Deep learning to predict left ventricular hypertrophy from the electrocardiogram

EP Europace Journal

23 January 2026
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ESC Journals IMAGING Cardiac Magnetic Resonance (CMR) PREVENTIVE CARDIOLOGY Risk Factors and Prevention

Abstract

AbstractAims

Left ventricular hypertrophy (LVH) is a strong predictor of cardiovascular disease. We previously compared supervised machine learning techniques to classify cardiac magnetic resonance (CMR)-derived LVH using electrocardiogram (ECG) and clinical variables in 37 534 UK Biobank participants, obtaining an area under the receiving operating curve (AUROC) of 0.85, but with limited specificity and requiring external validation. In this study, we develop a deep learning (DL) model to improve classification with external evaluation in the Study of Health in Pomerania (SHIP).

Methods and results

We analysed 12-lead ECGs of 48 835 participants from the UK Biobank imaging study. The dataset was split into a training set (70%), validation set (15%), and test set (15%) for performance evaluation. The model architecture was a fully convolutional network, for which the input was the participants’ median ECG and clinical variables and the predicted indexed left ventricular mass (iLVM) as the output. A subsequent logistic regression model was used to recalibrate iLVM predictions. In UK Biobank, 717 (1.5%) participants had CMR-derived LVH and the AUROC for the DL model was 0.97. The ECG components most predictive of LVH were the QRS complex and ventricular rate. The DL model outperformed our supervised algorithms, previous DL modelling efforts and clinical ECG benchmarks. There was modest generalizability of the DL model to 1423 participants in SHIP (AUROC 0.78), with differences in clinical profile, ECG acquisition, and CMR labelling as important factors.

Conclusion

Our findings support the feasibility of scalable DL-based screening tools for the prediction of LVH from the ECG, whilst highlighting the need for model development using larger datasets with greater diversity to ensure generalizability.

Contributors

Nay Aung
Nay Aung

Author

Queen Mary University of London London , United Kingdom of Great Britain & Northern Ireland

Bishwas Chamling
Bishwas Chamling

Author

University Hospital of Greifswald Greifswald , Germany

Marcus Dörr
Marcus Dörr

Author

Universitaetsmedizin Greifswald Greifswald , Germany

Steffen E Petersen
Steffen E Petersen

Author

Queen Mary University of London London , United Kingdom of Great Britain & Northern Ireland

Patricia B Munroe
Patricia B Munroe

Author

Queen Mary University of London London , United Kingdom of Great Britain & Northern Ireland

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