Price Gregory W, Michie Patricia T, Johnston Julie, Innes-Brown Hamish, Kent Aaron, Clissa Peter, Jablensky Assen V
School of Psychiatry and Clinical Neuroscience and Centre for Clinical Research in Neuropsychiatry, University of Western Australia and Graylands Hospital, Perth, Australia.
Biol Psychiatry. 2006 Jul 1;60(1):1-10. doi: 10.1016/j.biopsych.2005.09.010. Epub 2005 Dec 20.
Previous studies have found several electrophysiological endophenotypes that each co-varies individually with schizophrenia. This study extends these investigations to compare and contrast four electrophysiological endophenotype, mismatch negativity, P50, P300, and antisaccades, and analyze their covariance on the basis of a single cohort tested with all paradigms. We report a multivariate endophenotype that is maximally associated with diagnosis and evaluate this new endophenotype with respect to its application to genetic analysis.
Group differences and covariance were analyzed for probands (n = 60), family members (n = 53), and control subjects (n = 44). Associations between individual endophenotypes and diagnostic groups, as well as between the multivariate endophenotype and diagnostic groups, were investigated with logistic regression.
Results from all four individual endophenotypes replicated previous findings of deficits in the proband group. The P50 and P300 endophenotypes similarly replicated significant deficits in the family member group, whereas mismatch negativity and antisaccade measures showed a trend. There was minimal correlation between the different endophenotypes. A logistic regression model based on all four features significantly represented the diagnostic grouping (chi(2) = 32.7; p < .001), with 80% accuracy in predicting group membership.
A multivariate endophenotype, based on a weighted combination of electrophysiological features, provides greater diagnostic classification power than any single endophenotype.
以往研究发现了几种电生理内表型,每种内表型都与精神分裂症单独共变。本研究扩展了这些调查,以比较和对比四种电生理内表型,即失配负波、P50、P300和反扫视,并在使用所有范式测试的单个队列基础上分析它们的协方差。我们报告了一种与诊断最大程度相关的多变量内表型,并评估了这种新内表型在基因分析中的应用。
分析了先证者(n = 60)、家庭成员(n = 53)和对照受试者(n = 44)的组间差异和协方差。使用逻辑回归研究个体内表型与诊断组之间以及多变量内表型与诊断组之间的关联。
所有四种个体内表型的结果重复了先证者组缺陷的先前发现。P50和P300内表型同样重复了家庭成员组中的显著缺陷,而失配负波和反扫视测量显示出一种趋势。不同内表型之间的相关性最小。基于所有四个特征的逻辑回归模型显著代表了诊断分组(χ² = 32.7;p <.001),预测组成员的准确率为80%。
基于电生理特征加权组合的多变量内表型比任何单一内表型具有更强的诊断分类能力。