Electrocardiogram (ECG) acquisition requires an automated system and analysis pipeline for understanding specific rhythm irregularities. Deep neural networks have become a popular technique for tracing ECG signals, outperforming human experts. Despite this, convolutional neural networks are susceptible to adversarial examples that can misclassify ECG signals and decrease the model's precision. Moreover, they do not generalize well on the out-of-distribution dataset. The GAN architecture has been employed in recent works to synthesize adversarial ECG signals to increase existing training data. However, they use a disjointed CNN-based classification architecture to detect arrhythmia. Till now, no versatile architecture has been proposed that can detect adversarial examples and classify arrhythmia simultaneously. To alleviate this, we propose a novel Conditional Generative Adversarial Network to simultaneously generate ECG signals for different categories and detect cardiac abnormalities. Moreover, the model is conditioned on class-specific ECG signals to synthesize realistic adversarial examples. Consequently, we compare our architecture and show how it outperforms other classification models in normal/abnormal ECG signal detection by benchmarking real world and adversarial signals.
翻译:深神经网络已成为追踪ECG信号的流行技术,其表现优异的人类专家。尽管如此,进化神经网络容易出现对抗性例子,有可能对ECG信号进行错误分类并降低模型的精确度。此外,它们没有在分配外数据集中广泛推广。GAN结构在最近的工作中使用了综合对抗性ECG信号以增加现有培训数据。然而,它们使用基于CNN的脱节性分类结构来检测心律错乱。到目前为止,还没有提出能够同时检测对抗性实例和对失灵分类的多功能结构。为了减轻这一点,我们提议建立一个新型的有条件基因对称网络,同时生成不同类别的ECG信号并检测心律异常。此外,该模型以特定类别ECG信号为条件,以综合现实的对抗性实例。因此,我们比较了我们的架构,并表明它如何在正常/不正常的ECG信号探测中,通过对真实的世界和对抗性信号进行基准比对等。