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Error-Rate Analysis for ECG Classification in Diversity Scenario

机译:多样性场景中ECG分类的差错率分析

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This paper proposes with error-rate for an ECG classifier to support doctors in clinical diagnosis. In particular, ECG signals, which are diversity, may be obtained from various ECG machines on many patients. Therefore, ECG classification has been a critical challenge for scientists in recent years. In the previous studies, the ECG classification produced a promised precision. However, diversity phenomenon on patients had not been considered yet to be able to increase precision. In this paper, a performance of a state-of-art ECG-classifier in diversity scenario will be analyzed using error-rate. In this research, training and testing data are arranged to be different on MIT dataset. Thus, ECG data are separated and then extracted into each heartbeat using a discrete wavelet transform algorithm. Extracted features are trained using a state-of-art neural network method in diversity and non-diversity scenarios. Experimental results demonstrated that the accuracy of the separated data is higher using the ECG classification.
机译:本文提出了ECG分类器的误差率,以支持临床诊断中的医生。特别地,可以从许多患者的各种ECG机器获得多样性的ECG信号。因此,ECG分类近年来对科学家犯了一项重要挑战。在以前的研究中,ECG分类产生了承诺的精确度。然而,患者的多样性现象尚未被认为能够提高精度。在本文中,将使用误差率分析在分集场景中的最先进的ECG-甲板分类器的性能。在本研究中,培训和测试数据被安排在MIT数据集中不同。因此,使用离散小波变换算法分离ECG数据,然后用离散小波变换算法提取到每个心跳中。利用最先进的神经网络方法在多样性和非分集场景中进行提取的特征。实验结果表明,使用ECG分类,分离数据的准确性更高。

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