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Machine Learning for Sudden Cardiac Death Prediction in the Atherosclerosis Risk in Communities Study

Machine Learning for Sudden Cardiac Death Prediction in the Atherosclerosis Risk in Communities Study

来源:medRxiv_logomedRxiv
英文摘要

Abstract IntroductionSudden cardiac death (SCD) is a devastating consequence often without antecedent expectation. Current risk stratification methods derived from baseline independently modeled risk factors are insufficient. Novel random forest machine learning (ML) approach incorporating time-dependent variables and complex interactions may improve SCD risk prediction. MethodsAtherosclerosis Risk in Communities (ARIC) study participants were followed for adjudicated SCD. ML models were compared to standard Poisson regression models for interval data, an approximation to Cox regression, with stepwise variable selection. Eighty-two time-varying variables (demographics, lifestyle factors, clinical characteristics, biomarkers, etc.) collected at four visits over 12 years (1987-98) were used as candidate predictors. Predictive accuracy was assessed by area under the receiver operating characteristic curve (AUC) through out-of-bag prediction for ML models and 5-fold cross validation for the Poisson regression models. ResultsOver a median follow-up time of 23.5 years, 583 SCD events occurred among 15,661 ARIC participants (mean age 54 years and 55% women). Compared to different Poisson regression models (AUC at 6-year ranges from 0.77-0.83), the ML model improved prediction (AUC at 6-year 0.89). Top predictors identified by ML model included prior coronary heart disease, which explained 47.9% of the total phenotypic variance, diabetes mellitus, hypertension, and T wave abnormality in any of leads I, aVL, or V6. Using the top ML predictors to select variables, the Poisson regression model AUC at 6-year was 0.77 suggesting that the non-linear dependencies and interactions captured by ML, are the main reasons for its improved prediction performance. ConclusionsApplying novel ML approach with time-varying predictors improves the prediction of SCD. Interactions of dynamic clinical characteristics are important for risk-stratifying SCD in the general population.

Zeger Scott L.、Wongvibulsin Shannon、Matsushita Kunihiro、Natarajan Pradeep、Coresh Josef、Zhou Linda、Yu Zhi、Daya Natalie R.

Johns Hopkins Bloomberg School of Public Health||Johns Hopkins School of Medicine||Johns Hopkins Krieger School of Arts and SciencesJohns Hopkins School of MedicineJohns Hopkins Bloomberg School of Public Health||Johns Hopkins School of MedicineProgram in Medical and Population Genetics and Cardiovascular Disease Initiative, Broad Institute of Harvard and MIT||Cardiovascular Research Center, Massachusetts General Hospital||Department of Medicine, Harvard Medical SchoolJohns Hopkins Bloomberg School of Public Health||Johns Hopkins School of MedicineJohns Hopkins Bloomberg School of Public HealthProgram in Medical and Population Genetics and Cardiovascular Disease Initiative, Broad Institute of Harvard and MIT||Cardiovascular Research Center, Massachusetts General Hospital||Johns Hopkins Bloomberg School of Public HealthJohns Hopkins Bloomberg School of Public Health

10.1101/2022.01.12.22269174

医学研究方法内科学基础医学

Zeger Scott L.,Wongvibulsin Shannon,Matsushita Kunihiro,Natarajan Pradeep,Coresh Josef,Zhou Linda,Yu Zhi,Daya Natalie R..Machine Learning for Sudden Cardiac Death Prediction in the Atherosclerosis Risk in Communities Study[EB/OL].(2025-03-28)[2025-05-18].https://www.medrxiv.org/content/10.1101/2022.01.12.22269174.点此复制

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