论文标题
基于辅助分类器的生成对抗网络的全自动心电图分类系统
Fully Automatic Electrocardiogram Classification System based on Generative Adversarial Network with Auxiliary Classifier
论文作者
论文摘要
本文介绍了具有高性能的基于生成的对抗网络(GAN)的全自动心电图(ECG)心律失常分类系统。我们的GAN中的发电机(G)旨在生成以不同心律失常类别进行数据增强的各种耦合矩阵输入。我们设计的判别器(D)对真实和生成的ECG耦合矩阵输入进行了训练,并在完成我们的GAN培训后将其提取为心律失常分类器。通过包括使用无监督算法估计的患者特异性正常搏动进行微调后,我们的全自动系统表现出较高的自动化系统,并在g beats(veb beatia and vebeia)上,我们的全自动系统表现出了较高的整体分类性能。它超过了几个最先进的自动分类器,并且可以以与某些专家辅助方法相似的水平进行。特别是,SVEB的F1得分比表现最好的自动系统提高了13%。此外,已经实现了对SVEB(87%)和VEB(93%)检测的高灵敏度,这对于实际诊断具有很高的价值。因此,我们建议基于心电图的ACE-GAN(具有辅助分类器的生成对抗网络)基于心电图的自动系统可以是高通量临床筛查实践的有前途且可靠的工具,而无需任何手动干预或专家辅助标签。
A generative adversarial network (GAN) based fully automatic electrocardiogram (ECG) arrhythmia classification system with high performance is presented in this paper. The generator (G) in our GAN is designed to generate various coupling matrix inputs conditioned on different arrhythmia classes for data augmentation. Our designed discriminator (D) is trained on both real and generated ECG coupling matrix inputs, and is extracted as an arrhythmia classifier upon completion of training for our GAN. After fine-tuning the D by including patient-specific normal beats estimated using an unsupervised algorithm, and generated abnormal beats by G that are usually rare to obtain, our fully automatic system showed superior overall classification performance for both supraventricular ectopic beats (SVEB or S beats) and ventricular ectopic beats (VEB or V beats) on the MIT-BIH arrhythmia database. It surpassed several state-of-art automatic classifiers and can perform on similar levels as some expert-assisted methods. In particular, the F1 score of SVEB has been improved by up to 13% over the top-performing automatic systems. Moreover, high sensitivity for both SVEB (87%) and VEB (93%) detection has been achieved, which is of great value for practical diagnosis. We, therefore, suggest our ACE-GAN (Generative Adversarial Network with Auxiliary Classifier for Electrocardiogram) based automatic system can be a promising and reliable tool for high throughput clinical screening practice, without any need of manual intervene or expert assisted labeling.