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首页> 外文期刊>Journal of mechanics in medicine and biology >ARRHYTHMIA DISEASE DIAGNOSIS USING NEURAL NETWORK, SVM, AND GENETIC ALGORITHM-OPTIMIZED k-MEANS CLUSTERING
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ARRHYTHMIA DISEASE DIAGNOSIS USING NEURAL NETWORK, SVM, AND GENETIC ALGORITHM-OPTIMIZED k-MEANS CLUSTERING

机译:神经网络,SVM和遗传算法优化的k均值聚类诊断心律失常

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摘要

This work aims at presenting a methodology for electrocardiogram (ECG)-based arrhythmia disease detection using genetic algorithm (GA)-optimized fc-means clustering. The open-source ECG data from. MIT-BIH arrhythmia database and MIT-BIH normal sinus rhythm database are subjected to a sequence of steps including segmentation using R-point detection, extraction of features using principal component analysis (PCA), and pattern classification. Here, the classical classifiers viz., fc-means clustering, error back propagation neural network (EBPNN), and support vector machine (SVM) have been initially attempted and subsequently m-fold (m = 3) cross validation is used to reduce the bias during training of the classifier. The average classification accuracy is computed as the average over all the three folds. It is observed that EBPNN and SVM with different order polynomial kernel provide significant accuracies in comparison with fc-means one. In fact, the parameters (centroids) of fc-means algorithm are locally optimized by minimizing its objective function. In order to overcome this limitation, a global optimization technique viz., GA is suggested here and implemented to find more robust parameters of fc-means clustering. Finally, it is shown that GA-optimized fc-means algorithm enhances its accuracy to those of other classifiers. The results are discussed and compared. It is concluded that the GA-optimized fc-means algorithm is an alternate approach for classification whose accuracy will be near to that of supervised (viz., EBPNN and SVM) classifiers.
机译:这项工作旨在介绍一种使用遗传算法(GA)优化的fc-means聚类检测基于心电图(ECG)的心律失常疾病的方法。来自开源ECG数据。 MIT-BIH心律失常数据库和MIT-BIH正常窦性心律数据库经过一系列步骤,包括使用R点检测进行分割,使用主成分分析(PCA)提取特征以及模式分类。在这里,最初尝试使用经典分类器,即fc-means聚类,误差反向传播神经网络(EBPNN)和支持向量机(SVM),随后使用m倍(m = 3)交叉验证来减少在训练分类器时出现偏见。将平均分类准确性计算为所有三折的平均值。可以看出,与fc-means相比,具有不同阶多项式核的EBPNN和SVM具有显着的精度。实际上,fc-means算法的参数(质心)是通过最小化其目标函数来局部优化的。为了克服此限制,此处提出了一种全局优化技术,即GA,该技术已被实施以发现fc-means聚类的更鲁棒参数。最终,证明了GA优化的fc-means算法与其他分类器相比提高了其准确性。结果进行了讨论和比较。结论是,GA优化的fc-means算法是另一种分类方法,其准确性将接近监督分类器(即EBPNN和SVM)。

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