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首页|期刊导航|中国循证儿科杂志|基于多中心队列数据的机器学习预测重症感染患儿死亡风险和筛选临床特征的研究

基于多中心队列数据的机器学习预测重症感染患儿死亡风险和筛选临床特征的研究

朱雪梅 陈申成 章莹莹 陆国平 叶琪 阮彤 郑英杰

中国循证儿科杂志2024,Vol.19Issue(1):31-35,5.
中国循证儿科杂志2024,Vol.19Issue(1):31-35,5.DOI:10.3969/j.issn.1673-5501.2024.01.006

基于多中心队列数据的机器学习预测重症感染患儿死亡风险和筛选临床特征的研究

Mortality risk predicting and clinical feature screening of children with severe infection by machine learning based on multicenter cohort data

朱雪梅 1陈申成 2章莹莹 1陆国平 1叶琪 2阮彤 2郑英杰3

作者信息

  • 1. 复旦大学附属儿科医院重症医学科 上海,201102
  • 2. 华东理工大学计算机科学与工程学院 上海,200237
  • 3. 复旦大学公共卫生学院流行病学教研室 上海,200032
  • 折叠

摘要

Abstract

Background It is of great significance to predict the mortality of children with severe infection scientifically and effectively.In the past,the relationship between illness and death in critically ill children was mostly predicted by scores with poor accuracy like the Pancreatitis Complications and Severity Index.Objective To explore the sensitive indicators for the early warning of the death in children with severe infection by machine learning combined with feature screening.Design Cohort study.Methods We conducted the cohort study based on the pediatric Multi-center Infectious Diseases Collaboration Network database of 54 PICUs in 20 provincial administrative regions of China.In total,122 clinical features of 11 clinical dimensions were collected from children aged>28 days after birth to 18 years,with confirmed infection and at least one organ dysfunction.A risk prediction model for mortality in critically ill children with infections was established by constructing logistic regression models(LR),random forest models(RF),extreme gradient boosting tree models(XGB),and backpropagation neural network models(BP)through machine learning techniques and screening important clinical features.Main outcome measures AUROC and the performance of the model in screening clinical characteristics.Results From April 1,2022 to December 31,2023,there were 1 738 cases of severe infection with complete records at PICU admission,at PICU 24h stay and at discharge from PICU,of whom 1 396 patients survived or improved,and 342(19.6%)died or deteriorated.After data preprocessing by outlier processing,missing value filling,mandatory value interval range testing,normalization processing,1 738 pieces of information were entered into machine learning to build the model.According to the ration of 4∶1,1 390 patients were enrolled in training sets and 348 were in validation sets.In training sets,1 116 patients survived(or cured)and 274 died(or worsened),and in validation sets,280 patients survived(or cured),and 68 died(or worsened).In training sets,a total of 122 clinical features were input.After machine learning and feature screening,the range of AUROC of LR,RF and XGB was 0.74-0.78 in validation sets after 50 rounds of 5-fold stratified cross-validation.Features with greater importance than the mean value were selected to construct the optimal clinical features in LR,RF,and XGB models.At present,there is no good method to measure the importance of BP characteristics.Clinical features constructed by the LR model were closer to clinical expectations than by RF and XGB.Conclusion Machine learning is less than perfect in predicting death of severe infectious diseases in children,and the clinical futures screened by predictive model are still far from clinical expectations.

关键词

机器学习/儿童重症监护室/感染/随机森林模型/极端梯度提升树

Key words

Machine learning/Pediatric intensive care unit/Infection/Random forest model/Extreme gradient lifting tree

引用本文复制引用

朱雪梅,陈申成,章莹莹,陆国平,叶琪,阮彤,郑英杰..基于多中心队列数据的机器学习预测重症感染患儿死亡风险和筛选临床特征的研究[J].中国循证儿科杂志,2024,19(1):31-35,5.

基金项目

国家重点研发计划项目:2021YFC2701800,2021YFC2701801,2021YFC2701805 ()

上海市卫生健康系统重点扶持学科项目:2023ZDFC0103 ()

上海市市级科技重大专项:ZD2021CY001 ()

中国循证儿科杂志

OA北大核心CSTPCD

1673-5501

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