Improving Early Prediction of Type 2 Diabetes Mellitus with ECG-DiaNet: A Multimodal Neural Network Leveraging Electrocardiogram and Clinical Risk Factors
Journal:
arXiv
Published Date:
Apr 5, 2025
Abstract
Type 2 Diabetes Mellitus (T2DM) remains a global health challenge,
underscoring the need for early and accurate risk prediction. This study
presents ECG-DiaNet, a multimodal deep learning model that integrates
electrocardiogram (ECG) features with clinical risk factors (CRFs) to enhance
T2DM onset prediction. Using data from Qatar Biobank (QBB), we trained and
validated models on a development cohort (n=2043) and evaluated performance on
a longitudinal test set (n=395) with five-year follow-up. ECG-DiaNet
outperformed unimodal ECG-only and CRF-only models, achieving a higher AUROC
(0.845 vs 0.8217) than the CRF-only model, with statistical significance
(DeLong p<0.001). Reclassification metrics further confirmed improvements: Net
Reclassification Improvement (NRI=0.0153) and Integrated Discrimination
Improvement (IDI=0.0482). Risk stratification into low-, medium-, and high-risk
groups showed ECG-DiaNet achieved superior positive predictive value (PPV) in
high-risk individuals. The model's reliance on non-invasive and widely
available ECG signals supports its feasibility in clinical and community health
settings. By combining cardiac electrophysiology and systemic risk profiles,
ECG-DiaNet addresses the multifactorial nature of T2DM and supports precision
prevention. These findings highlight the value of multimodal AI in advancing
early detection and prevention strategies for T2DM, particularly in
underrepresented Middle Eastern populations.