Improving Cardiovascular Disease Prediction by Integrating Imputation, Imbalance Resampling, and Feature Selection Techniques into Machine Learning Model

Fadlan Hamid Alfebi, M. D. Anasanti
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引用次数: 1

Abstract

Cardiovascular disease (CVD) is the leading cause of death worldwide. Primary prevention is by early prediction of the disease onset. Using laboratory data from the National Health and Nutrition Examination Survey (NHANES) in 2017-2020 timeframe (N= 7.974), we tested the ability of machine learning (ML) algorithms to classify individuals at risk. The ML models were evaluated based on their classification performances after comparing four imputation, three imbalance resampling, and three feature selection techniques.Due to its popularity, we utilized decision tree (DT) as the baseline. Integration of multiple imputation by chained equation (MICE) and synthetic minority oversampling with Tomek link down-sampling (SMOTETomek) into the model improved the area under the curve-receiver operating characteristics (AUC-ROC) from 57% to 83%. Applying simultaneous perturbation feature selection and ranking (spFSR) reduced the feature predictors from 144 to 30 features and the computational time by 22%. The best techniques were applied to six ML models, resulting in Xtreme gradient boosting (XGBoost) achieving the highest accuracy of 93% and AUC-ROC of 89%.The accuracy of our ML model in predicting CVD outperforms those from previous studies. We also highlight the important causes of CVD, which might be investigated further for potential effects on electronic health records. 
利用机器学习模型整合插值、不平衡重采样和特征选择技术改善心血管疾病预测
心血管疾病(CVD)是世界范围内死亡的主要原因。初级预防是通过对疾病发病的早期预测。使用2017-2020年国家健康和营养检查调查(NHANES)的实验室数据(N= 7.974),我们测试了机器学习(ML)算法对风险个体进行分类的能力。通过比较四种输入、三种不平衡重采样和三种特征选择技术,对ML模型的分类性能进行了评价。由于它的流行,我们使用决策树(DT)作为基线。将链式方程(MICE)多次插值和Tomek链路下采样(SMOTETomek)合成少数过采样集成到模型中,将曲线下接收者工作特征(AUC-ROC)面积从57%提高到83%。同时应用摄动特征选择和排序(spFSR)将特征预测器从144个特征减少到30个特征,计算时间减少22%。将最佳技术应用于6个ML模型,Xtreme梯度增强(XGBoost)的准确率最高,达到93%,AUC-ROC为89%。我们的ML模型在预测心血管疾病方面的准确性优于以往的研究。我们还强调了心血管疾病的重要原因,这可能会进一步研究对电子健康记录的潜在影响。
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