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ECG quality assessment based on a kernel support vector machine and genetic algorithm with a feature matrix

机译:基于核支持向量机和带特征矩阵遗传算法的心电图质量评估

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We propose a systematic ECG quality classification method based on a kernel support vector machine (KSVM) and genetic algorithm (GA) to determine whether ECGs collected via mobile phone are acceptable or not. This method includes mainly three modules, i.e., lead-fall detection, feature extraction, and intelligent classification. First, lead-fall detection is executed to make the initial classification. Then the power spectrum, baseline drifts, amplitude difference, and other time-domain features for ECGs are analyzed and quantified to form the feature matrix. Finally, the feature matrix is assessed using KSVM and GA to determine the ECG quality classification results. A Gaussian radial basis function (GRBF) is employed as the kernel function of KSVM and its performance is compared with that of the Mexican hat wavelet function (MHWF). GA is used to determine the optimal parameters of the KSVM classifier and its performance is compared with that of the grid search (GS) method. The performance of the proposed method was tested on a database from PhysioNet/Computing in Cardiology Challenge 2011, which includes 1500 12-lead ECG recordings. True positive (TP), false positive (FP), and classification accuracy were used as the assessment indices. For training database set A (1000 recordings), the optimal results were obtained using the combination of lead-fall, GA, and GRBF methods, and the corresponding results were: TP 92.89%, FP 5.68%, and classification accuracy 94.00%. For test database set B (500 recordings), the optimal results were also obtained using the combination of lead-fall, GA, and GRBF methods, and the classification accuracy was 91.80%.
机译:我们提出了一种基于核支持向量机(KSVM)和遗传算法(GA)的系统化ECG质量分类方法,以确定通过手机收集的ECG是否可以接受。该方法主要包括三个模块,即超前下降检测,特征提取和智能分类。首先,执行超前下降检测以进行初始分类。然后,对ECG的功率谱,基线漂移,幅度差和其他时域特征进行分析和量化,以形成特征矩阵。最后,使用KSVM和GA评估特征矩阵,以确定ECG质量分类结果。将高斯径向基函数(GRBF)用作KSVM的核函数,并将其性能与墨西哥帽小波函数(MHWF)的性能进行比较。 GA用于确定KSVM分类器的最佳参数,并将其性能与网格搜索(GS)方法的性能进行比较。在PhysioNet / Computing in Cardiology Challenge 2011的数据库中测试了该方法的性能,该数据库包含1500条12导联心电图记录。真阳性(TP),假阳性(FP)和分类准确性用作评估指标。对于训练数据库集A(1000个记录),使用超前下降,GA和GRBF方法的组合可获得最佳结果,相应的结果为:TP 92.89%,FP 5.68%和分类准确度94.00%。对于测试数据库集B(500条记录),也使用铅下降,GA和GRBF方法的组合获得了最佳结果,分类准确度为91.80%。

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