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脑电图的可靠计算机辅助分类:索引病例及其一级亲属中的脑电图变异

Reliable computer-assisted classification of the EEG: EEG variants in index cases and their first degree relatives.

作者信息

Dünki R M, Schmid G B, Scheidegger P, Stassen H H, Bomben G, Propping P

机构信息

Psychiatric University Hospital, Research Department, Zürich, Switzerland.

出版信息

Am J Med Genet. 1996 Feb 16;67(1):1-8. doi: 10.1002/(SICI)1096-8628(19960216)67:1<1::AID-AJMG1>3.0.CO;2-W.

Abstract

A method which optimizes on global properties of sample recordings is proposed for the definition of and the discrimination between electroencephalogram (EEG) classes. The sample was drawn from students at the University of Heidelberg from 1974 to 1978 and consists of 15 healthy index cases clinically ascertained as belonging to the low voltage EEG group. In addition, the three clinically defined groups: diffuse beta (18 index cases), borderline alpha (12 index cases) and monomorphous alpha (18 index cases) have been included in the study, as well as the first degree relatives of the index cases, thus providing a clinical classification into four groups. The proposed method provides an automatic and reliable classification algorithm using discriminant and cluster analysis. The relation between such an automatized classification and clinical classification schemes is investigated. In particular, the inheritance of the low voltage EEG, the question on sex differences and the question of a simple Mendelian mechanism had been examined. The method of random splittings had been applied for discriminant and cluster analysis. Our findings can be summarized as follows: (1) except for the monomorphous alpha EEG group, the clinical classification shows rather marginal separation (discriminating performance 60% to 75%), while a new and more reliable grouping scheme improves the discriminating performance up to 87% to 91%. The latter scheme leads to the concept of personal channel pattern (PCP) and was compared to the clinical classification scheme by means of contingency tables; (2) only a weak correlation between the clinically and PCP-based groups could be found (Cramér Index: 0.27). Accordingly, we continued to investigate the extent to which the proposed EEG classification scheme can nevertheless explain the genetic mechanisms apparently involved in the low voltage EEG. We thus considered the role of sex differences manifest in our proposed new grouping scheme; (3) males occurred more frequently in the new group 3 and females more frequently in the new group 1. In this regard, a much better correlation of the new groups between mothers and children than between fathers and children was observed; and (4) with help of our new PCP scheme, we have been able to reproduce a simple two gene Mendelian scheme to explain inheritance of the clinical low voltage EEG group. In this PCP-based scheme, the low voltage property does not occur when dominance of a certain gene (called gene A) is absent.

摘要

本文提出了一种基于样本记录全局特性优化的方法,用于脑电图(EEG)类别的定义和区分。样本取自1974年至1978年海德堡大学的学生,包括15例经临床确诊属于低电压EEG组的健康对照病例。此外,研究还纳入了三个临床定义的组:弥漫性β波(18例对照病例)、临界α波(12例对照病例)和单形性α波(18例对照病例),以及对照病例的一级亲属,从而形成了四类临床分类。所提出的方法使用判别分析和聚类分析提供了一种自动且可靠的分类算法。研究了这种自动化分类与临床分类方案之间的关系。特别考察了低电压EEG的遗传、性别差异问题以及简单孟德尔机制问题。判别分析和聚类分析采用了随机分割法。我们的研究结果总结如下:(1)除单形性α波EEG组外,临床分类显示出相当有限的区分度(判别性能为60%至75%),而一种新的、更可靠的分组方案将判别性能提高到了87%至91%。后一种方案引出了个人通道模式(PCP)的概念,并通过列联表与临床分类方案进行了比较;(2)临床组和基于PCP的组之间仅发现了微弱的相关性(克莱默指数:0.27)。因此,我们继续研究所提出的EEG分类方案在多大程度上仍能解释低电压EEG中明显涉及的遗传机制。因此,我们考虑了在我们提出的新分组方案中表现出的性别差异的作用;(3)新组3中男性出现频率更高,新组1中女性出现频率更高。在这方面,观察到新组中母亲与孩子之间的相关性比父亲与孩子之间的相关性要好得多;(4)借助我们新的PCP方案,我们能够重现一个简单的双基因孟德尔方案来解释临床低电压EEG组的遗传。在这个基于PCP的方案中,当某个基因(称为基因A)不存在显性时,低电压特性不会出现。

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