Prediction of incident atrial fibrillation using deep learning, clinical models, and polygenic scores

Author:

Jabbour Gilbert123ORCID,Nolin-Lapalme Alexis1234,Tastet Olivier13,Corbin Denis13,Jordà Paloma12ORCID,Sowa Achille13,Delfrate Jacques13,Busseuil David1,Hussin Julie G1245ORCID,Dubé Marie-Pierre125ORCID,Tardif Jean-Claude1256ORCID,Rivard Léna12ORCID,Macle Laurent12ORCID,Cadrin-Tourigny Julia12ORCID,Khairy Paul126ORCID,Avram Robert123ORCID,Tadros Rafik12ORCID

Affiliation:

1. Montreal Heart Institute Research Centre , 5000 Belanger St, Montreal, Quebec H1T 1C8 , Canada

2. Faculty of Medicine, Université de Montréal , 2900 Edouard Montpetit Blvd, Montreal, Quebec H3T 1J4 , Canada

3. HeartWise.Ai , 5000 Belanger St, Montreal, Quebec H1T 1C8 , Canada

4. Quebec Artificial Intelligence Institute (MILA) , Montreal, Quebec , Canada

5. Université de Montréal Beaulieu-Saucier Pharmacogenomics Center, Montreal , Quebec H1T 1C8 , Canada

6. Montreal Health Innovations Coordinating Center , 5000 Belanger St, Montreal, Quebec H1T 1C8 , Canada

Abstract

Abstract Background and Aims Deep learning applied to electrocardiograms (ECG-AI) is an emerging approach for predicting atrial fibrillation or flutter (AF). This study introduces an ECG-AI model developed and tested at a tertiary cardiac centre, comparing its performance with clinical models and AF polygenic score (PGS). Methods Electrocardiograms in sinus rhythm from the Montreal Heart Institute were analysed, excluding those from patients with pre-existing AF. The primary outcome was incident AF at 5 years. An ECG-AI model was developed by splitting patients into non-overlapping data sets: 70% for training, 10% for validation, and 20% for testing. The performance of ECG-AI, clinical models, and PGS was assessed in the test data set. The ECG-AI model was externally validated in the Medical Information Mart for Intensive Care-IV (MIMIC-IV) hospital data set. Results A total of 669 782 ECGs from 145 323 patients were included. Mean age was 61 ± 15 years, and 58% were male. The primary outcome was observed in 15% of patients, and the ECG-AI model showed an area under the receiver operating characteristic (AUC-ROC) curve of .78. In time-to-event analysis including the first ECG, ECG-AI inference of high risk identified 26% of the population with a 4.3-fold increased risk of incident AF (95% confidence interval: 4.02–4.57). In a subgroup analysis of 2301 patients, ECG-AI outperformed CHARGE-AF (AUC-ROC = .62) and PGS (AUC-ROC = .59). Adding PGS and CHARGE-AF to ECG-AI improved goodness of fit (likelihood ratio test P < .001), with minimal changes to the AUC-ROC (.76–.77). In the external validation cohort (mean age 59 ± 18 years, 47% male, median follow-up 1.1 year), ECG-AI model performance remained consistent (AUC-ROC = .77). Conclusions ECG-AI provides an accurate tool to predict new-onset AF in a tertiary cardiac centre, surpassing clinical and PGS.

Funder

Takeda Canada

CIHR Institute of Genetics Rare Diseases Fellowship

Fonds de la Recherche du Québec

Natural Sciences and Engineering Research Council

Canada Research Chairs

Philippa and Marvin Carsley Chair

André Chagnon Research Chair

Publisher

Oxford University Press (OUP)

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