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基于机器学习算法构建多病共存老年人轻度认知功能障碍预测模型

张雷 胡鑫涛 陈巍 相璇 邹婷 苗海军 吴瑞凯 周晓辉

医学新知2025,Vol.35Issue(4):409-418,10.
医学新知2025,Vol.35Issue(4):409-418,10.DOI:10.12173/j.issn.1004-5511.202312108

基于机器学习算法构建多病共存老年人轻度认知功能障碍预测模型

Constructing a predictive model for mild cognitive impairment in elderly individuals with coexisting multiple diseases based on machine learning algorithms

张雷 1胡鑫涛 1陈巍 1相璇 1邹婷 1苗海军 1吴瑞凯 1周晓辉1

作者信息

  • 1. 新疆医科大学第一附属医院老年医学科(乌鲁木齐 830011)
  • 折叠

摘要

Abstract

Objective To explore the influencing factors of mild cognitive impairment(MCI)in hospitalized elderly patients with multiple comorbidities,and to construct a MCI risk prediction model based on machine learning(ML)methods.Methods The study included elderly patients with multiple comorbidities admitted to the First Affiliated Hospital of Xinjiang Medical University as research subjects.Single factor analysis and least absolute shrinkage and selection operator regression algorithms were used to screen for MCI risk factors.Nine different ML methods were used,including random forest,light gradient boosting machine,extreme gradient boosting,Logistic regression,K-nearest neighbor classification algorithm,support vector machine,artificial neural network,decision tree,and elastic network regression algorithm,to construct MCI risk prediction models.Shapley addition explanation(SHAP)algorithm was used to explain the final model.Results A total of 920 hospitalized elderly patients with multiple comorbidities were included,including 261 cases in the MCI group.The random forest model had the best predictive performance,with a higher area under the receiver operating characteristic curve than other models.The SHAP algorithm identified the age,comorbidities,education level,and cerebrovascular disease in the random forest model as key decision factors for predicting MCI in hospitalized elderly patients with multiple comorbidities.The calibration curve showed that the predictive performance of the model was basically consistent with the actual results,and the decision curve indicated that the model had good clinical applicability.Conclusion Advanced age,increased comorbidities,and cerebrovascular disease are risk factors for MCI in hospitalized elderly people with multiple comorbidities.High educational level is a protective factor for MCI in hospitalized elderly people with multiple comorbidities.Based on machine learning algorithms,the prediction model for MCI risk using random forest has the best predictive performance and good clinical applicability,which can assist in cognitive management and more accurate medical intervention for more efficient elderly comprehensive assessment in clinical practice.

关键词

轻度认知功能障碍/多病共存/机器学习/预测模型/Shapley加法解释算法

Key words

Mild cognitive impairment/Coexistence of multiple illnesses/Machine learning/Predictive model/Shapley addition explantation algorithm

分类

医药卫生

引用本文复制引用

张雷,胡鑫涛,陈巍,相璇,邹婷,苗海军,吴瑞凯,周晓辉..基于机器学习算法构建多病共存老年人轻度认知功能障碍预测模型[J].医学新知,2025,35(4):409-418,10.

基金项目

新疆维吾尔自治区自然科学基金重点项目(2022D01D63) (2022D01D63)

医学新知

1004-5511

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