Electrocardiogram (ECG) is a widely used non-invasive diagnostic tool for heart diseases. Many studies have devised ECG analysis models (e.g., classifiers) to assist diagnosis. As an upstream task, researches have built generative models to synthesize ECG data, which are beneficial to providing training samples, privacy protection, and annotation reduction. However, previous generative methods for ECG often neither synthesized multi-view data, nor dealt with heart disease conditions. In this paper, we propose a novel disease-aware generative adversarial network for multi-view ECG synthesis called ME-GAN, which attains panoptic electrocardio representations conditioned on heart diseases and projects the representations onto multiple standard views to yield ECG signals. Since ECG manifestations of heart diseases are often localized in specific waveforms, we propose a new "mixup normalization" to inject disease information precisely into suitable locations. In addition, we propose a view discriminator to revert disordered ECG views into a pre-determined order, supervising the generator to obtain ECG representing correct view characteristics. Besides, a new metric, rFID, is presented to assess the quality of the synthesized ECG signals. Comprehensive experiments verify that our ME-GAN performs well on multi-view ECG signal synthesis with trusty morbid manifestations.
翻译:心电图(ECG)是一种广泛使用的心脏疾病非侵入性诊断工具,许多研究都设计了ECG分析模型(如分类者)以协助诊断;作为上游任务,研究建立了综合ECG数据的基因化模型,这些模型有助于提供培训样本、保护隐私和减少批注;然而,以前ECG的基因化方法往往既不综合多视图数据,也不处理心脏病状况;在本文中,我们提议建立一个新型的疾病觉变异对抗网络,称为ME-GAN,以心脏病为条件,获得全光电心电图显示,并预测在多个标准观点上进行表述,以生成ECG信号;由于ECG表现经常在特定的波形中被本地化,我们提议一种新的“混合正常化”方法,将疾病信息准确地输入到合适的地点;此外,我们提议一种观点歧视者,将错乱的ECG观点恢复到一个预先确定的顺序,监督发电机获得ECG,以正确的视觉特征为代表。此外,一个新的指标、rFID, 将心脏病表现在ECG综合的模型上进行综合了ECG的质量。