Commenges D, Andersen P K
INSERM U330, Bordeaux, France.
Lifetime Data Anal. 1995;1(2):145-56; discussion 157-9. doi: 10.1007/BF00985764.
If follow-up is made for subjects which are grouped into units, such as familial or spatial units then it may be interesting to test whether the groups are homogeneous (or independent for given explanatory variables). The effect of the groups is modelled as random and we consider a frailty proportional hazards model which allows to adjust for explanatory variables. We derive the score test of homogeneity from the marginal partial likelihood and it turns out to be the sum of a pairwise correlation term of martingale residuals and an overdispersion term. In the particular case where the sizes of the groups are equal to one, this statistic can be used for testing overdispersion. The asymptotic variance of this statistic is derived using counting process arguments. An extension to the case of several strata is given. The resulting test is computationally simple; its use is illustrated using both stimulated and real data. In addition a decomposition of the score statistic is proposed as a sum of a pairwise correlation term and an overdispersion term. The pairwise correlation term can be used for constructing a statistic more robust to departure from the proportional hazard model, and the overdispersion term for constructing a test of fit of the proportional hazard model.
如果对被分组为单位(如家族或空间单位)的受试者进行随访,那么检验这些组是否同质(或对于给定的解释变量是否独立)可能会很有意思。将组的效应建模为随机效应,我们考虑一个脆弱比例风险模型,该模型允许对解释变量进行调整。我们从边际偏似然性推导出同质性的得分检验,结果它是鞅残差的成对相关项和一个过度分散项的总和。在组大小等于1的特殊情况下,该统计量可用于检验过度分散。使用计数过程论证推导该统计量的渐近方差。给出了对多个分层情况的扩展。所得检验在计算上很简单;通过模拟数据和实际数据说明了其用法。此外,提出了得分统计量的一种分解,作为成对相关项和过度分散项的总和。成对相关项可用于构建一个对偏离比例风险模型更具稳健性的统计量,过度分散项用于构建比例风险模型拟合优度的检验。