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Aims: Coronary artery disease (CAD) incidence continues to rise with an increasing burden of chronic coronary disease (CCD). Current probability-based risk assessment for obstructive CAD (oCAD) lacks sufficient diagnostic accuracy. We aimed to develop and validate a deep learning (DL) algorithm utilizing electrocardiogram (ECG) waveforms and clinical features to predict oCAD in patients with suspected CCD.
Methods And Results: The study includes subjects undergoing invasive angiography for evaluation of CCD over a 4-year period at a quaternary care centre. oCAD was defined as performance of percutaneous coronary intervention (PCI) based on assessment by interventional cardiologists during elective angiography. DL models were developed for ECG waveforms alone (DL-ECG), clinical features from standard risk scores (DL-Clinical), and the combination of ECG waveforms and clinical features (DL-MM); a commonly used pre-test probability estimation tool from the CAD Consortium study was used for comparison (CAD2) [3]. The CAD2 model [AUC 0.733 (0.717-0.750)] had similar performance as the DL-Clinical model [AUC 0.762 (0.746-0.778)]. The DL-ECG model [AUC 0.741 (0.726-0.758)] had similar performance as both the clinical feature models. The DL-MM model [AUC 0.807 (0.793-0.822)] had a superior performance. Validation in an external cohort demonstrated similar performance in the DL-MM [AUC 0.716 (0.707-0.726)] and CAD2 risk score [AUC 0.715 (0.705-0.724)].
Conclusion: A multi-modality DL model utilizing ECG waveforms and clinical risk factors can improve prediction of oCAD in CCD compared with risk-factor based models. Prospective research is warranted to determine whether incorporating DL methods in ECG analysis improves diagnosis of oCAD and outcomes in CCD.
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http://dx.doi.org/10.1093/ehjdh/ztaf020 | DOI Listing |
Circulation
September 2025
Toulouse University Hospital, France (P.D., P.M., M.B.).
J Physiol
September 2025
Gottfried Schatz Research Center: Division of Medical Physics and Biophysics, Medical University of Graz, Graz, Austria.
Left ventricular hypertrophy (LVH) is characterised by an increase in the mass and volume of the left ventricle, typically manifested as ventricular wall thickening and/or dilation. Due to its potential to cause severe, life-threatening complications, ongoing research continues to explore its underlying mechanisms. This study aimed to determine how wall thickening and dilation specifically impact ECG waveforms, isolating these anatomical alterations without considering potential electrophysiological changes associated with LVH - a scenario achievable only through computational modelling.
View Article and Find Full Text PDFComput Biol Med
August 2025
Polytechnic University of Madrid, Department of Audiovisual and Communications Engineering, Madrid, Spain.
ECG delineation, which involves detecting key waveform features such as P, QRS, and T waves, is essential for accurate cardiac monitoring and diagnosis. In a recent study, the authors introduced the Adaptive Trend Filtering (ATF) algorithm, which effectively identifies local extrema in ECG signals for both denoising and delineation, demonstrating strong performance compared to state-of-the-art methods. However, its implementation using the Alternating Direction Method of Multipliers (ADMM) resulted in long execution times, limiting its practical application.
View Article and Find Full Text PDFIEEE J Biomed Health Inform
September 2025
The ballistocardiogram (BCG) is an unobtrusive measurement that shows promise for long-term, home-based cardiovascular monitoring and early disease screening. However, the lack of standardized clinical interpretations for BCG waveforms, compared to electrocardiogram (ECG) signals, limits its direct application in diagnostic decision-making. Although the ECG synthesis from BCG provides a viable solution, the significant differences in semantic density and spectral distribution between the two types of signals pose challenges to this process.
View Article and Find Full Text PDFIEEE J Biomed Health Inform
August 2025
The physiological signals obtained from advanced sensors, combined with deep learning techniques for classification and regression tasks, have become a core driving force in enhancing smart healthcare. Recently, dense prediction tasks for physiological signals-aimed at generating predictions that are closely aligned with the input signal to enable fine-grained analysis-have garnered increasing attention. The UNet family, often combined with sophisticated task-specific customizations, has become a popular choice to improve prediction performance.
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