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Sleep stage classification for managing nocturnal enuresis through effective configuration

机译:通过有效配置来管理夜间遗尿的睡眠阶段分类

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Various studies have examined the quality of one's sleep and further investigated several sleep disorders. In those investigations, accurately classifying one's sleep into the standardized sleep stages is important. The conventional classification heavily depends on the manual examination of each expert on one's physiological signals during the sleep. Therefore, various automatic classification models have been proposed using the machine learning. Although they properly classify the sleep stages on average, there have been few investigations to specifically improve the classification accuracy of certain stages. Accurate determination of several stages considerably correlating with a disorder gives us a more effective hint to conquer the disorder. Accordingly, we propose a configured classification model focusing on the interesting sleep stages related to a challenging sleep disorder, the nocturnal enuresis. We consider the deterministic physiological signals of the interesting stages when training the classifiers. Further, the proposed system utilizes recurrent neural network to effectively learn the sequential feature of the physiological data. Our proposed system achieves the classification accuracy by 83.6% over the data. In particular, technique presents up to 15.5% higher accuracy to differentiate interesting stages than the support vector machine approach for the nocturnal enuresis.
机译:各种研究检查了人的睡眠质量,并进一步研究了几种睡眠障碍。在这些调查中,将一个人的睡眠准确地分类到标准化睡眠阶段很重要。常规分类在很大程度上取决于每个专家在睡眠期间对自己的生理信号的手动检查。因此,已经提出了使用机器学习的各种自动分类模型。尽管他们平均地对睡眠阶段进行了适当的分类,但很少有研究专门改善某些阶段的分类准确性。准确确定与疾病严重相关的几个阶段,为我们克服疾病提供了更有效的提示。因此,我们提出了一个配置的分类模型,重点关注与挑战性睡眠障碍(夜间遗尿症)相关的有趣睡眠阶段。训练分类器时,我们会考虑有趣阶段的确定性生理信号。此外,提出的系统利用递归神经网络有效地学习生理数据的顺序特征。我们提出的系统对数据的分类精度达到了83.6%。尤其是,与夜间夜尿症的支持向量机方法相比,该技术在区分感兴趣的阶段方面具有高达15.5%的精度。

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