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基于Stacking模型的早产预测方法

马金龙 史晓月 杜丽佳 王胜普 杨志芬

河北工业科技2025,Vol.42Issue(2):111-119,181,10.
河北工业科技2025,Vol.42Issue(2):111-119,181,10.DOI:10.7535/hbgykj.2025yx02002

基于Stacking模型的早产预测方法

Preterm birth prediction framework under Stacking model

马金龙 1史晓月 1杜丽佳 2王胜普 2杨志芬2

作者信息

  • 1. 河北科技大学信息科学与工程学院,河北 石家庄 050018
  • 2. 河北医科大学第四医院产科,河北 石家庄 050035
  • 折叠

摘要

Abstract

To address the issue of insufficient overall performance of traditional machine learning algorithms in preterm birth prediction,an innovative preterm birth prediction method based on Stacking model was proposed.Firstly,during the data preprocessing stage,an under-sampling technique was applied to balance the distribution of positive and negative samples,and numerical differences between variables were eliminated through data standardization.Secondly,feature selection was carried out by carefully analyzing the correlations between features and assessing their importance scores.Then,in the construction of the Stacking model,the Pearson correlation coefficient was calculated among the prediction results of different machine learning algorithms,and this analysis was used to adjust both the type and number of base classifiers.Finally,a comprehensive evaluation of the preterm birth prediction method based on the Stacking model was conducted using multiple evaluation indicators,and compared and analyzed with existing methods to verify the effectiveness of the method.The results show that the proposed method achieves remarkable performance,with scores of 0.921 9 in AUC,0.922 9 in Accuracy,0.916 4 in F1 score,and 0.858 5 in Recall.These results significantly outperform the best performances of the 11 individual models used to build the Stacking model,and the overall performance is better than the existing research methods.The proposed method can effectively identify high-risk individuals for preterm birth in early pregnancy,providing strong support for early intervention in early pregnanly.

关键词

人工智能其他学科/机器学习/集成学习/神经网络模型/早产预测

Key words

other disciplines of artificial intelligence/machine learning/integrated learning/neural network model/preterm birth prediction

分类

信息技术与安全科学

引用本文复制引用

马金龙,史晓月,杜丽佳,王胜普,杨志芬..基于Stacking模型的早产预测方法[J].河北工业科技,2025,42(2):111-119,181,10.

基金项目

河北省自然科学基金(H2022206212,H2022206600) (H2022206212,H2022206600)

河北省医学科学研究课题计划(20210715,20230775,20240817) (20210715,20230775,20240817)

河北工业科技

1008-1534

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