Forecasting the changes between endemic and epidemic phases of a contagious disease, with the example of COVID-19.

Jacques Demongeot, Pierre Magal, Kayode Oshinubi
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Abstract

Background: Predicting the endemic/epidemic transition during the temporal evolution of a contagious disease.

Methods: Indicators for detecting the transition endemic/epidemic, with four scalars to be compared, are calculated from the daily reported news cases: coefficient of variation, skewness, kurtosis, and entropy. The indicators selected are related to the shape of the empirical distribution of the new cases observed over 14 days. This duration has been chosen to smooth out the effect of weekends when fewer new cases are registered. For finding a forecasting variable, we have used the principal component analysis (PCA), whose first principal component (a linear combination of the selected indicators) explains a large part of the observed variance and can then be used as a predictor of the phenomenon studied (here the occurrence of an epidemic wave).

Results: A score has been built from the four proposed indicators using the PCA, which allows an acceptable level of forecasting performance by giving a realistic retro-predicted date for the rupture of the stationary endemic model corresponding to the entrance in the epidemic exponential growth phase. This score is applied to the retro-prediction of the limits of the different phases of the COVID-19 outbreak in successive endemic/epidemic transitions for three countries, France, India, and Japan.

Conclusion: We provided a new forecasting method for predicting an epidemic wave occurring after an endemic phase for a contagious disease.

以 COVID-19 为例,预测传染病在流行期和流行期之间的变化。
背景:预测传染病在时间演化过程中的流行/流行转变:预测传染病在时间演变过程中的地方病/流行病转变:从每日报告的新病例中计算出用于检测地方病/流行病过渡的指标,包括四个需要比较的标量:变异系数、偏度、峰度和熵。所选指标与 14 天内观察到的新病例的经验分布形状有关。选择这一持续时间是为了消除周末的影响,因为周末登记的新案件较少。为了找到一个预测变量,我们使用了主成分分析法(PCA),其第一个主成分(所选指标的线性组合)解释了大部分观察到的方差,因此可用作所研究现象(这里指流行病浪潮的发生)的预测因子:结果:利用 PCA 从四个拟议指标中得出了一个分值,该分值可提供与进入流行病指数增长阶段相对应的静止流行模型破裂的现实追溯预测日期,从而使预测性能达到可接受的水平。法国、印度和日本三个国家的 COVID-19 在连续的流行/疫情转换过程中,对不同阶段的疫情极限进行了追溯预测:结论:我们提供了一种新的预测方法,用于预测传染病流行阶段之后出现的流行潮。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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