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Influenza activity prediction using meteorological factors in a warm temperate to subtropical transitional zone Eastern China

机译:利用气象因素预测中国东部温带至亚热带过渡带的流感活动

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摘要

Influenza activity is subject to environmental factors. Accurate forecasting of influenza epidemics would permit timely and effective implementation of public health interventions, but it remains challenging. In this study, we aimed to develop random forest (RF) regression models including meterological factors to predict seasonal influenza activity in Jiangsu provine, China. Coefficient of determination (R ) and mean absolute percentage error (MAPE) were employed to evaluate the models' performance. Three RF models with optimum parameters were constructed to predict influenza like illness (ILI) activity, influenza A and B (Flu-A and Flu-B) positive rates in Jiangsu. The models for Flu-B and ILI presented excellent performance with MAPEs <10%. The predicted values of the Flu-A model also matched the real trend very well, although its MAPE reached to 19.49% in the test set. The lagged dependent variables were vital predictors in each model. Seasonality was more pronounced in the models for ILI and Flu-A. The modification effects of the meteorological factors and their lagged terms on the prediction accuracy differed across the three models, while temperature always played an important role. Notably, atmospheric pressure made a major contribution to ILI and Flu-B forecasting. In brief, RF models performed well in influenza activity prediction. Impacts of meteorological factors on the predictive models for influenza activity are type-specific.
机译:流感活动受环境因素影响。准确预测流感流行将允许及时有效地实施公共卫生干预措施,但仍具有挑战性。在这项研究中,我们旨在建立包括计量学因素在内的随机森林(RF)回归模型,以预测中国江苏省的季节性流感活动。确定系数(R)和平均绝对百分比误差(MAPE)用于评估模型的性能。构建了三个具有最佳参数的RF模型,以预测江苏省的流感样疾病(ILI)活性,甲型和乙型流感(Flu-A和Flu-B)阳性率。 Flu-B和ILI的模型在MAPE <10%的情况下表现出出色的性能。 Flu-A模型的预测值也非常符合实际趋势,尽管在测试集中其MAPE达到19.49%。滞后因变量是每个模型的重要预测因子。在ILI和Flu-A的模型中,季节性更为明显。在这三个模型中,气象因素及其滞后项对预测精度的修正效果不同,而温度始终起着重要作用。值得注意的是,气压对ILI和Blu-B预报做出了重大贡献。简而言之,RF模型在流感活动预测中表现良好。气象因素对流感活动预测模型的影响是特定类型的。

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