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Forecasting incidence of hand, foot and mouth disease using BP neural networks in Jiangsu province, China

机译:中国江苏省江苏省BP神经网络预测手,脚和口腔疾病发病率

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BACKGROUND:Hand, foot and mouth disease (HFMD) is a rising public health problem and has attracted considerable attention worldwide. The purpose of this study was to develop an optimal model with meteorological factors to predict the epidemic of HFMD.METHODS:Two types of methods, back propagation neural networks (BP) and auto-regressive integrated moving average (ARIMA), were employed to develop forecasting models, based on the monthly HFMD incidences and meteorological factors during 2009-2016 in Jiangsu province, China. Root mean square error (RMSE) and mean absolute percentage error (MAPE) were employed to select model and evaluate the performance of the models.RESULTS:Four models were constructed. The multivariate BP model was constructed using the HFMD incidences lagged from 1 to 4?months, mean temperature, rainfall and their one order lagged terms as inputs. The other BP model was fitted just using the lagged HFMD incidences as inputs. The univariate ARIMA model was specified as ARIMA (1,0,1)(1,1,0)12 (AIC?=?1132.12, BIC?=?1440.43). And the multivariate ARIMAX with one order lagged temperature as external predictor was fitted based on this ARIMA model (AIC?=?1132.37, BIC?=?1142.76). The multivariate BP model performed the best in both model fitting stage and prospective forecasting stage, with a MAPE no more than 20%. The performance of the multivariate ARIMAX model was similar to that of the univariate ARIMA model. Both performed much worse than the two BP models, with a high MAPE near to 40%.CONCLUSION:The multivariate BP model effectively integrated the autocorrelation of the HFMD incidence series. Meanwhile, it also comprehensively combined the climatic variables and their hysteresis effects. The introduction of the climate terms significantly improved the prediction accuracy of the BP model. This model could be an ideal method to predict the epidemic level of HFMD, which is of great importance for the public health authorities.
机译:背景:手,脚和口腔疾病(HFMD)是一个上升的公共卫生问题,并在全球上引起了相当大的关注。本研究的目的是开发具有气象因素的最佳模型,以预测HFMD的疫情中国江苏省2009 - 2016年期间HFMD发病率和气象因素的预测模型。 root均方误差(RMSE)和平均绝对百分比错误(MAPE)被采用选择模型并评估模型的性能。结果:构建了四个模型。使用从1到4个月的HFMD公告构建多元BP模型,平均温度,降雨及其一个订单滞后作为输入。另一个BP模型安装只使用滞后的HFMD发迹作为输入。单变量Arima模型被指定为Arima(1,0,1)(1,1,0)12(AIC?=?1132.12,BIC?= 1440.43)。基于这个Arima模型(AIC?= 1132.37,BIC?= 1142.76),安装了一个阶数的多变量滞后温度作为外部预测器的滞留温度。多元BP模型在模型拟合阶段和前瞻性预测阶段进行了最佳,Mape不超过20%。多变量ARIMAX模型的性能与单变量ARIMA模型类似。两者均比两个BP模型更差,较高的MAPE靠近40%。结论:多元BP模型有效地整合了HFMD入射序列的自相关。同时,它也全面地结合了气候变量及其滞后效应。引入气候术语显着提高了BP模型的预测准确性。该模型可能是预测HFMD疫情水平的理想方法,这对公共卫生当局非常重要。

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