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Improving the precision of modeling the incidence of hemorrhagic fever with renal syndrome in mainland China with an ensemble machine learning approach

机译:用集成机器学习方法提高肾综合征肾综合征患者出血热发病率的精度

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Objective Hemorrhagic fever with renal syndrome (HFRS), one of the main public health concerns in mainland China, is a group of clinically similar diseases caused by hantaviruses. Statistical approaches have always been leveraged to forecast the future incidence rates of certain infectious diseases to effectively control their prevalence and outbreak potential. Compared to the use of one base model, model stacking can often produce better forecasting results. In this study, we fitted the monthly reported cases of HFRS in mainland China with a model stacking approach and compared its forecasting performance with those of five base models.
机译:客观出血热与肾综合征(HFRS)是中国大陆主要公共卫生问题之一,是一群由汉坦病毒引起的临床上类似的疾病。 统计方法始终杠杆预测某些传染病的未来发病率,以有效控制流行和爆发潜力。 与使用一个基础模型相比,模型堆叠通常可以产生更好的预测结果。 在这项研究中,我们用模型堆叠方法拟合了中国大陆大陆HFR的每月报告案件,并将其预测性能与五个基础模型进行了比较。

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