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Neural Network Classifier Based on the Features of Multi-lead ECG

机译:基于多导心电图特征的神经网络分类器

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摘要

In this study, two methods for the electrocardiogram (ECG) QRS waves detection were presented and compared. One hand, a modified approach of the linear approximation distance thresholding (LADT) algorithm was studied and the features of the ECG were gained for the later work.. The other hand, Mexican-hat wavelet transform was adopted to detect the character points of ECG. A part of the features of the ECG were used to train the RBF network, and then all of them were used to examine the performance of the network. The algorithms were tested with ECG signals of MIT-BIH, and compared with other tests, the result shows that the detection ability of the Mexican-hat wavelet transform is very good for its quality of time-frequency representation and the ECG character points was represented by the local extremes of the transformed signals and the correct rate of QRS detection rises up to 99.9%. Also, the classification performance with its result is so good that the correct rate with the trained wave is 100%, and untrained wave is 86.6%.
机译:在这项研究中,提出了两种心电图(ECG)QRS波检测方法并进行了比较。一方面,研究了线性近似距离阈值化(LADT)算法的一种改进方法,并获得了ECG的特征,以用于后续工作。另一方面,采用了墨西哥帽小波变换检测ECG的特征点。 ECG的部分功能用于训练RBF网络,然后全部用于检查网络的性能。用MIT-BIH的ECG信号对该算法进行了测试,并与其他测试结果进行比较,结果表明墨西哥帽小波变换的检测能力对时频表示质量有很好的表现,并表示了ECG特征点通过转换信号的局部极值,QRS检测的正确率可提高99.9%。而且,分类结果及其结果是如此之好,以至于训练波的正确率为100%,未训练波的正确率为86.6%。

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