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首页> 外文期刊>Neural Systems and Rehabilitation Engineering, IEEE Transactions on >Abnormal Neural Oscillations in Schizophrenia Assessed by Spectral Power Ratio of MEG During Word Processing
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Abnormal Neural Oscillations in Schizophrenia Assessed by Spectral Power Ratio of MEG During Word Processing

机译:文字处理过程中MEG的频谱功率比评估精神分裂症的异常神经振荡

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This study investigated spectral power of neural oscillations associated with word processing in schizophrenia. Magnetoencephalography (MEG) data were acquired from 12 schizophrenia patients and 10 healthy controls during a visual word processing task. Two spectral power ratio (SPR) feature sets: the band power ratio (BPR) and the window power ratio (WPR) were extracted from MEG data in five frequency bands, four time windows of word processing, and at locations covering whole head. Cluster-based nonparametric permutation tests were employed to identify SPRs that show significant between-group difference. Machine learning based feature selection and classification techniques were then employed to select optimal combinations of the significant SPR features, and distinguish schizophrenia patients from healthy controls. We identified three BPR clusters and three WPR clusters that show significant oscillation power difference between groups. These include the theta/delta, alpha/delta and beta/delta BPRs during base-to-encode and encode time windows, and the beta band WPR from base to encode and from encode to post-encode windows. Based on two WPR and one BPR features combined, over 95% cross-validation classification accuracy was achieved using three different linear classifiers separately. These features may have potential as quantitative markers that discriminate schizophrenia patients and healthy controls; however, this needs further validation on larger samples.
机译:这项研究调查了与精神分裂症中的文字处理相关的神经振荡的频谱功率。在视觉文字处理任务期间,从12位精神分裂症患者和10位健康对照中获得了脑磁图(MEG)数据。从五个频段,字处理的四个时间窗以及覆盖整个头部的MEG数据中提取了两个频谱功率比(SPR)功能集:带功率比(BPR)和窗口功率比(WPR)。基于聚类的非参数排列检验用于确定显示出显着的组间差异的SPR。然后采用基于机器学习的特征选择和分类技术来选择重要SPR特征的最佳组合,并将精神分裂症患者与健康对照区分开。我们确定了三个BPR簇和三个WPR簇,它们在组之间显示出明显的振荡功率差异。这些包括在基础到编码和编码时间窗口期间的theta / delta,alpha / delta和beta / delta BPR,以及从基础到编码以及从编码到后编码窗口的beta波段WPR。结合两个WPR和一个BPR功能,分别使用三个不同的线性分类器,可以达到95%以上的交叉验证分类精度。这些特征可能有可能作为区分精神分裂症患者和健康对照者的定量标志物。但是,这需要对更大的样本进行进一步验证。

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