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基于稳态视觉诱发电位区分偏头痛患者与正常受试者:判别分析和人工神经网络分类器

Discrimination between migraine patients and normal subjects based on steady state visual evoked potentials: discriminant analysis and artificial neural network classifiers.

作者信息

de Tommaso M, Sciruicchio V, Bellotti R, Castellano M, Tota P, Guido M, Sasanelli G, Puca F

机构信息

2nd Neurological Clinic, University of Bari, Italy.

出版信息

Funct Neurol. 1997 Nov-Dec;12(6):333-8.

PMID:9503196
Abstract

Fifty-one migraine patients and 19 control subjects were examined by steady state visual evoked potentials (SSVEPs) procedure. The aim of this study was to develop a discriminant analysis and an artificial neural network (NN) classifier in order to discriminate between migraneurs during attack-free periods and normal subjects. Discriminant analysis correctly classified 72.5% of migraine patients with a false positive rate of 36.8%. The NN method had a sensitivity of 100% with a false positive rate of 15%. The results of this study confirm SSVEP pattern as a marker of migraine and demonstrate that NNs could be a useful method in the statistical analysis of topographic EEG data.

摘要

采用稳态视觉诱发电位(SSVEPs)程序对51名偏头痛患者和19名对照受试者进行了检查。本研究的目的是开发一种判别分析和人工神经网络(NN)分类器,以区分无发作期的偏头痛患者和正常受试者。判别分析正确分类了72.5%的偏头痛患者,假阳性率为36.8%。NN方法的灵敏度为100%,假阳性率为15%。本研究结果证实SSVEP模式可作为偏头痛的一个标志物,并表明神经网络在脑电地形图数据的统计分析中可能是一种有用的方法。

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