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基于改进Boosting集成模型的肺炎感染诊断方法

杨倩 王莉 张萍 宫艳艳 付玉叶

分子影像学杂志2025,Vol.48Issue(4):435-440,6.
分子影像学杂志2025,Vol.48Issue(4):435-440,6.DOI:10.12122/j.issn.1674-4500.2025.04.07

基于改进Boosting集成模型的肺炎感染诊断方法

A method for diagnosis of pneumonia infection based on improved Boosting ensemble model

杨倩 1王莉 1张萍 1宫艳艳 1付玉叶1

作者信息

  • 1. 陕西省人民医院检验科,陕西 西安 710068
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摘要

Abstract

Objective To propose a diagnosis method for pneumonia infection based on improved Boosting integration model.Methods A total of 315 patients with pneumonia infection who were examined by CT in Shaanxi Provincial People's Hospital from September 2023 to May 2024 were selected,and CT diagnosis was carried out for all patients.In the preprocessing stage of CT images,image enhancement technology was applied to improve the image quality and ensure that the model acquired clearer image information during feature extraction.In the feature extraction process,texture features,shape features and pixel intensity information are extracted through the XGBoost framework,and the principal component analysis is used to reduce the feature dimensions.In addition,the sample imbalance problem is solved by introducing a focus loss function to ensure that the model has a more balanced focus on benign and malignant samples.Meanwhile,Bayesian optimisation is used in the hyperparameter optimisation process to construct a Gaussian process regression model to adjust the hyperparameters,thus ensuring that the optimal parameter combinations are selected to further improve the prediction accuracy of the model.Results The diagnostic method proposed in this study has a mean area under the curve(mAUC)value of 0.9649 and an F1 score of 0.9423 in the test set,which significantly outperforms the comparative models such as lightweight gradient booster,random forest,and K-nearest neighbour.Conclusion The diagnostic method proposed in this study provides an effective tool to improve the identification and early intervention of pneumonia infections,helping physicians to identify high-risk patients earlier and develop personalised treatment plans.

关键词

肺炎感染/CT图像:XGBoost/贝叶斯优化

Key words

pneumonia infection/CT image/XGBoost/Bayesian optimization

引用本文复制引用

杨倩,王莉,张萍,宫艳艳,付玉叶..基于改进Boosting集成模型的肺炎感染诊断方法[J].分子影像学杂志,2025,48(4):435-440,6.

基金项目

陕西省自然科学基础研究计划项目(2024JC-YBQN-0820) (2024JC-YBQN-0820)

分子影像学杂志

1674-4500

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