Diao Liqun, Cook Richard J, Lee Ker-Ai
Department of Statistics and Actuarial Science, University of Waterloo, Waterloo, ON, N2L 3G1, Canada,
Lifetime Data Anal. 2013 Oct;19(4):463-89. doi: 10.1007/s10985-013-9259-3. Epub 2013 May 10.
Many chronic diseases feature recurring clinically important events. In addition, however, there often exists a random variable which is realized upon the occurrence of each event reflecting the severity of the event, a cost associated with it, or possibly a short term response indicating the effect of a therapeutic intervention. We describe a novel model for a marked point process which incorporates a dependence between continuous marks and the event process through the use of a copula function. The copula formulation ensures that event times can be modeled by any intensity function for point processes, and any multivariate model can be specified for the continuous marks. The relative efficiency of joint versus separate analyses of the event times and the marks is examined through simulation under random censoring. An application to data from a recent trial in transfusion medicine is given for illustration.
许多慢性疾病都有临床上重要事件反复出现的特征。然而,除此之外,通常还存在一个随机变量,它在每个事件发生时实现,反映事件的严重程度、与之相关的成本,或者可能是表明治疗干预效果的短期反应。我们描述了一种用于标记点过程的新型模型,该模型通过使用copula函数纳入了连续标记与事件过程之间的依赖性。copula公式确保事件时间可以由点过程的任何强度函数建模,并且可以为连续标记指定任何多变量模型。通过随机删失下的模拟,检验了对事件时间和标记进行联合分析与单独分析的相对效率。给出了一个应用于输血医学近期试验数据的示例。