Tadesse Girmaw Abebe, Zhu Tingting, Liu Yong, Zhou Yingling, Chen Jiyan, Tian Maoyi, Clifton David
Annu Int Conf IEEE Eng Med Biol Soc. 2019 Jul;2019:4262-4265. doi: 10.1109/EMBC.2019.8857737.
While cardiovascular diseases (CVDs) are commonly diagnosed by cardiologists via inspecting electrocardiogram (ECG) waveforms, these decisions can be supported by a data-driven approach, which may automate this process. An automatic diagnostic approach often employs hand-crafted features extracted from ECG waveforms. These features, however, do not generalise well, challenged by variation in acquisition settings such as sampling rate and mounting points. Existing deep learning (DL) approaches, on the other hand, extract features from ECG automatically but require construction of dedicated networks that require huge data and computational resource if trained from scratch. Here we propose an end-to-end trainable cross-domain transfer learning for CVD classification from ECG waveforms, by utilising existing vision-based CNN frameworks as feature extractors, followed by ECG feature learning layers. Because these frameworks are designed for image inputs, we employ a stacked spectrogram representation of multi-lead ECG waveforms as a preprocessing step. We also proposed a fusion of multiple ECG leads, using plausible stacking arrangements of the spectrograms, to encode their spatial relations. The proposed approach is validated on multiple ECG datasets and competitive performance is achieved.
虽然心血管疾病(CVD)通常由心脏病专家通过检查心电图(ECG)波形来诊断,但这些诊断决策可以通过数据驱动的方法来支持,这种方法可能会使这一过程自动化。自动诊断方法通常采用从ECG波形中提取的手工特征。然而,这些特征的泛化能力不佳,会受到采集设置(如采样率和安装点)变化的挑战。另一方面,现有的深度学习(DL)方法可以自动从ECG中提取特征,但需要构建专用网络,如果从头开始训练,则需要大量数据和计算资源。在这里,我们提出了一种用于从ECG波形进行CVD分类的端到端可训练跨域迁移学习方法,通过利用现有的基于视觉的卷积神经网络(CNN)框架作为特征提取器,随后是ECG特征学习层。由于这些框架是为图像输入设计的,我们采用多导联ECG波形的堆叠频谱图表示作为预处理步骤。我们还提出了一种融合多个ECG导联的方法,使用频谱图合理的堆叠排列来编码它们的空间关系。所提出的方法在多个ECG数据集上得到了验证,并取得了具有竞争力的性能。