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首页> 外文期刊>Computer Methods and Programs in Biomedicine: An International Journal Devoted to the Development, Implementation and Exchange of Computing Methodology and Software Systems in Biomedical Research and Medical Practice >Design and implementation of an SVM-based computer classification system for discriminating depressive patients from healthy controls using the P600 component of ERP signals.
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Design and implementation of an SVM-based computer classification system for discriminating depressive patients from healthy controls using the P600 component of ERP signals.

机译:基于SVM的计算机分类系统的设计和实现,该系统使用ERP信号的P600组件将抑郁症患者与健康对照区分开。

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摘要

A computer-based classification system has been designed capable of distinguishing patients with depression from normal controls by event-related potential (ERP) signals using the P600 component. Clinical material comprised 25 patients with depression and an equal number of gender and aged-matched healthy controls. All subjects were evaluated by a computerized version of the digit span Wechsler test. EEG activity was recorded and digitized from 15 scalp electrodes (leads). Seventeen features related to the shape of the waveform were generated and were employed in the design of an optimum support vector machine (SVM) classifier at each lead. The outcomes of those SVM classifiers were selected by a majority-vote engine (MVE), which assigned each subject to either the normal or depressive classes. MVE classification accuracy was 94% when using all leads and 92% or 82% when using only the right or left scalp leads, respectively. These findings support the hypothesis that depression is associated with dysfunction of right hemisphere mechanisms mediating the processing of information that assigns a specific response to a specific stimulus, as those mechanisms are reflected by the P600 component of ERPs. Our method may aid the further understanding of the neurophysiology underlying depression, due to its potentiality to integrate theories of depression and psychophysiology.
机译:设计了基于计算机的分类系​​统,该系统能够使用P600组件通过事件相关电位(ERP)信号将抑郁症患者与正常对照区分开。临床资料包括25例抑郁症患者,相同数量的性别和年龄匹配的健康对照者。所有受试者均通过数字跨度韦氏测试的计算机化版本进行评估。记录脑电活动,并从15个头皮电极(引线)中数字化。生成了与波形形状相关的十七个特征,并将其用于每个引线的最佳支持向量机(SVM)分类器的设计中。这些SVM分类器的结果由多数投票引擎(MVE)选择,该引擎将每个受试者分配到正常或抑郁类中。当使用所有引线时,MVE分类准确度分别为94%和仅使用左右头皮引线时分别为92%或82%。这些发现支持以下假设:抑郁症与右半球机能障碍有关,该机制介导了信息处理,该信息为特定刺激分配了特定反应,因为这些机制反映在ERP的P600组件中。我们的方法可能有助于进一步了解抑郁症背后的神经生理学,因为它具有整合抑郁症和心理生理学理论的潜力。

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