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An ECG-based feature selection and heartbeat classification model using a hybrid heuristic algorithm

机译:使用混合启发式算法的基于ECG的特征选择和心跳分类模型

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This paper proposes a hybrid model to classify cardiac arrhythmias and select their features in an optimal way. In the proposed model, the Genetic Algorithm was used to optimally select the features, and the Decision Tree with the C4.5 algorithm was applied to the extracted features to classify and train the model. The proposed approach was used to classify data into normal and abnormal classes as well as a 16-class collection of arrhythmias. To evaluate the performance of the proposed model compared with similar methods, we used the UCI arrhythmia dataset along with accuracy, sensitivity, specificity, and average Sen-Spec metrics. The efficiency of the proposed method in both two-class and 16-class modes significantly improved the accuracy, sensitivity, the average of sensitivity and specificity parameters compared to similar methods. Our approach obtained values of 86.96%, 88.88%, and 86.55% for the two-class mode and 78.76%, 76.36%, and 78.69% for the 16-class mode classification in terms of accuracy, sensitivity, and the average Sen-Spec metrics respectively. The above-mentioned values are reported as the highest for the UCI arrhythmia dataset.
机译:本文提出了一种混合模型,对心律不齐进行分类并以最佳方式选择其特征。在提出的模型中,使用遗传算法对特征进行了最优选择,并将带有C4.5算法的决策树应用于提取的特征进行分类和训练。所提出的方法用于将数据分类为正常和异常类,以及心律失常的16类集合。为了评估与类似方法相比所提出模型的性能,我们使用了UCI心律失常数据集以及准确性,敏感性,特异性和平均Sen-Spec指标。与类似方法相比,该方法在两级和16级模式下的效率均显着提高了准确性,灵敏度,灵敏度平均值和特异性参数。就准确性,灵敏度和平均Sen-Spec而言,我们的方法对于两类模式获得了86.96%,88.88%和86.55%的值,对于16类模式分类获得了78.76%,76.36%和78.69%的值。指标。上述值被报告为UCI心律失常数据集的最高值。

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