2022
DOI: 10.1038/s44161-022-00041-9
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Arrhythmic sudden death survival prediction using deep learning analysis of scarring in the heart

Abstract: Sudden cardiac death from arrhythmia is a major cause of mortality worldwide. In this study, we developed a novel deep learning (DL) approach that blends neural networks and survival analysis to predict patient-specific survival curves from contrast-enhanced cardiac magnetic resonance images and clinical covariates for patients with ischemic heart disease. The DL-predicted survival curves offer accurate predictions at times up to 10 years and allow for estimation of uncertainty in predictions. The performance … Show more

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Cited by 49 publications
(23 citation statements)
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“…In addition, we developed the ML models for predicting Conventional parameter sensitivity analysis could determine the linear relationships between ion channel profiles and 'static' arrhythmia markers, such as APD, RMP, Vmax, and alternans threshold (26). Recently, several ML approaches have been utilized to evaluate the arrhythmogenicity from electrical/structural remodeling status (27)(28)(29)(30). We previously demonstrated that statistical physics-derived methods, such as a maximum entropy model, can intuitively describe functional coherence properties in the spatiotemporal wave dynamics of cardiac fibrillation (31); however, those methods typically require huge computational costs for systemic population-scale data analyses.…”
Section: Discussionmentioning
confidence: 99%
“…In addition, we developed the ML models for predicting Conventional parameter sensitivity analysis could determine the linear relationships between ion channel profiles and 'static' arrhythmia markers, such as APD, RMP, Vmax, and alternans threshold (26). Recently, several ML approaches have been utilized to evaluate the arrhythmogenicity from electrical/structural remodeling status (27)(28)(29)(30). We previously demonstrated that statistical physics-derived methods, such as a maximum entropy model, can intuitively describe functional coherence properties in the spatiotemporal wave dynamics of cardiac fibrillation (31); however, those methods typically require huge computational costs for systemic population-scale data analyses.…”
Section: Discussionmentioning
confidence: 99%
“…In addition, we developed the ML models for predicting Conventional parameter sensitivity analysis could determine the linear relationships between ion channel profiles and 'static' arrhythmia markers, such as APD, RMP, Vmax, and alternans threshold (26). Recently, several ML approaches have been utilized to evaluate the arrhythmogenicity from electrical/structural remodeling status (27)(28)(29)(30). We previously demonstrated that statistical physics-derived methods, such as a maximum entropy model, can intuitively describe functional coherence properties in the spatiotemporal wave dynamics of cardiac fibrillation (31); however, those methods typically require huge computational costs for systemic population-scale data analyses.…”
Section: Discussionmentioning
confidence: 99%
“…Recent studies investigating risk factors for SCD suggest that healthy lifestyle modifications are associated with low odds of SCD occurrence. [22][23][24] Machine learning-based analysis of large population-based clinical data and omics technology using minimal blood samples have been attracted attention in terms of SCD risk factor analysis. 25,26 These new technologies can predict the risk of SCD, not only in the individual but also in the population, which can be applied to establishing regional/national healthcare policies to reduce SCD.…”
Section: Reinforcing the Survival Environment For Cardiac Arrestmentioning
confidence: 99%