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I-Vector-Based Patient Adaptation of Deep Neural Networks for Automatic Heartbeat Classification

机译:基于矢量的自动心跳分类深神经网络的患者适应

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摘要

Automatic classification of electrocardiogram (ECG) signals is important for diagnosing heart arrhythmias. A big challenge in automatic ECG classification is the variation in the waveforms and characteristics of ECG signals among different patients. To address this issue, this paper proposes adapting a patient-independent deep neural network (DNN) using the information in the patient-dependent identity vectors (i-vectors). The adapted networks, namely i-vector adapted patient-specific DNNs (iAP-DNNs), are tuned toward the ECG characteristics of individual patients. For each patient, his/her ECG waveforms are compressed into an i-vector using a factor analysis model. Then, this i-vector is injected into the middle hidden layer of the patient-independent DNN. Stochastic gradient descent is then applied to fine-tune the whole network to form a patient-specific classifier. As a result, the adaptation makes use of not only the raw ECG waveforms from the specific patient but also the compact representation of his/her ECG characteristics through the i-vector. Analysis on the hidden-layer activations shows that by leveraging the information in the i-vectors, the iAP-DNNs are more capable of discriminating normal heartbeats against arrhythmic heartbeats than the networks that use the patient-specific ECG only for the adaptation. Experimental results based on the MIT-BIH database suggest that the iAP-DNNs perform better than existing patient-specific classifiers in terms of various performance measures. In particular, the sensitivity and specificity of the existing methods are all under the receiver operating characteristic curves of the iAP-DNNs.
机译:自动分类心电图(ECG)信号对于诊断心性心律失常是重要的。自动ECG分类中的一个大挑战是不同患者之间的波形和ECG信号的波形和特征的变化。为了解决这个问题,本文建议使用患者依赖性身份向量(I-VICTORS)中的信息来调整患者独立的深神经网络(DNN)。适应的网络,即I - 载体适应的患者特定的DNN(IAP-DNN),被调整为个体患者的ECG特征。对于每位患者,他/她的ECG波形使用因子分析模型压缩到I形载体中。然后,将该I形向量注入患者无关的DNN的中间隐藏层。然后将随机梯度下降应用于微调整个网络以形成患者特定的分类器。结果,适应不仅利用来自特定患者的原始ECG波形,而且通过I形向量使用他/她的ECG特征的紧凑表示。关于隐藏层激活的分析表明,通过利用I-vors中的信息,IAP-DNN更能够判别对心律失常心跳的正常心跳,而不是仅用于适应患者特定的心电图的网络。基于MIT-BIH数据库的实验结果表明IAP-DNN在各种性能措施方面比现有的患者专用分类器更好。特别地,现有方法的敏感性和特异性都在IAP-DNN的接收器操作特性曲线下。

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