Application of Machine Learning to Sleep Stage Classification.

Andrew Smith, Hardik Anand, Snezana Milosavljevic, Katherine M Rentschler, Ana Pocivavsek, Homayoun Valafar
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引用次数: 7

Abstract

Sleep studies are imperative to recapitulate phenotypes associated with sleep loss and uncover mechanisms contributing to psychopathology. Most often, investigators manually classify the polysomnography into vigilance states, which is time-consuming, requires extensive training, and is prone to inter-scorer variability. While many works have successfully developed automated vigilance state classifiers based on multiple EEG channels, we aim to produce an automated and openaccess classifier that can reliably predict vigilance state based on a single cortical electroencephalogram (EEG) from rodents to minimize the disadvantages that accompany tethering small animals via wires to computer programs. Approximately 427 hours of continuously monitored EEG, electromyogram (EMG), and activity were labeled by a domain expert out of 571 hours of total data. Here we evaluate the performance of various machine learning techniques on classifying 10-second epochs into one of three discrete classes: paradoxical, slow-wave, or wake. Our investigations include Decision Trees, Random Forests, Naive Bayes Classifiers, Logistic Regression Classifiers, and Artificial Neural Networks. These methodologies have achieved accuracies ranging from approximately 74% to approximately 96%. Most notably, the Random Forest and the ANN achieved remarkable accuracies of 95.78% and 93.31%, respectively. Here we have shown the potential of various machine learning classifiers to automatically, accurately, and reliably classify vigilance states based on a single EEG reading and a single EMG reading.

Abstract Image

Abstract Image

机器学习在睡眠阶段分类中的应用。
睡眠研究对于概括与睡眠缺失相关的表型和揭示导致精神病理的机制是必要的。大多数情况下,调查人员手动将多导睡眠图分为警觉状态,这是耗时的,需要大量的培训,并且容易出现评分者之间的差异。虽然许多工作已经成功地开发了基于多个EEG通道的自动警戒状态分类器,但我们的目标是开发一种自动化和开放访问的分类器,该分类器可以根据啮齿动物的单个皮质脑电图(EEG)可靠地预测警戒状态,以最大限度地减少通过导线将小动物拴在计算机程序上的缺点。大约427小时的连续监测的脑电图、肌电图(EMG)和活动被领域专家从571小时的总数据中标记出来。在这里,我们评估了各种机器学习技术在将10秒时代分类为三种离散类别之一的性能:悖论,慢波或尾流。我们的研究包括决策树、随机森林、朴素贝叶斯分类器、逻辑回归分类器和人工神经网络。这些方法的准确度从大约74%到大约96%不等。最值得注意的是,随机森林和人工神经网络的准确率分别达到了95.78%和93.31%。在这里,我们展示了各种机器学习分类器的潜力,可以根据单个EEG读数和单个EMG读数自动,准确和可靠地分类警戒状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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