Mueller Andreas, Candrian Gian, Grane Venke Arntsberg, Kropotov Juri D, Ponomarev Valery A, Baschera Gian-Marco
Brain and Trauma Foundation Grisons, Poststrasse 22, 7000 Chur, Switzerland.
Neuropsychological Service, Helgeland Hospital, Mosjøen, Norway.
Nonlinear Biomed Phys. 2011 Jul 19;5:5. doi: 10.1186/1753-4631-5-5.
There are numerous event-related potential (ERP) studies in relation to attention-deficit hyperactivity disorder (ADHD), and a substantial number of ERP correlates of the disorder have been identified. However, most of the studies are limited to group differences in children. Independent component analysis (ICA) separates a set of mixed event-related potentials into a corresponding set of statistically independent source signals, which are likely to represent different functional processes. Using a support vector machine (SVM), a classification method originating from machine learning, this study aimed at investigating the use of such independent ERP components in differentiating adult ADHD patients from non-clinical controls by selecting a most informative feature set. A second aim was to validate the predictive power of the SVM classifier by means of an independent ADHD sample recruited at a different laboratory.
Two groups of age-matched adults (75 ADHD, 75 controls) performed a visual two stimulus go/no-go task. ERP responses were decomposed into independent components, and a selected set of independent ERP component features was used for SVM classification.
Using a 10-fold cross-validation approach, classification accuracy was 91%. Predictive power of the SVM classifier was verified on the basis of the independent ADHD sample (17 ADHD patients), resulting in a classification accuracy of 94%. The latency and amplitude measures which in combination differentiated best between ADHD patients and non-clinical subjects primarily originated from independent components associated with inhibitory and other executive operations.
This study shows that ERPs can substantially contribute to the diagnosis of ADHD when combined with up-to-date methods.
有许多与注意力缺陷多动障碍(ADHD)相关的事件相关电位(ERP)研究,并且已经确定了该障碍的大量ERP相关因素。然而,大多数研究仅限于儿童的组间差异。独立成分分析(ICA)将一组混合的事件相关电位分离为一组相应的统计独立源信号,这些信号可能代表不同的功能过程。本研究使用源自机器学习的分类方法支持向量机(SVM),旨在通过选择最具信息性的特征集来研究使用此类独立的ERP成分区分成人ADHD患者与非临床对照。第二个目的是通过在不同实验室招募的独立ADHD样本验证SVM分类器的预测能力。
两组年龄匹配的成年人(75名ADHD患者,75名对照)执行视觉双刺激go/no-go任务。ERP反应被分解为独立成分,并使用一组选定的独立ERP成分特征进行SVM分类。
使用10折交叉验证方法,分类准确率为91%。基于独立的ADHD样本(17名ADHD患者)验证了SVM分类器的预测能力,分类准确率为94%。ADHD患者与非临床受试者之间差异最明显的潜伏期和波幅测量主要源自与抑制和其他执行操作相关的独立成分。
本研究表明,当与最新方法结合时,ERP可以对ADHD的诊断做出重大贡献。