Xue X, Brookmeyer R
Department of Biometry & Statistics, School of Public Health, New York State University at Albany, USA.
Lifetime Data Anal. 1996;2(3):277-89. doi: 10.1007/BF00128978.
Because of limitations of the univariate frailty model in analysis of multivariate survival data, a bivariate frailty model is introduced for the analysis of bivariate survival data. This provides tremendous flexibility especially in allowing negative associations between subjects within the same cluster. The approach involves incorporating into the model two possibly correlated frailties for each cluster. The bivariate lognormal distribution is used as the frailty distribution. The model is then generalized to multivariate survival data with two distinguished groups and also to alternating process data. A modified EM algorithm is developed with no requirement of specification of the baseline hazards. The estimators are generalized maximum likelihood estimators with subject-specific interpretation. The model is applied to a mental health study on evaluation of health policy effects for inpatient psychiatric care.
由于单变量脆弱模型在多变量生存数据分析中存在局限性,因此引入了双变量脆弱模型来分析双变量生存数据。这提供了极大的灵活性,特别是在允许同一聚类内个体之间存在负相关关系方面。该方法涉及在模型中为每个聚类纳入两个可能相关的脆弱性。双变量对数正态分布被用作脆弱性分布。然后将该模型推广到具有两个不同组的多变量生存数据以及交替过程数据。开发了一种改进的期望最大化(EM)算法,无需指定基线风险。估计量是具有个体特定解释的广义最大似然估计量。该模型应用于一项关于评估住院精神科护理健康政策效果的心理健康研究。