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输入性登革热预警模型构建:基于多融合机器学习法

Construction of an early warning model for imported dengue fever: a multi-fusion machine learning approach

  • 摘要:
    目的  本研究旨在构建基于多融合机器学习的输入性登革热预测模型,以提升广州口岸传染病防控的科学性和前瞻性。
    方法  收集2015—2019年广州口岸输入性登革热病例数,并结合气象、入境旅客、航班流量、植被指数和媒介密度等多源数据,进行清洗与标准化处理后,分别建立BP神经网络、随机森林和CatBoost模型,并在此基础上采用加权平均、堆叠集成等方式构建双融合和三融合模型。模型性能通过均方误差(MSE)和决定系数(R2)评估。
    结果  融合模型整体优于单一模型,表现出更高的预测精度与稳定性。其中,随机森林与CatBoost的堆叠融合模型表现最佳,MSE为4.749,R2提升至0.601,较最佳单一模型显著改善。SHAP分析进一步揭示了湿度、日照时数及昼夜温差等气象因子为主要驱动变量,入境旅客数量亦对预测结果有重要贡献。
    结论  多融合机器学习模型在输入性登革热预测中具有显著优势,可为口岸公共卫生早期预警与防控措施的制定提供有力支撑。

     

    Abstract:
    Objective  To develop an imported dengue fever prediction model based on multi-fusion machine learning, aiming to enhance the scientific basis and foresight of infectious disease prevention and control at Guangzhou port.
    Methods Data on imported dengue fever cases at Guangzhou port from 2015 to 2019 were collected, along with meteorological indicators, inbound passenger volume, flight traffic, vegetation index, and vector density. After data cleaning and standardization, three base models (BP neural network, random forest, and CatBoost) were constructed. Weighted averaging and stacking ensemble strategies were then adopted to build dual-fusion and triple-fusion models. Model performance was evaluated based on mean squared error (MSE) and coefficient of determination (R2).
    Results The fusion models outperformed single models overall, demonstrating higher predictive accuracy and stability. Among them, the stacked ensemble of random forest and CatBoost achieved the best performance, with an MSE of 4.749 and an R2 of 0.601, significantly improving upon the best single model. SHAP analysis further revealed that humidity, sunshine duration, and diurnal temperature variation were the main driving factors, while inbound passenger volume also contributed substantially to predictions.
    Conclusions Multi-fusion machine learning models provide significant advantages in predicting imported dengue cases, offering strong support for early warning and the formulation of prevention strategies in port public health.

     

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