Classification of event-related potentials associated with response errors in actors and observers based on autoregressive modeling.

Christos E Vasios, Errikos M Ventouras, George K Matsopoulos, Irene Karanasiou, Pantelis Asvestas, Nikolaos K Uzunoglu, Hein T Van Schie, Ellen R A de Bruijn
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引用次数: 8

Abstract

Event-Related Potentials (ERPs) provide non-invasive measurements of the electrical activity on the scalp related to the processing of stimuli and preparation of responses by the brain. In this paper an ERP-signal classification method is proposed for discriminating between ERPs of correct and incorrect responses of actors and of observers seeing an actor making such responses. The classification method targeted signals containing error-related negativity (ERN) and error positivity (Pe) components, which are typically associated with error processing in the human brain. Feature extraction consisted of Multivariate Autoregressive modeling combined with the Simulated Annealing technique. The resulting information was subsequently classified by means of an Artificial Neural Network (ANN) using back-propagation algorithm under the "leave-one-out cross-validation" scenario and the Fuzzy C-Means (FCM) algorithm. The ANN consisted of a multi-layer perceptron (MLP). The approach yielded classification rates of up to 85%, both for the actors' correct and incorrect responses and the corresponding ERPs of the observers. The electrodes needed for such classifications were situated mainly at central and frontal areas. Results provide indications that the classification of the ERN is achievable. Furthermore, the availability of the Pe signals, in addition to the ERN, improves the classification, and this is more pronounced for observers' signals. The proposed ERP-signal classification method provides a promising tool to study error detection and observational-learning mechanisms in performance monitoring and joint-action research, in both healthy and patient populations.

Abstract Image

Abstract Image

Abstract Image

基于自回归模型的行为者和观察者反应误差相关电位分类。
事件相关电位(ERPs)提供了与大脑处理刺激和准备反应相关的头皮电活动的非侵入性测量。本文提出了一种erp信号分类方法,用于区分行为者正确和错误反应的erp信号以及观察者看到行为者做出正确和错误反应的erp信号。该分类方法针对的是包含错误相关负性(ERN)和错误正性(Pe)成分的信号,这些成分通常与人脑中的错误处理有关。特征提取由多元自回归建模和模拟退火技术相结合组成。结果信息随后通过人工神经网络(ANN)在“留一交叉验证”场景下使用反向传播算法和模糊c均值(FCM)算法进行分类。该人工神经网络由多层感知器(MLP)组成。该方法产生了高达85%的分类率,无论是演员的正确和不正确的反应,还是观察者相应的erp。这种分类所需的电极主要位于中央和额叶区。结果表明ERN的分类是可以实现的。此外,除了ERN之外,Pe信号的可用性也改善了分类,这对于观察者的信号来说更为明显。提出的erp信号分类方法为健康人群和患者群体的绩效监测和联合行动研究中的错误检测和观察学习机制研究提供了一个有前途的工具。
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