评估不同机器学习技术在单通道脑电图上的睡眠阶段分类

Shahnawaz Qureshi, S. Vanichayobon
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引用次数: 9

摘要

在本文中,我们提出了3种不同的机器学习技术,如随机森林、Bagging和支持向量机,以及时域特征,用于基于单通道EEG的睡眠阶段分类。采用R&K标准记录25名受试者的夜间多导睡眠图。进化过程研究(C4-A1)脑电信号对睡眠分期的影响。自动和手动评分结果在一个epoch-by-epoch的基础上相关联。计算了96000个数据样本30秒睡眠脑电历元并应用于性能评价。根据提出的方法和人工评分方法,将脑电分期分为W/S1/S2/S3/S4/REM 6个阶段,形成逐期评价。结果表明,随机森林分类器达到了整体准确率;特异性97.73%,敏感性96.3%,敏感性99.51%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluate different machine learning techniques for classifying sleep stages on single-channel EEG
In this paper, we propose 3 different machine learning techniques such as Random Forest, Bagging and Support Vector Machine along with time domain feature for classifying sleep stages based on single-channel EEG. Whole-night polysomnograms from 25 subjects were recorded employing R&K standard. The evolved process investigated the EEG signals of (C4-A1) for sleep staging. Automatic and manual scoring results were associated on an epoch-by-epoch basis. An entire 96,000 data samples 30s sleep EEG epoch were calculated and applied for performance evaluation. The epoch-by-epoch assessment was created by classifying the EEG epochs into six stages (W/S1/S2/S3/S4/REM) according to proposed method and manual scoring. Result shows that Random Forest classifiers achieve the overall accuracy; specificity and sensitivity level of 97.73%, 96.3% and 99.51% respectively.
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