Generation Of 12-Lead Electrocardiogram With SubjeCT-Specific, Image-Derived Characteristics Using A Conditional Variational Autoencoder
Yuling Sang, Marcel Beetz, Vicente Grau
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Deep learning models have proven their value in electrocardiogram (ECG) analysis. Among these, deep generative models have shown their ability in the generation of ECGs. In this paper, we propose a conditional variational auto-encoder(cVAE) to automatically generate realistic 12-lead ECG signals. Our method differs from previous papers in that (i) it generates complete 12-lead studies and (ii) generated ECGs can be adjusted to correspond to specific subject characteristics, in particular those from images. We demonstrate the ability of the model to adjust to age, sex and Body Mass Index (BMI) values. Our model is the first to incorporate imaging information by including heart position and orientation as input conditions, to analyse the influence of anatomical characteristics on generated ECG morphology. The network shows high accuracy and sensitivity to different conditions. In addition, our method can extract a ten-dimensional latent space containing interpreted features of the 12 ECG leads, which correspond to interpretable ECG features.