Guo Z, Gill T M, Allore H G
Yale University, School of Medicine, Department of Internal Medicine, New Haven, CT 06511, USA.
Methods Inf Med. 2008;47(2):107-16.
Researchers have often used rather simple approaches to analyze repeated time-to-event health conditions that either examine time to the first event or treat multiple events as independent. More sophisticated models have been developed, although previous applications have focused largely on such outcomes having continuous risk intervals. Limitations of applying these models include their difficulty in implementation without careful attention to forming the data structures.
We first review time-to-event models for repeated events that are extensions of the Cox model and frailty models. Next, we develop a way to efficiently set up the data structures with discontinuous risk intervals for such models, which are more appropriate for many applications than the continuous alternatives. Finally, we apply these models to a real dataset to investigate the effect of gender on functional disability in a cohort of older persons. For comparison, we demonstrate modeling time to the first event.
The GEE Poisson, the Cox counting process, and the frailty models provided similar parameter estimates of gender effect on functional disability, that is, women had increased risk of bathing disability and other disability (disability in walking, dressing, or transferring) as compared to men. These results, especially for other disabilities, were quite different from those provided by an analysis of the first-event outcomes. However, the effect of gender was no longer significant in the counting process model fully adjusted for covariates.
Modeling time to only the first event may not be adequate. After properly setting up the data structures, repeated event models that account for the correlation between multiple events within subjects can be easily implemented with common statistical software packages.
研究人员常常采用相当简单的方法来分析重复发生的事件时间型健康状况,这些方法要么只考察首次事件的发生时间,要么将多个事件视为独立事件。虽然此前的应用主要集中在具有连续风险间隔的此类结果上,但已经开发出了更复杂的模型。应用这些模型的局限性包括,如果不仔细关注数据结构的构建,就难以实施。
我们首先回顾作为Cox模型和脆弱模型扩展的重复事件的事件时间模型。接下来,我们开发一种方法,为这类模型高效地建立具有不连续风险间隔的数据结构,与连续型替代方案相比,这种数据结构更适合许多应用。最后,我们将这些模型应用于一个真实数据集,以研究性别对一组老年人功能残疾的影响。为作比较,我们展示了对首次事件发生时间的建模。
广义估计方程泊松模型、Cox计数过程模型和脆弱模型对性别对功能残疾的影响提供了相似的参数估计,即与男性相比,女性洗澡残疾和其他残疾(行走、穿衣或转移方面的残疾)的风险增加。这些结果,尤其是对于其他残疾的结果,与首次事件结果分析所提供的结果有很大不同。然而,在对协变量进行完全调整的计数过程模型中,性别的影响不再显著。
仅对首次事件的发生时间进行建模可能并不充分。在正确建立数据结构之后,可以使用常见的统计软件包轻松实施考虑了个体内多个事件之间相关性的重复事件模型。