Does an explainable machine learning framework accurately predict long-term adulthood cardiovascular disease risk in adolescents?
14,083 participants from a nationally representative sample (Add Health study) who completed relevant survey questionnaires and health tests from adolescence to young adulthood
Machine learning-based framework (decision tree, random forest, extreme gradient boosting, and deep neural networks) using 36 adolescent predictors
Adulthood cardiovascular disease risk (low vs. high)
An explainable machine learning model using adolescent predictors can accurately predict long-term adulthood cardiovascular disease risk, potentially enabling early primordial prevention.
Although cardiovascular disease (CVD) is the leading cause of death worldwide, over 80% of it is preventable through early intervention and lifestyle changes. Most cases of CVD are detected in adulthood, but the risk factors leading to CVD begin at a younger age. This research is the first to develop an explainable machine learning (ML)-based framework for long-term CVD risk prediction (low vs. high) among adolescents. This study uses longitudinal data from a nationally representative sample of individuals who participated in the Add Health study. A total of 14,083 participants who completed relevant survey questionnaires and health tests from adolescence to young adulthood were chosen. Four ML classifiers decision tree (DT), random forest (RF), extreme gradient boosting (XGBoost), and deep neural networks (DNN) and 36 adolescent predictors are used to predict adulthood CVD risk. While all ML models demonstrated good prediction capability, XGBoost achieved the best performance (AUC-ROC: 84.5% and AUC-PR: 96.9% on testing data). Besides, critical predictors of long-term CVD risk and its impact on risk prediction are obtained using an explainable technique for interpreting ML predictions. The results suggest that ML can be employed to detect adulthood CVD very early in life, and such an approach may facilitate primordial prevention and personalized intervention.
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Haya Salah
Sharan Srinivas
SHILAP Revista de lepidopterología
Scientific Reports
University of Missouri
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Salah et al. (Mon,) studied this question.
www.synapsesocial.com/papers/69f14cc2c0d8017361865e9c — DOI: https://doi.org/10.1038/s41598-022-25933-5