Prediction of Atrial Fibrillation from Sinus-Rhythm Electrocardiograms Based on Deep Neural Networks: Analysis of Time Intervals and Longitudinal Study

被引:0
|
作者
Melzi, Pietro [1 ,4 ]
Vera-Rodriguez, Ruben [1 ]
Tolosana, Ruben [1 ]
Sanz-Garcia, Ancor [2 ]
Cecconi, Alberto [2 ]
Ortega, Guillermo J. [2 ]
Jimenez-Borreguero, Luis Jesus [2 ,3 ]
机构
[1] Univ Autonoma Madrid, Biometr & Data Pattern Analyt Lab, Labs, C109, C Francisco Tomas & Valiente 11, Madrid 28049, Spain
[2] Inst Invest Sanitaria Hosp Univ Princesa, Calle Diego Leon 62, Madrid 28006, Spain
[3] Ctr Invest Biomed Red Enfermedades Cardiovasc, CIBERCV, Av Monforte Lemos,3-5 Pabellon 11 Planta 0, Madrid 28029, Spain
[4] Escuela Politecn Super, Calle Francisco Tomas & Valiente,11 C-109-bis, Madrid 28049, Spain
基金
欧盟地平线“2020”;
关键词
Atrial fibrillation; Healthcare; Artificial intelligence; Deep learning; ECG; ECG-BASED PREDICTION; PREVALENCE; STROKE; RISK;
D O I
10.1016/j.irbm.2023.100811
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Objective: Artificial Intelligence (AI) in electrocardiogram (ECG) analysis helps to identify persons at risk of developing atrial fibrillation (AF) and reduces the risk for severe complications. Our aim is to investigate the performance of AI-based methods predicting future AF from sinus rhythm (SR) ECGs, according to different characteristics of patients, time intervals for prediction, and longitudinal measures.Methods: We designed a retrospective, prognostic study to predict AF occurrence in patients from 12-lead SR ECGs. We classified patients in two groups, according to their ECGs: 3,761 developed AF and 22,896 presented only SR ECGs. We assessed the impact of age on the overall performance of deep neural network (DNN)-based systems, which consist in a variation of Residual Networks for time series. Then, we analysed how much in advance our system can predict AF from SR ECGs and the performance for different categories of patients with AUC and other metrics.Results: After balancing the age distribution between the two groups of patients, our model achieves AUC of 0.79 (0.72-0.86) without additional constraints, 0.83 (0.76-0.89) for ECGs recorded in the last six months before AF, and 0.87 (0.81-0.93) for patients with stable AF risk measures over time, with sensitivity of 90.62% (80.70-96.48) and diagnostic odd ratio of 20.49 (8.56-49.09).Conclusion: This study shows the ability of DNNs to predict new onsets of AF from SR ECGs, with the best performance achieved for patients with stable AF risk score over time. The introduction of this time -based score opens new possibilities for AF prediction, thanks to the analysis of long-span time intervals and score stability.(c) 2023 AGBM. Published by Elsevier Masson SAS. This is an open access article under the CC BY-NC-ND license (http://creativecommons .org /licenses /by-nc -nd /4 .0/).
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页数:9
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