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Use of genetic algorithm for the selection of EEG features

机译:遗传算法选择EEG功能

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Genetic Algorithm (GA) is a popular optimization technique that can detect the global optimum of a multivariable function containing several local optima. GA has been widely used in the field of biomedical informatics, especially in the context of designing decision support systems that classify biomedical signals or images into classes of interest. The aim of this paper is to present a methodology, based on GA, for the selection of the optimal subset of features that can be used for the efficient classification of Event Related Potentials (ERPs), which are recorded during the observation of correct or incorrect actions. In our experiment, ERP recordings were acquired from sixteen (16) healthy volunteers who observed correct or incorrect actions of other subjects. The brain electrical activity was recorded at 47 locations on the scalp. The GA was formulated as a combinatorial optimizer for the selection of the combination of electrodes that maximizes the performance of the Fuzzy C Means (FCM) classification algorithm. In particular, during the evolution of the GA, for each candidate combination of electrodes, the well-known (Σ, Φ, Ω) features were calculated and were evaluated by means of the FCM method. The proposed methodology provided a combination of 8 electrodes, with classification accuracy 93.8%. Thus, GA can be the basis for the selection of features that discriminate ERP recordings of observations of correct or incorrect actions.
机译:遗传算法(GA)是一种流行的优化技术,可以检测包含几个本地Optima的多变量功能的全局最优。 GA已广泛用于生物医学信息学领域,特别是在设计将生物医学信号或图像分类为感兴趣的类别的决策支持系统的背景下。本文的目的是介绍基于GA的方法,用于选择可用于有效分类的事件相关电位(ERP)的有效分类的最佳特征子集,这些功能在观察到正确或不正确时记录行动。在我们的实验中,ERP录音是从十六(16)名健康志愿者收购的,他们观察到其他科目的正确或不正确的行为。在头皮上的47个位置记录脑电活动。将GA配制为组合优化器,用于选择最大化模糊C装置(FCM)分类算法的性能的电极组合。特别地,在GA的演变期间,对于电极的每个候选组合,计算众所周知的(σ,φ,ω)特征,并通过FCM方法评估。所提出的方法提供了8个电极的组合,分类精度为93.8%。因此,GA可以是选择特征的基础,这些功能区分对正确或不正确动作的观察的ERP录制。

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