Comparative evaluation of probabilistic neural network versus support vector machines classifiers in discriminating ERP signals of depressive patients from healthy controls

I. Kalatzis, N. Piliouras, E. Ventouras, C. Papageorgiou, A. Rabavilas, D. Cavouras
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引用次数: 10

Abstract

This paper describes the design of classification system capable of distinguishing patients with depression from normal controls by event-related potential (ERP) signals using the P600 component. Clinical material comprised twenty-five 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. EEC activity was recorded from 15 scalp electrodes and recordings were digitized for further computer processing. Features related to the shape of the waveform were generated using a dedicated custom software interface system developed in C++ for the purposes of this work. A software classification system was designed, consisting of (a) two classifiers, the probabilistic neural network (PNN) and the support vector machines (SVM), (b) two routines for feature reduction and feature selection, and (c) an overall system evaluation routine, comprising the exhaustive search and the leave-one-out methods. Highest classification accuracies achieved were 92% for the PNN and 96% for the SVM, using the 'latency/amplitude ratio' and 'peak-to-peak slope' two-feature combination. In conclusion, employing computer-based pattern recognition techniques with features not easily evaluated by the clinician, patients with depression could be distinguished from healthy subjects with high accuracy.
概率神经网络与支持向量机分类器在区分抑郁症患者与健康对照ERP信号中的比较评价
本文设计了一种基于P600分量的事件相关电位(ERP)信号识别抑郁症患者与正常人的分类系统。临床材料包括25名抑郁症患者和同等数量的性别和年龄匹配的健康对照。所有受试者都通过计算机版的数字广度韦氏测验进行评估。从15个头皮电极记录脑电图活动,并将记录数字化以供进一步的计算机处理。与波形形状相关的特征是使用用c++开发的专用定制软件接口系统生成的。设计了一个软件分类系统,包括(A)两个分类器,即概率神经网络(PNN)和支持向量机(SVM), (b)两个特征约简和特征选择例程,以及(c)一个整体系统评估例程,包括穷举搜索和留一方法。使用“延迟/振幅比”和“峰对峰斜率”两种特征组合,PNN和SVM的最高分类准确率分别为92%和96%。综上所述,采用基于计算机的模式识别技术,临床医生不容易评估的特征,可以以较高的准确率将抑郁症患者与健康受试者区分开来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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