究中。其中之一是睡眠障碍。为了检测特定的睡眠障碍,必须进行多导睡眠监测(PSG)。但是,由于许多医院缺乏PSG,研究人员试图找到其他方法。本文演示了使用机器学习技术对睡眠障碍分类的比较。比较了三种主要的机器学习技术,包括分类和回归树(CART),k均值聚类(KMC)和支持向量机(SVM)。 SVM在NREM-1和NREM-2中获得最佳分类结果。 CART在NREM-3和REM中表现出色。在医学诊断方面,基于所有睡眠阶段的CART,有两个主要选定的特征SaO2和Pulse。这些特征可能是预测各种类型睡眠障碍的证据。

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