Electrocardiogram (ECG) signals play critical roles in the clinical screening and diagnosis of many types of cardiovascular diseases. Despite deep neural networks that have been greatly facilitated computer-aided diagnosis (CAD) in many clinical tasks, the variability and complexity of ECG in the clinic still pose significant challenges in both diagnostic performance and clinical applications. In this paper, we develop a robust and scalable framework for the clinical recognition of ECG. Considering the fact that hospitals generally record ECG signals in the form of graphic waves of 2-D images, we first extract the graphic waves of 12-lead images into numerical 1-D ECG signals by a proposed bi-directional connectivity method. Subsequently, a novel deep neural network, namely CRT-Net, is designed for the fine-grained and comprehensive representation and recognition of 1-D ECG signals. The CRT-Net can well explore waveform features, morphological characteristics and time domain features of ECG by embedding convolution neural network(CNN), recurrent neural network(RNN), and transformer module in a scalable deep model, which is especially suitable in clinical scenarios with different lengths of ECG signals captured from different devices. The proposed framework is first evaluated on two widely investigated public repositories, demonstrating the superior performance of ECG recognition in comparison with state-of-the-art. Moreover, we validate the effectiveness of our proposed bi-directional connectivity and CRT-Net on clinical ECG images collected from the local hospital, including 258 patients with chronic kidney disease (CKD), 351 patients with Type-2 Diabetes (T2DM), and around 300 patients in the control group. In the experiments, our methods can achieve excellent performance in the recognition of these two types of disease.
翻译:心电图(ECG)信号在临床筛选和诊断许多类型心血管疾病的临床检查和诊断中发挥着关键作用。尽管在很多临床任务中大大便利了计算机辅助诊断(CAD)的深度神经网络在许多临床任务中大大促进了计算机辅助诊断(CAD)的诊断,但诊所ECG的变异性和复杂性在诊断性表现和临床应用方面仍构成重大挑战。在本文件中,我们为ECG的临床识别开发了一个强大和可扩展的框架。考虑到医院通常以2D图像的图形波的形式记录ECG信号,我们首先通过拟议的双向神经网络图像(RNN)将12先导图像的图形波提取为数字1-DECG信号。随后,一个新的深层次神经网络(CRT-NetNet),即CRT-Net(CRT-Net)网络的变异性和复杂性仍然设计为1D EECG信号的精确度表现和识别。CRT网络的这些功能特征、形态特征特征特征和时间域域特征可以通过嵌嵌入2的C-ECRRRRRRR 网络(RN) 和变动模块,这在临床模型上特别适合,在临床模型上展示了我们所测测测测测测测测的精度测试的精度,在两种的精确度测试中。