论文标题
COVID-19死亡数据的强大非线性混合效应模型
A robust nonlinear mixed-effects model for COVID-19 deaths data
论文作者
论文摘要
由于几个固有的特征,对复杂纵向数据(例如Covid-19死亡)等复杂纵向数据的分析是具有挑战性的:(i)具有不同衰减模式的类似形状的特征; (ii)每个国家 /地区重复测量之间无法解释的变化,这些重复测量值可能被视为集群数据,因为它们大约同时在同一国家使用; (iii)可能在响应变量中体现偏斜,离群值或偏斜的尾声。 This article formulates a robust nonlinear mixed-effects model based in the class of scale mixtures of skew-normal distributions for modeling COVID-19 deaths, which allows the analysts to model such data in the presence of the above described features simultaneously.提出了有效的EM-Type算法来对模型参数进行最大似然估计。 Bootstrap方法用于确定非线性个体概况的固有特征,例如预测的死亡和拟合曲线的置信区间。目标是建模一些拉丁美洲国家的共同死亡曲线,因为该地区是该疾病的新中心。此外,由于一个混合效应框架借用了人口平均效应的信息,因此在我们的分析中,我们包括来自欧洲和北美的一些国家,这些国家处于其Covid-19死亡曲线的更高级阶段。
The analysis of complex longitudinal data such as COVID-19 deaths is challenging due to several inherent features: (i) Similarly-shaped profiles with different decay patterns; (ii) Unexplained variation among repeated measurements within each country, these repeated measurements may be viewed as clustered data since they are taken on the same country at roughly the same time; (iii) Skewness, outliers or skew-heavy-tailed noises are possibly embodied within response variables. This article formulates a robust nonlinear mixed-effects model based in the class of scale mixtures of skew-normal distributions for modeling COVID-19 deaths, which allows the analysts to model such data in the presence of the above described features simultaneously. An efficient EM-type algorithm is proposed to carry out maximum likelihood estimation of model parameters. The bootstrap method is used to determine inherent characteristics of the nonlinear individual profiles such as confidence interval of the predicted deaths and fitted curves. The target is to model COVID-19 deaths curves from some Latin American countries since this region is the new epicenter of the disease. Moreover, since a mixed-effect framework borrows information from the population-average effects, in our analysis we include some countries from Europe and North America that are in a more advanced stage of their COVID-19 deaths curve.