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通过同步特征提取和图指标在人工预处理的脑电图数据上实现准确的自动睡眠分期

Achieving Accurate Automatic Sleep Staging on Manually Pre-processed EEG Data Through Synchronization Feature Extraction and Graph Metrics.

作者信息

Chriskos Panteleimon, Frantzidis Christos A, Gkivogkli Polyxeni T, Bamidis Panagiotis D, Kourtidou-Papadeli Chrysoula

机构信息

Laboratory of Medical Physics, Medical School, Aristotle University of Thessaloniki, Thessaloniki, Greece.

Greek Aerospace Medical Association and Space Research, Thessaloniki, Greece.

出版信息

Front Hum Neurosci. 2018 Mar 23;12:110. doi: 10.3389/fnhum.2018.00110. eCollection 2018.

DOI:10.3389/fnhum.2018.00110
PMID:29628883
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5877486/
Abstract

Sleep staging, the process of assigning labels to epochs of sleep, depending on the stage of sleep they belong, is an arduous, time consuming and error prone process as the initial recordings are quite often polluted by noise from different sources. To properly analyze such data and extract clinical knowledge, noise components must be removed or alleviated. In this paper a pre-processing and subsequent sleep staging pipeline for the sleep analysis of electroencephalographic signals is described. Two novel methods of functional connectivity estimation (Synchronization Likelihood/SL and Relative Wavelet Entropy/RWE) are comparatively investigated for automatic sleep staging through manually pre-processed electroencephalographic recordings. A multi-step process that renders signals suitable for further analysis is initially described. Then, two methods that rely on extracting synchronization features from electroencephalographic recordings to achieve computerized sleep staging are proposed, based on bivariate features which provide a functional overview of the brain network, contrary to most proposed methods that rely on extracting univariate time and frequency features. Annotation of sleep epochs is achieved through the presented feature extraction methods by training classifiers, which are in turn able to accurately classify new epochs. Analysis of data from sleep experiments on a randomized, controlled bed-rest study, which was organized by the European Space Agency and was conducted in the "ENVIHAB" facility of the Institute of Aerospace Medicine at the German Aerospace Center (DLR) in Cologne, Germany attains high accuracy rates, over 90% based on ground truth that resulted from manual sleep staging by two experienced sleep experts. Therefore, it can be concluded that the above feature extraction methods are suitable for semi-automatic sleep staging.

摘要

睡眠分期是指根据睡眠阶段为各个睡眠时段分配标签的过程,由于初始记录常常受到来自不同来源的噪声污染,所以这是一个艰巨、耗时且容易出错的过程。为了正确分析此类数据并提取临床知识,必须去除或减轻噪声成分。本文描述了一种用于脑电图信号睡眠分析的预处理及后续睡眠分期流程。通过人工预处理的脑电图记录,对两种新颖的功能连接估计方法(同步似然性/SL和相对小波熵/RWE)进行了比较研究,以实现自动睡眠分期。首先描述了一个使信号适合进一步分析的多步骤过程。然后,基于双变量特征提出了两种依靠从脑电图记录中提取同步特征来实现计算机化睡眠分期的方法,双变量特征提供了大脑网络的功能概况,这与大多数依靠提取单变量时间和频率特征的方法不同。通过训练分类器,利用所提出的特征提取方法实现睡眠时段的标注,这些分类器进而能够准确地对新的时段进行分类。对由欧洲航天局组织、在德国科隆德国航空航天中心(DLR)航空航天医学研究所的“ENVIHAB”设施中进行的一项随机对照卧床休息研究的睡眠实验数据进行分析,基于两名经验丰富的睡眠专家进行的人工睡眠分期得出的地面真值,准确率达到了90%以上。因此,可以得出结论,上述特征提取方法适用于半自动睡眠分期。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3f45/5877486/9c65e2f8eaca/fnhum-12-00110-g0003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3f45/5877486/6e4ca25fa48f/fnhum-12-00110-g0001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3f45/5877486/514f959b89b4/fnhum-12-00110-g0002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3f45/5877486/9c65e2f8eaca/fnhum-12-00110-g0003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3f45/5877486/6e4ca25fa48f/fnhum-12-00110-g0001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3f45/5877486/514f959b89b4/fnhum-12-00110-g0002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3f45/5877486/9c65e2f8eaca/fnhum-12-00110-g0003.jpg

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