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利用气候和污染数据预测哥斯达黎加呼吸系统疾病的住院人数。

Forecasting hospital discharges for respiratory conditions in Costa Rica using climate and pollution data.

机构信息

Centro de Investigación en Matematica Pura y Aplicada, Universidad de Costa Rica, Costa Rica.

Escuela de Estadística, Universidad de Costa Rica, Costa Rica.

出版信息

Math Biosci Eng. 2024 Jul 8;21(7):6539-6558. doi: 10.3934/mbe.2024285.

Abstract

Respiratory diseases represent one of the most significant economic burdens on healthcare systems worldwide. The variation in the increasing number of cases depends greatly on climatic seasonal effects, socioeconomic factors, and pollution. Therefore, understanding these variations and obtaining precise forecasts allows health authorities to make correct decisions regarding the allocation of limited economic and human resources. We aimed to model and forecast weekly hospitalizations due to respiratory conditions in seven regional hospitals in Costa Rica using four statistical learning techniques (Random Forest, XGboost, Facebook's Prophet forecasting model, and an ensemble method combining the above methods), along with 22 climate change indices and aerosol optical depth as an indicator of pollution. Models were trained using data from 2000 to 2018 and were evaluated using data from 2019 as testing data. During the training period, we set up 2-year sliding windows and a 1-year assessment period, along with the grid search method to optimize hyperparameters for each model. The best model for each region was selected using testing data, based on predictive precision and to prevent overfitting. Prediction intervals were then computed using conformal inference. The relative importance of all climatic variables was computed for the best model, and similar patterns in some of the seven regions were observed based on the selected model. Finally, reliable predictions were obtained for each of the seven regional hospitals.

摘要

呼吸系统疾病是全球医疗体系面临的最大经济负担之一。病例数量的变化在很大程度上取决于气候季节性影响、社会经济因素和污染。因此,了解这些变化并进行准确预测,可以使卫生当局能够就有限的经济和人力资源的分配做出正确决策。我们旨在使用四种统计学习技术(随机森林、XGBoost、Facebook 的 Prophet 预测模型和结合上述方法的集成方法),以及 22 个气候变化指数和气溶胶光学深度(污染的指标),对哥斯达黎加 7 家地区医院因呼吸系统疾病导致的每周住院人数进行建模和预测。模型使用 2000 年至 2018 年的数据进行训练,并使用 2019 年的数据作为测试数据进行评估。在训练期间,我们设置了 2 年的滑动窗口和 1 年的评估期,以及网格搜索方法,以优化每个模型的超参数。使用测试数据为每个地区选择最佳模型,基于预测精度和防止过拟合。然后使用一致推断计算预测区间。计算了所有气候变量对最佳模型的相对重要性,并根据所选模型观察到了七个地区中的一些地区的相似模式。最后,对每个地区医院都获得了可靠的预测。

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