Department of Statistics and Actuarial Science, The University of Hong Kong, Pokfulam Road, Hong Kong.
Stat Med. 2013 Apr 15;32(8):1283-93. doi: 10.1002/sim.5626. Epub 2012 Sep 17.
In various medical related researches, excessive zeros, which make the standard Poisson regression model inadequate, often exist in count data. We proposed a covariate-dependent random effect model to accommodate the excess zeros and the heterogeneity in the population simultaneously. This work is motivated by a data set from a survey on the dental health status of Hong Kong preschool children where the response variable is the number of decayed, missing, or filled teeth. The random effect has a sound biological interpretation as the overall oral health status or other personal qualities of an individual child that is unobserved and unable to be quantified easily. The overall measure of oral health status, responsible for accommodating the excessive zeros and also the heterogeneity among the children, is covariate dependent. This covariate-dependent random effect model allows one to distinguish whether a potential covariate has an effect on the conceived overall oral health condition of the children, that is, the random effect, or has a direct effect on the magnitude of the counts, or both. We proposed a multiple imputation approach for estimation of the parameters. We discussed the choice of the imputation size. We evaluated the performance of the proposed estimation method through simulation studies, and we applied the model and method to the dental data.
在各种医学相关研究中,计数数据中常常存在过多的零值,这使得标准泊松回归模型不够充分。我们提出了一种协变量相关的随机效应模型,以同时适应过剩零值和总体的异质性。这项工作的灵感来自于一项关于香港学龄前儿童口腔健康状况的调查数据集,因变量是龋齿、缺失或填补的牙齿数量。随机效应具有合理的生物学解释,即个体儿童未被观察到且难以量化的整体口腔健康状况或其他个人素质。负责适应过多零值和儿童之间异质性的整体口腔健康状况衡量指标,取决于协变量。这种协变量相关的随机效应模型可以区分潜在协变量是否对儿童预期的整体口腔健康状况(即随机效应)有影响,或者对计数的大小有直接影响,或者两者都有影响。我们提出了一种多重插补方法来估计参数。我们讨论了插补大小的选择。我们通过模拟研究评估了所提出的估计方法的性能,并将模型和方法应用于口腔数据。