Therneau T M, Hamilton S A
Mayo Clinic, Rochester, MI, USA.
Stat Med. 1997 Sep 30;16(18):2029-47. doi: 10.1002/(sici)1097-0258(19970930)16:18<2029::aid-sim637>3.0.co;2-h.
We consider counting process methods for analysing time-to-event data with multiple or recurrent outcomes, using the models developed by Anderson and Gill, Wei, Lin and Weissfeld and Prentice, Williams and Peterson. We compare the methods, and show how to implement them using popular statistical software programs. By analysing three data sets, we illustrate the strengths and pitfalls of each method. The first example is simulated and involves the effect of a hidden covariate. The second is based on a trial of gamma interferon, and behaves remarkably like the first. The third and most interesting example involves both multiple events and discontinuous intervals at risk, and the three approaches give dissimilar answers. We recommend the AG and marginal models for the analysis of this type of data.
我们考虑使用安德森和吉尔、魏、林和韦斯菲尔德以及普伦蒂斯、威廉姆斯和彼得森所开发的模型,采用计数过程方法来分析具有多个或复发结局的事件发生时间数据。我们对这些方法进行比较,并展示如何使用流行的统计软件程序来实现它们。通过分析三个数据集,我们阐述了每种方法的优点和缺陷。第一个例子是模拟的,涉及一个隐藏协变量的影响。第二个基于γ干扰素试验,其表现与第一个非常相似。第三个也是最有趣的例子涉及多个事件和风险的不连续区间,三种方法给出了不同的答案。我们推荐使用AG模型和边际模型来分析此类数据。