基于机器学习的睡眠阶段预测,利用PSG记录的脑电图信号

J. K, M. P, S. J
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引用次数: 0

摘要

睡眠问题现在很普遍。分析这类问题有许多传统的方法。但这些方法往往耗时、昂贵,还需要人为干预。因此需要自动诊断工具是非常重要的。不同的人工智能技术,如深度学习,确保了数据的充分利用,信息丢失非常少。本文利用机器学习中的方法提出了一种诊断工具。第一个模块对信号进行预处理,利用功率谱密度技术(PSD)进行特征提取。在最后一节中,将提取的特征放入集成分类器中,也称为旋转支持向量机(RotSVM)。计算了睡眠阶段分类的准确性和灵敏度。根据分类性能结果,1D通道EEG可用于创建睡眠监测系统,可用于医院和家庭护理监测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning-Based sleep stage prediction using EEG signals recorded in PSG
Sleep problems are very common nowadays. Many conventional methods are there for analysing this types of problems. But these methods are often time consuming, expensive and also human interventions are needed. So the need automatic diagnostic tool is very much important. Different artificial intelligence technologies like deep learning ensure the full utilization of data with very less information loss. In this paper a diagnostic tool is proposed by using the methods in machine learning. Signals were pre-processed in the first module, and the feature extraction is done by power spectral density technique (PSD). In the final section, features that had been extracted were put into an ensemble classifier, also known as a rotational support vector machine (RotSVM). The accuracy & sensitivity for the sleep stages classification is also calculated. According to classification performance results, 1D channel EEG can be used to create a sleep monitoring system that is useful for the hospitals and home care monitoring systems.
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