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基于临床及影像学特征构建预测儿童白血病真菌感染的机器学习模型

葛芃 赵廉 钱静 李国辉

发育医学电子杂志2026,Vol.14Issue(2):109-114,6.
发育医学电子杂志2026,Vol.14Issue(2):109-114,6.DOI:10.3969/j.issn.2095-5340.2026.02.005

基于临床及影像学特征构建预测儿童白血病真菌感染的机器学习模型

Construction of a machine learning model to predict fungal infection in children with leukemia based on clinical and imaging features

葛芃 1赵廉 1钱静 2李国辉1

作者信息

  • 1. 苏州大学附属儿童医院 放射科,江苏 苏州 215000
  • 2. 苏州大学附属儿童医院 血液科,江苏 苏州 215000
  • 折叠

摘要

Abstract

Objective To explore the application of machine learning methods in evaluating the clinical and imaging features of fungal infections in children with leukemia,and to establish an effective predictive model.Methods A retrospective study was conducted.Forty children with leukemia and fungal infection hospitalized in the Department of Hematology,Children's Hospital of Soochow University from January 2021 to January 2023 were enrolled as the fungal infection group,and 150 children with non-fungal infection admitted to the same department during the same period were randomly selected using systematic sampling as the non-fungal infection group.The clinical and imaging features of the two groups of children were compared.Features with statistically significant differences were used to establish a predictive model based on machine learning algorithms,including Logistic regression(LR),random forest(RF),support vector machine(SVM),and extreme gradient boosting(XGBoost).The performance of the four models was evaluated using the area under the curve(AUC)of the receiver operating characteristic curve.The importance matrix diagram and Shapley additive explanations(SHAP)values were calculated to assess the importance of the features and display the visualization results.Statistical analysis was performed using independent samples t-test,Mann-Whitney U test,χ2 test,and Fisher's exact test.Results The platelet count in the fungal infection group was lower than that in the non-fungal infection group[88.50(39.25,260.75)×109/L vs 191.00(88.00,267.25)×109/L,Z=-2.628,P=0.009];while the levels of C-reactive protein(CRP)[28.00(4.28,80.13)mg/L vs 4.37(0.67,9.46)mg/L,Z=-4.978,P<0.001],procalcitonin(PCT)[0.28(0.08,0.44)µg/L vs 0.11(0.05,0.22)µg/L,Z=-3.027,P=0.002],and the proportions of stem cell transplantation(47.5%vs 16.0%,χ2=17.895,P<001),reticular/linear opacities(75.0%vs 34.7%,χ2=20.941,P<0.001),pulmonary nodules(62.5%vs 16.7%,χ2=34.211,P<0.001),air bronchogram sign(37.5%vs 10.7%,χ2=16.653,P<001),bronchiectasis(17.5%vs 3.3%,χ2=10.711,P=0.004),ground-glass opacity(GGO)(77.5%vs 38.0%,χ2=19.816,P<0.001),cavitation(25.0%vs 4.0%,χ2=18.058,P<0.001),air crescent sign(12.5%vs 0%,P<0.001),mediastinal lymphadenopathy(45.0%vs 6.0%,χ2=39.399,P<0.001),pleural effusion(32.5%vs 8.7%,χ2=15.186,P<0.001),and pleural thickening(52.5%vs 7.3%,χ2=45.997,P<0.001)in the fungal infection group were all significantly higher than those in the non-fungal infection group.Among the four machine learning models,the RF model had the highest performance(AUC=0.910),outperforming the XGBoost(AUC=0.906),LR(AUC=0.887),and SVM(AUC=0.880)models.Based on SHAP values,in the RF model,pleural thickening,CRP,and mediastinal lymphadenopathy were the three most important features.Conclusion The RF model can be used to predict the risk of fungal infection in children with leukemia.The most important influencing factors of the model are pleural thickening,CRP,and mediastinal lymphadenopathy.

关键词

儿童白血病/真菌感染/危险因素/影像学特征/机器学习

Key words

Childhood leukemia/Fungal infection/Risk factor/Imaging feature/Machine learning

引用本文复制引用

葛芃,赵廉,钱静,李国辉..基于临床及影像学特征构建预测儿童白血病真菌感染的机器学习模型[J].发育医学电子杂志,2026,14(2):109-114,6.

基金项目

苏州市科技计划项目(SKY2023186) (SKY2023186)

发育医学电子杂志

2095-5340

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