Pre-existing and machine learning-based models for cardiovascular risk prediction

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作者
Sang-Yeong Cho
Sun-Hwa Kim
Si-Hyuck Kang
Kyong Joon Lee
Dongjun Choi
Seungjin Kang
Sang Jun Park
Tackeun Kim
Chang-Hwan Yoon
Tae-Jin Youn
In-Ho Chae
机构
[1] Gyeongsang National University School of Medicine and Gyeongsang National University Changwon Hospital,Department of Cardiology
[2] Seoul National University Bundang Hospital,Cardiovascular Center, Internal Medicine
[3] Seoul National University,Department of Internal Medicine
[4] Seoul National University College of Medicine,Department of Radiology, Seoul National University Bundang Hospital
[5] Seoul National University Bundang Hospital,Office of eHealth Research and Businesses
[6] Seoul National University College of Medicine,Department of Ophthalmology, Seoul National University Bundang Hospital
[7] Seoul National University College of Medicine,Department of Neurosurgery, Seoul National University Bundang Hospital
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Predicting the risk of cardiovascular disease is the key to primary prevention. Machine learning has attracted attention in analyzing increasingly large, complex healthcare data. We assessed discrimination and calibration of pre-existing cardiovascular risk prediction models and developed machine learning-based prediction algorithms. This study included 222,998 Korean adults aged 40–79 years, naïve to lipid-lowering therapy, had no history of cardiovascular disease. Pre-existing models showed moderate to good discrimination in predicting future cardiovascular events (C-statistics 0.70–0.80). Pooled cohort equation (PCE) specifically showed C-statistics of 0.738. Among other machine learning models such as logistic regression, treebag, random forest, and adaboost, the neural network model showed the greatest C-statistic (0.751), which was significantly higher than that for PCE. It also showed improved agreement between the predicted risk and observed outcomes (Hosmer–Lemeshow χ2 = 86.1, P < 0.001) than PCE for whites did (Hosmer–Lemeshow χ2 = 171.1, P < 0.001). Similar improvements were observed for Framingham risk score, systematic coronary risk evaluation, and QRISK3. This study demonstrated that machine learning-based algorithms could improve performance in cardiovascular risk prediction over contemporary cardiovascular risk models in statin-naïve healthy Korean adults without cardiovascular disease. The model can be easily adopted for risk assessment and clinical decision making.
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