Predicting cardiovascular risk from national administrative databases using a combined survival analysis and deep learning approach
Sebastiano Barbieri, Suneela Mehta, Billy Wu, Chrianna Bharat, Katrina, Poppe, Louisa Jorm, Rod Jackson

TL;DR
This study demonstrates that deep learning extensions of survival analysis models outperform traditional Cox models in predicting cardiovascular risk using large national administrative datasets, offering more accurate risk assessments.
Contribution
The paper introduces a novel application of deep learning to survival analysis in large-scale health data, improving CVD risk prediction accuracy over traditional methods.
Findings
Deep learning models explained more variance in CVD events.
Deep learning models showed better calibration and discrimination.
Key predictors like tobacco use and COPD were identified.
Abstract
AIMS. This study compared the performance of deep learning extensions of survival analysis models with traditional Cox proportional hazards (CPH) models for deriving cardiovascular disease (CVD) risk prediction equations in national health administrative datasets. METHODS. Using individual person linkage of multiple administrative datasets, we constructed a cohort of all New Zealand residents aged 30-74 years who interacted with publicly funded health services during 2012, and identified hospitalisations and deaths from CVD over five years of follow-up. After excluding people with prior CVD or heart failure, sex-specific deep learning and CPH models were developed to estimate the risk of fatal or non-fatal CVD events within five years. The proportion of explained time-to-event occurrence, calibration, and discrimination were compared between models across the whole study population and…
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