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Convolutional Neural Networks Based Diagnosis of Myocardial Infarction in Electrocardiograms

机译:基于卷积神经网络的心电图中心肌梗死的诊断

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Myocardial infarction also called heart attack, is the most dangerous Coronary heart disease for humans beings. Portable Electrocardiogram(ECG) device is useful for the identification and control of ECG signals for myocardial infarction. These ECG signals record heart electrical activity and reflect the unusual movement of the heart. Visually, it is difficult to identify a variation in ECG due to its small amplitude and period. Therefore in this paper, we implemented a convolutional neural network (CNN) made of two layers of convolution-pooling, two dense layers and one output layer for the diagnosis of myocardial infarction using ECG. For batter performance, this network uses Leaky ReLU neurons with categorical cross-entropy loss function and the ADAM optimizer algorithm. To avoid the problem of overfitting, we used L2 regularisation method for regularization of the dense layer of CNN. For experimentation, we use the Physikalisch-Technische Bundesanstalt (PTB) diagnostic database. In this database, we obtained results of sensitivity, specificity, and accuracy of 100 %, 99.65%, and 99.82%, respectively, for data taken from the training set. And sensitivity, specificity, and accuracy of 99.88 %, 99.65%, and 99.82%, respectively, on patients, it hasn’t seen before which indicating that the model can achieve excellent classification performance.
机译:心肌梗塞也被称为心脏发作,是人物像的最危险的冠状动脉心脏疾病。便携式心电图(ECG)装置是用于ECG信号的心肌梗死的识别和控制是有用的。这些心电信号记录心脏的电活动,反映心脏的异常运动。视觉上,它是难以识别由于其小的幅度和周期中的ECG的变化。因此,在本文中,我们实现由卷积池两个层,两个致密层和心肌梗死的使用ECG诊断一个输出层的卷积神经网络(CNN)。对于连击性能,此网络使用破RELU神经元分类交叉熵损失函数和ADAM优化算法。为了避免过拟合问题,我们使用CNN的致密层的正则L2正则化方法。对于实验,我们用联邦物理技术研究院(PTB)诊断数据库。在这个数据库中,我们分别获得灵敏性,特异性,和100%,99.65%,99.82和%,准确性的结果,对于来自训练集获得的数据。和敏感性,特异性,和99.88%,99.65%,99.82和%的准确度,分别对患者来说,还没有见过其指示该模型能达到极好的分类性能。

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