首页> 外文会议>2011 11th International Conference on Intelligent Systems Design and Applications >Comparative study of morphological ECG features classificators: An application on athletes undergone to acute physical stress
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Comparative study of morphological ECG features classificators: An application on athletes undergone to acute physical stress

机译:心电图形态特征分类器的比较研究:在运动员遭受急性身体压力时的应用

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Several methods for automatic heartbeat classification have been developed, but few efforts have been devoted to the recognition of the small ECG changes occurring in healthy people as a response to stimuli. Herein, we describe a procedure for the extraction, selection and classification of features summarizing morphological ECG changes. The proposed procedure is composed by the following stages: 1) extraction of a set of heartbeat morphological features; 2) selection of a subset of features; 3) subject normalization 4) classification. The selection of a subset of features enabled us to summarize ECG changes with only three non redundant features. In addition we performed a comparison between four classificators: k-nearest-neighbors (k-NN), artificial neural networks (ANN), support vector machines (SVM) and naive Bayes classifiers (nB). In order to cope with the possible non linear separation problem, we evaluated two strategies: a subject factor normalization on feature space and the usage of kernel functions for classifiers. The results of the comparison recommended the usage of subject normalization, irrespectively from the classificator: with or without normalization we had the best performance of classification for the linear-SVM and ANN.
机译:已经开发了几种用于自动心跳分类的方法,但是很少有人致力于识别健康人对刺激的响应而产生的微小ECG变化。在本文中,我们描述了提取,选择和分类特征的程序,这些特征概括了形态ECG的变化。所提出的程序由以下阶段组成:1)提取一组心跳形态特征; 2)选择特征子集; 3)主题归一化4)分类。选择功能的子集使我们能够仅使用三个非冗余功能来总结ECG的变化。此外,我们在四个分类器之间进行了比较:k最近邻(k-NN),人工神经网络(ANN),支持向量机(SVM)和朴素贝叶斯分类器(nB)。为了解决可能的非线性分离问题,我们评估了两种策略:特征空间上的主题因子归一化和分类器使用内核函数。比较的结果推荐使用主题归一化,而不管来自分类器:不论是否进行归一化,我们对线性SVM和ANN的分类性能均最佳。

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