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A new BAT optimization algorithm based feature selection method for electrocardiogram heartbeat classification using empirical wavelet transform and Fisher ratio

机译:一种新的BAT优化算法,基于BAT优化算法,用于使用经验小波变换和FISHER比率的心电图心跳分类的特征选择方法

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摘要

In this paper, a novel feature selection method is proposed for the categorization of electrocardiogram (ECG) heartbeats. The proposed technique uses the Fisher ratio and BAT optimization algorithm to obtain the best feature set for ECG classification. The MIT-BIH arrhythmia database contains sixteen classes of the ECG heartbeats. The MIT-BIH ECG arrhythmia database divided into intra-patient and inter-patient schemes to be used in this study. The proposed feature selection methodology works in following steps: firstly, features are extracted using empirical wavelet transform (EWT) and then higher-order statistics, as well as symbolic features, are computed for each decomposed mode of EWT. Thereafter, the complete feature vector is obtained by the conjunction of EWT based features and RR interval features. Secondly, for feature selection, the Fisher ratio is utilized. It is optimized by using BAT algorithm so as to have maximal discrimination of the between classes. Finally, in the classification step, the k-nearest neighbor classifier is used to classify the heartbeats. The performance measures i.e., accuracy, sensitivity, positive predictivity, specificity for intra-patient scheme are 99.80%, 99.80%, 99.80%, 99.987% and for inter-patient scheme are 97.59%, 97.589%, 97.589%, 99.196% respectively. The proposed feature selection technique outperforms the other state of art feature selection methods.
机译:本文提出了一种新颖的特征选择方法,用于分类心电图(ECG)心跳。该提出的技术使用Fisher比率和BAT优化算法来获得ECG分类的最佳功能。 MIT-BIH心律失常数据库包含十六类ECG心跳。 MIT-BIH ECG心律失常数据库分为患者内部和患有患者间的计划。所提出的特征选择方法在以下步骤中工作:首先,使用经验小波变换(EWT)提取特征,然后计算高阶统计,以及符号特征,用于EWT的每个分解模式。此后,通过基于EWT的特征和RR间隔特征的结合获得完整的特征向量。其次,对于特征选择,使用Fisher比率。通过使用BAT算法优化,以便具有类别之间的最大辨别。最后,在分类步骤中,k最近邻分类器用于对心跳分类。性能措施即,准确性,敏感性,阳性预测性,患者内部方案的特异性为99.80%,99.80%,99.80%,99.987%和患者间方案分别为97.59%,97.589%,97.589%,99.196%。所提出的特征选择技术优于其他艺术特征选择方法的其他状态。

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