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引用次数: 2

摘要

睡眠纺锤波是在非快速眼动睡眠第二阶段的脑电图上观察到的一种显著的瞬态振荡。深度信念网络(Deep belief network, DBN)在图像和语音检测方面取得了巨大的成功,是开发睡眠纺锤波检测系统的一种新方法。本文采用众包代替金标准的方法生成三种不同的标记样本,并将这些样本组合起来构建三类数据集。估计一个f1分值来比较DBN与其他三种分类器对这些样本的分类性能,DBN获得了92.78%的结果。然后利用DBN对同一数据集上基于功率谱密度的两种特征提取方法进行了比较。此外,在数据集中训练的DBN被应用于从原始脑电图记录中检测睡眠纺锤波,并执行与专家组共识相当的能力。
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Sleep spindle detection using deep learning: A validation study based on crowdsourcing.
Sleep spindles are significant transient oscillations observed on the electroencephalogram (EEG) in stage 2 of non-rapid eye movement sleep. Deep belief network (DBN) gaining great successes in images and speech is still a novel method to develop sleep spindle detection system. In this paper, crowdsourcing replacing gold standard was applied to generate three different labeled samples and constructed three classes of datasets with a combination of these samples. An F1-score measure was estimated to compare the performance of DBN to other three classifiers on classifying these samples, with the DBN obtaining an result of 92.78%. Then a comparison of two feature extraction methods based on power spectrum density was made on same dataset using DBN. In addition, the DBN trained in dataset was applied to detect sleep spindle from raw EEG recordings and performed a comparable capacity to expert group consensus.
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