Classification of ADHD patients on the basis of independent ERP components using a machine learning system.

Andreas Mueller, Gian Candrian, Juri D Kropotov, Valery A Ponomarev, Gian-Marco Baschera
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Abstract

Background: In the context of sensory and cognitive-processing deficits in ADHD patients, there is considerable evidence of altered event related potentials (ERP). Most of the studies, however, were done on ADHD children. Using the independent component analysis (ICA) method, ERPs can be decomposed into functionally different components. Using the classification method of support vector machine, this study investigated whether features of independent ERP components can be used for discrimination of ADHD adults from healthy subjects.

Methods: Two groups of age- and sex-matched adults (74 ADHD, 74 controls) performed a visual two stimulus GO/NOGO task. ERP responses were decomposed into independent components by means of ICA. A feature selection algorithm defined a set of independent component features which was entered into a support vector machine.

Results: The feature set consisted of five latency measures in specific time windows, which were collected from four different independent components. The independent components involved were a novelty component, a sensory related and two executive function related components. Using a 10-fold cross-validation approach, classification accuracy was 92%.

Conclusions: This study was a first attempt to classify ADHD adults by means of support vector machine which indicates that classification by means of non-linear methods is feasible in the context of clinical groups. Further, independent ERP components have been shown to provide features that can be used for characterizing clinical populations.

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利用机器学习系统,根据ERP独立成分对ADHD患者进行分类。
背景:关于多动症患者的感官和认知处理缺陷,有大量证据表明事件相关电位(ERP)发生了改变。然而,大多数研究都是针对多动症儿童进行的。利用独立成分分析(ICA)方法,可以将 ERP 分解为功能不同的成分。本研究采用支持向量机的分类方法,探讨独立 ERP 分量的特征是否可用于区分成人多动症和健康受试者:方法:两组年龄和性别相匹配的成年人(74 名多动症患者和 74 名对照组患者)执行了一项视觉双刺激 GO/NOGO 任务。通过 ICA 将 ERP 反应分解为独立成分。特征选择算法定义了一组独立分量特征,并将其输入支持向量机:特征集由特定时间窗口中的五个延迟测量值组成,这些测量值来自四个不同的独立成分。这些独立成分包括一个新奇成分、一个感官相关成分和两个执行功能相关成分。采用 10 倍交叉验证方法,分类准确率为 92%:本研究首次尝试利用支持向量机对成人多动症进行分类,这表明在临床群体中利用非线性方法进行分类是可行的。此外,独立的 ERP 成分已被证明可提供用于描述临床人群特征的特征。
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