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Background: Undetected atrial fibrillation (AF) poses a significant risk of stroke and cardiovascular mortality. However, diagnosing AF in real-time can be challenging as the arrhythmia is often not captured instantly. To address this issue, a deep-learning model was developed to diagnose AF even during periods of arrhythmia-free windows.
Methods: The proposed method introduces a novel approach that integrates clinical data and electrocardiograms (ECGs) using a colorization technique. This technique recolors ECG images based on patients' demographic information while preserving their original characteristics and incorporating color correlations from statistical data features. Our primary objective is to enhance atrial fibrillation (AF) detection by fusing ECG images with demographic data for colorization. To ensure the reliability of our dataset for training, validation, and testing, we rigorously maintained separation to prevent cross-contamination among these sets. We designed a Dual-input Mixed Neural Network (DMNN) that effectively handles different types of inputs, including demographic and image data, leveraging their mixed characteristics to optimize prediction performance. Unlike previous approaches, this method introduces demographic data through color transformation within ECG images, enriching the diversity of features for improved learning outcomes.
Results: The proposed approach yielded promising results on the independent test set, achieving an impressive AUC of 83.4%. This outperformed the AUC of 75.8% obtained when using only the original signal values as input for the CNN. The evaluation of performance improvement revealed significant enhancements, including a 7.6% increase in AUC, an 11.3% boost in accuracy, a 9.4% improvement in sensitivity, an 11.6% enhancement in specificity, and a substantial 25.1% increase in the F1 score. Notably, AI diagnosis of AF was associated with future cardiovascular mortality. For clinical application, over a median follow-up of 71.6 ± 29.1 months, high-risk AI-predicted AF patients exhibited significantly higher cardiovascular mortality (AF vs. non-AF; 47 [18.7%] vs. 34 [4.8%]) and all-cause mortality (176 [52.9%] vs. 216 [26.3%]) compared to non-AF patients. In the low-risk group, AI-predicted AF patients showed slightly elevated cardiovascular (7 [0.7%] vs. 1 [0.3%]) and all-cause mortality (103 [9.0%] vs. 26 [6.4%]) than AI-predicted non-AF patients during six-year follow-up. These findings underscore the potential clinical utility of the AI model in predicting AF-related outcomes.
Conclusions: This study introduces an ECG colorization approach to enhance atrial fibrillation (AF) detection using deep learning and demographic data, improving performance compared to ECG-only methods. This method is effective in identifying high-risk and low-risk populations, providing valuable features for future AF research and clinical applications, as well as benefiting ECG-based classification studies.
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http://dx.doi.org/10.1186/s12874-024-02421-0 | DOI Listing |
J Cardiovasc Electrophysiol
September 2025
Department of Internal Clinical, Aenesthesiological, and Cardiovascular Sciences, Sapienza University of Rome, Rome, Italy.
J Palliat Care
September 2025
Department of Healthcare Administration and Policy, School of Public Health, University of Nevada, Las Vegas, NV, USA.
ObjectivesRecently, atrial fibrillation (AF) has contributed to an increase in cardiovascular deaths in the U.S. Palliative care (PC) and atrial ablation (AA) procedure can elevate quality of life of high-risk AF patients, who are associated with multiple comorbidities.
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September 2025
Department of Cardiology and Vascular Medicine, University Heart and Vascular Center Frankfurt, Goethe University Frankfurt, Frankfurt am Main, Germany.
Background And Aims: Aim of this study was to assess the risk of hemolysis, the extent of myocardial and neural injury after monopolar, monophasic pulsed field ablation (PFA) using a lattice-tip catheter in comparison to single-shot PF ablation platforms employing bipolar, biphasic waveforms.
Methods: This prospective study included consecutive patients undergoing PFA for atrial fibrillation (AF) using the Affera™ mapping and ablation system (n=40). Biomarkers for hemolysis (haptoglobin, LDH, bilirubin), myocardial injury (high-sensitive troponin T, CK, CK-MB), neurocardiac injury (S100), and renal function (creatinine) were assessed pre- and within 24 hours post-ablation.
World J Pediatr Congenit Heart Surg
September 2025
Department of Pediatric Cardiac Surgery, National Institute of Cardiovascular Diseases, Karachi, Pakistan.
Severe tricuspid regurgitation (TR) can lead to significant enlargement of the right atrium (RA) and poses unique clinical challenges. We report this case of a 17-year-old boy previously misdiagnosed with Ebstein anomaly who presented with dyspnea and palpitations. Initial examination revealed irregular heart rhythm, distended neck veins, and a significant murmur.
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