Biostatistics Unit, Institute of Social and Preventive Medicine, University of Zurich, Switzerland.
Stat Med. 2011 May 10;30(10):1118-36. doi: 10.1002/sim.4177. Epub 2011 Jan 17.
Infectious disease counts from surveillance systems are typically observed in several administrative geographical areas. In this paper, a non-linear model for the analysis of such multiple time series of counts is discussed. To account for heterogeneous incidence levels or varying transmission of a pathogen across regions, region-specific and possibly spatially correlated random effects are introduced. Inference is based on penalized likelihood methodology for mixed models. Since the use of classical model choice criteria such as AIC or BIC can be problematic in the presence of random effects, models are compared by means of one-step-ahead predictions and proper scoring rules. In a case study, the model is applied to monthly counts of meningococcal disease cases in 94 departments of France (excluding Corsica) and weekly counts of influenza cases in 140 administrative districts of Southern Germany. The predictive performance improves if existing heterogeneity is accounted for by random effects.
监测系统中的传染病数据通常在几个行政地理区域中进行观察。本文讨论了一种用于分析此类多个计数时间序列的非线性模型。为了说明疾病在各地区的发病率水平或传播情况的异质性,引入了特定区域的随机效应和可能的空间相关随机效应。推断基于混合模型的惩罚似然方法。由于在存在随机效应的情况下,经典的模型选择标准(如 AIC 或 BIC)的使用可能会出现问题,因此通过一步预测和适当的评分规则来比较模型。在一个案例研究中,该模型应用于法国 94 个部门(不包括科西嘉岛)每月脑膜炎球菌病病例数和德国南部 140 个行政区每周流感病例数的月度计数。如果通过随机效应考虑到现有异质性,则预测性能会提高。