利用机器学习方法预测低密度脂蛋白胆固醇水平。

Yoori Kim, Won Kyung Lee, Woojoo Lee
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摘要

目的:低密度脂蛋白胆固醇(LDL-C)常用方程计算,但其性能并不完全令人满意。本研究旨在利用机器学习方法开发一种更准确的低密度脂蛋白胆固醇预测模型:方法:研究涉及预测直接测量的低密度脂蛋白胆固醇,将个人特征、血脂谱和其他实验室结果作为预测因素。用于预测 LDL-C 值的模型包括多元回归、惩罚回归、随机森林和 XGBoost。此外,还开发并引入了一种新型的两步预测模型。根据弗里德瓦尔德方程、马丁方程和桑普森方程对机器学习方法进行了评估:结果:Friedewald、Martin 和 Sampson 方程的均方根误差(RMSE)值分别为 12.112、8.084 和 8.492,而两步预测模型的准确度最高,RMSE 为 7.015。根据血脂异常治疗指南的诊断标准,LDL-C 水平也被划分为一个分类变量,并计算了每种方法得出的预测值与直接测量值之间的吻合率。两步预测模型的吻合率最高(85.1%):结论:与现有公式相比,机器学习方法能更准确地计算 LDL-C。结论:与现有公式相比,机器学习方法能更准确地计算低密度脂蛋白胆固醇,尤其是所提出的两步预测模型优于其他机器学习方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of low-density lipoprotein cholesterol levels using machine learning methods.

Objective: Low-density lipoprotein cholesterol (LDL-C) has been commonly calculated by equations, but their performance has not been entirely satisfactory. This study aimed to develop a more accurate LDL-C prediction model using machine learning methods.

Methods: The study involved predicting directly measured LDL-C, using individual characteristics, lipid profiles, and other laboratory results as predictors. The models applied to predict LDL-C values were multiple regression, penalized regression, random forest, and XGBoost. Additionally, a novel 2-step prediction model was developed and introduced. The machine learning methods were evaluated against the Friedewald, Martin, and Sampson equations.

Results: The Friedewald, Martin, and Sampson equations had root mean squared error (RMSE) values of 12.112, 8.084, and 8.492, respectively, whereas the 2-step prediction model showed the highest accuracy, with an RMSE of 7.015. The LDL-C levels were also classified as a categorical variable according to the diagnostic criteria of the dyslipidemia treatment guideline, and concordance rates were calculated between the predictive values obtained from each method and the directly measured ones. The 2-step prediction model had the highest concordance rate (85.1%).

Conclusion: The machine learning method can calculate LDL-C more accurately than existing equations. The proposed 2-step prediction model, in particular, outperformed the other machine learning methods.

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