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使用线性支持向量机从静息态功能磁共振成像中验证非快速眼动睡眠阶段解码

Validation of non-REM sleep stage decoding from resting state fMRI using linear support vector machines.

作者信息

Altmann A, Schröter M S, Spoormaker V I, Kiem S A, Jordan D, Ilg R, Bullmore E T, Greicius M D, Czisch M, Sämann P G

机构信息

Max Planck Institute of Psychiatry, Department of Translational Research in Psychiatry, Neuroimaging, Munich, Germany; Stanford Center for Memory Disorders, Department of Neurology and Neurological Sciences, Stanford University, Stanford, CA, USA.

Max Planck Institute of Psychiatry, Department of Translational Research in Psychiatry, Neuroimaging, Munich, Germany; Behavioural and Clinical Neuroscience Institute, Department of Psychiatry, University of Cambridge, Cambridge, United Kingdom.

出版信息

Neuroimage. 2016 Jan 15;125:544-555. doi: 10.1016/j.neuroimage.2015.09.072. Epub 2015 Oct 24.

Abstract

A growing body of literature suggests that changes in consciousness are reflected in specific connectivity patterns of the brain as obtained from resting state fMRI (rs-fMRI). As simultaneous electroencephalography (EEG) is often unavailable, decoding of potentially confounding sleep patterns from rs-fMRI itself might be useful and improve data interpretation. Linear support vector machine classifiers were trained on combined rs-fMRI/EEG recordings from 25 subjects to separate wakefulness (S0) from non-rapid eye movement (NREM) sleep stages 1 (S1), 2 (S2), slow wave sleep (SW) and all three sleep stages combined (SX). Classifier performance was quantified by a leave-one-subject-out cross-validation (LOSO-CV) and on an independent validation dataset comprising 19 subjects. Results demonstrated excellent performance with areas under the receiver operating characteristics curve (AUCs) close to 1.0 for the discrimination of sleep from wakefulness (S0|SX), S0|S1, S0|S2 and S0|SW, and good to excellent performance for the classification between sleep stages (S1|S2:0.9; S1|SW:1.0; S2|SW:~0.8). Application windows of fMRI data from about 70 s were found as minimum to provide reliable classifications. Discrimination patterns pointed to subcortical-cortical connectivity and within-occipital lobe reorganization of connectivity as strongest carriers of discriminative information. In conclusion, we report that functional connectivity analysis allows valid classification of NREM sleep stages.

摘要

越来越多的文献表明,意识的变化反映在静息态功能磁共振成像(rs-fMRI)所获得的大脑特定连接模式中。由于同步脑电图(EEG)往往无法获得,从rs-fMRI本身解码潜在的混淆睡眠模式可能会有所帮助,并改善数据解释。线性支持向量机分类器在来自25名受试者的rs-fMRI/EEG联合记录上进行训练, 以区分清醒状态(S0)与非快速眼动(NREM)睡眠的第1阶段(S1)、第2阶段(S2)、慢波睡眠(SW)以及这三个睡眠阶段的组合(SX)。通过留一受试者交叉验证(LOSO-CV)并在包含19名受试者的独立验证数据集上对分类器性能进行量化。结果表明,分类器在区分清醒与睡眠(S0|SX)、S0|S1、S0|S2和S0|SW方面表现出色,受试者工作特征曲线下面积(AUC)接近1.0,在睡眠阶段之间的分类方面表现良好至出色(S1|S2:0.9;S1|SW:1.0;S2|SW:~0.8)。发现fMRI数据约70秒的应用窗口是提供可靠分类的最小值。区分模式表明,皮层下-皮层连接以及枕叶内连接重组是区分信息的最强载体。总之,我们报告功能连接性分析允许对NREM睡眠阶段进行有效分类。

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