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Atrial fibrillation risk prediction from the 12-lead electrocardiogram using digital biomarkers and deep representation learning

56

Citations

22

References

2021

Year

TLDR

The study cohort had a median age of 58 years, with 38 % male participants. The study investigates whether raw 12‑lead ECG data combined with clinical information can predict atrial fibrillation development. Using an 80/20 stratified split, a random forest classifier was trained on features from demographics, clinical data, engineered variables, and deep‑learning representations of the ECG to predict 5‑year AF risk. The multimodal model achieved an AUROC of 0.909, surpassing single‑modality models (AUROC 0.839) and demonstrating that ECG structural changes predict future atrial fibrillation, offering clinical utility for risk stratification.

Abstract

This study aims to assess whether information derived from the raw 12-lead electrocardiogram (ECG) combined with clinical information is predictive of atrial fibrillation (AF) development.We use a subset of the Telehealth Network of Minas Gerais (TNMG) database consisting of patients that had repeated 12-lead ECG measurements between 2010 and 2017 that is 1 130 404 recordings from 415 389 unique patients. Median and interquartile of age for the recordings were 58 (46-69) and 38% of the patients were males. Recordings were assigned to train-validation and test sets in an 80:20% split which was stratified by class, age and gender. A random forest classifier was trained to predict, for a given recording, the risk of AF development within 5 years. We use features obtained from different modalities, namely demographics, clinical information, engineered features, and features from deep representation learning. The best model performance on the test set was obtained for the model combining features from all modalities with an area under the receiver operating characteristic curve (AUROC) = 0.909 against the best single modality model which had an AUROC = 0.839.Our study has important clinical implications for AF management. It is the first study integrating feature engineering, deep learning, and Electronic medical record system (EMR) metadata to create a risk prediction tool for the management of patients at risk of AF. The best model that includes features from all modalities demonstrates that human knowledge in electrophysiology combined with deep learning outperforms any single modality approach. The high performance obtained suggest that structural changes in the 12-lead ECG are associated with existing or impending AF.

References

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