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Application of the backstepping method to the prediction of increase or decrease of infected population

机译:反推法在预测感染人群增减中的应用

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Background In mathematical epidemiology, age-structured epidemic models have usually been formulated as the boundary-value problems of the partial differential equations. On the other hand, in engineering, the backstepping method has recently been developed and widely studied by many authors. Methods Using the backstepping method, we obtained a boundary feedback control which plays the role of the threshold criteria for the prediction of increase or decrease of newly infected population. Under an assumption that the period of infectiousness is same for all infected individuals (that is, the recovery rate is given by the Dirac delta function multiplied by a sufficiently large positive constant), the prediction method is simplified to the comparison of the numbers of reported cases at the current and previous time steps. Results Our prediction method was applied to the reported cases per sentinel of influenza in Japan from 2006 to 2015 and its accuracy was 0.81 (404 correct predictions to the total 500 predictions). It was higher than that of the ARIMA models with different orders of the autoregressive part, differencing and moving-average process. In addition, a proposed method for the estimation of the number of reported cases, which is consistent with our prediction method, was better than that of the best-fitted ARIMA model ARIMA (1,1,0) in the sense of mean square error. Conclusions Our prediction method based on the backstepping method can be simplified to the comparison of the numbers of reported cases of the current and previous time steps. In spite of its simplicity, it can provide a good prediction for the spread of influenza in Japan.
机译:背景技术在数学流行病学中,通常将年龄结构化的流行病模型表述为偏微分方程的边值问题。另一方面,在工程学中,反推方法最近已经被开发并被许多作者广泛研究。方法采用反推方法,获得边界反馈控制,该边界反馈控制起着阈值标准的作用,可预测新感染人群的增加或减少。在所有感染者的传染期都相同的假设下(即恢复率由狄拉克三角洲函数乘以足够大的正常数得出),将预测方法简化为比较报告数量当前和以前的时间步的案例。结果我们的预测方法应用于2006年至2015年日本每个流感定点报告的病例,其准确度为0.81(404正确的预测与500的总预测)。它高于具有不同阶数的自回归部分,微分和移动平均过程的ARIMA模型。此外,从均方误差的意义上来说,与我们的预测方法相一致的一种建议的估计报告病例数的方法优于最适合的ARIMA模型ARIMA(1,1,0)。 。结论我们可以将基于Backstepping方法的预测方法简化为比较当前时间步骤和先前时间步骤的报告病例数。尽管它很简单,但它可以很好地预测日本流感的传播。

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