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Identification of Atrial Fibrillation from Electrocardiogram Signals Based on Deep Neural Network

机译:基于深神经网络的心电图信号识别心房颤动

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摘要

As the most common continuous arrhythmia, atrial fibrillation is related to significant morbidity and death rate. Furthermore, the automatic detection of atrial fibrillation remains a challenging work all the time. This paper develops a deep neural network for automatic atrial fibrillation identification based on stacked sparse autoencoder and softmax layer. Nineteen features are extracted from each electrocardiogram sample through Hilbert-Huang transform, wavelet decomposition and statistical measures. Stacked sparse autoencoder including two layer sparse autoencoder is employed to learn advanced features. The softmax classification layer is connected to the top of the stacked sparse autoencoder, in order to map the advanced features into the classes of the electrocardiogram samples. Experimental results illustrate that compared with extreme learning machine and support vector machine, the identification performance of the deep neural network is better and its value of accuracy, sensitivity, specificity, precision of atrial fibrillation reach 96.00%, 90.00%, 98.00%, 93.75%, respectively. Compared with some super existing methods, the deep neural network has the better performance. Therefore, the deep neural network proposed in this task could be effective in the automatic detection of atrial fibrillation.
机译:作为最常见的连续心律失常,心房颤动与显着的发病率和死亡率有关。此外,心房颤动的自动检测仍然是一直有挑战性的工作。本文开发了一种基于堆积稀疏自动化器和软墨型层的自动心房颤动识别的深神经网络。通过Hilbert-Huang变换,小波分解和统计措施从每个心电图样本中提取19个特征。堆叠稀疏的AutoEncoder包括两层稀疏的AutoEncoder,用于学习高级功能。 SoftMax分类层连接到堆叠的稀疏AutoEncoder的顶部,以便将高级功能映射到心电图样本的类中。实验结果表明,与极端学习机和支持向量机相比,深神经网络的鉴定性能更好,其精度,灵敏度,特异性,心房颤动精度达到96.00%,98.00%,93.75% , 分别。与一些超级现有方法相比,深度神经网络具有更好的性能。因此,在该任务中提出的深度神经网络可以在自动检测心房颤动中有效。

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