Translating Electrocardiograms to Cardiac Magnetic Resonance Imaging Useful for Cardiac Assessment and Disease Screening: A Multi-Center Study
Zhengyao Ding, Ziyu Li, Yujian Hu, Youyao Xu, Chengchen Zhao, Yiheng Mao, Haitao Li, Zhikang Li, Qian Li, Jing Wang, Yue Chen, Mengjia Chen, Longbo Wang, Xuesen Chu, Weichao Pan, Ziyi Liu, Fei Wu, Hongkun Zhang, Ting Chen, Zhengxing Huang

TL;DR
This study introduces CardioNets, a deep learning framework that translates 12-lead ECG signals into CMR-level cardiac parameters and images, enabling scalable, low-cost cardiac assessment and disease screening.
Contribution
CardioNets is the first model to accurately generate CMR-like images and phenotypes from ECG data using cross-modal contrastive learning and generative pretraining.
Findings
Achieved 24.8% improvement in cardiac phenotype regression R2.
Increased disease detection AUCs by up to 39.3%.
Generated images had 36.6% higher SSIM than previous methods.
Abstract
Cardiovascular diseases (CVDs) are the leading cause of global mortality, necessitating accessible and accurate diagnostic tools. While cardiac magnetic resonance imaging (CMR) provides gold-standard insights into cardiac structure and function, its clinical utility is limited by high cost and complexity. In contrast, electrocardiography (ECG) is inexpensive and widely available but lacks the granularity of CMR. We propose CardioNets, a deep learning framework that translates 12-lead ECG signals into CMR-level functional parameters and synthetic images, enabling scalable cardiac assessment. CardioNets integrates cross-modal contrastive learning and generative pretraining, aligning ECG with CMR-derived cardiac phenotypes and synthesizing high-resolution CMR images via a masked autoregressive model. Trained on 159,819 samples from five cohorts, including the UK Biobank (n=42,483) and…
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Taxonomy
TopicsECG Monitoring and Analysis
MethodsFocus · Contrastive Learning
