University of Bordeaux, ISPED, Centre INSERM U897-Epidemiology-Biostatistics, Bordeaux, France.
Int J Epidemiol. 2013 Aug;42(4):1177-86. doi: 10.1093/ije/dyt126. Epub 2013 Jul 30.
In survival analyses of longitudinal data, death is often a competing event for the disease of interest, and the time-to-disease onset is interval-censored when the diagnosis is made at intermittent follow-up visits. As a result, the disease status at death is unknown for subjects disease-free at the last visit before death. Standard survival analysis consists in right-censoring the time-to-disease onset at that visit, which may induce an underestimation of the disease incidence. By contrast, an illness-death model for interval-censored data accounts for the probability of developing the disease between that visit and death, and provides a better incidence estimate. However, the two approaches have never been compared for estimating the effect of exposure on disease risk.
This paper compares through simulations the accuracy of the effect estimates from a semi-parametric illness-death model for interval-censored data and the standard Cox model. The approaches are also compared for estimating the effects of selected risk factors on the risk of dementia, using the French elderly PAQUID cohort data.
The illness-death model provided a more accurate effect estimate of exposures that also affected mortality. The direction and magnitude of the bias from the Cox model depended on the effects of the exposure on disease and death. The application to the PAQUID cohort confirmed the simulation results.
If follow-up intervals are wide and the exposure has an impact on death, then the illness-death model for interval-censored data should be preferred to the standard Cox regression analysis.
在纵向数据的生存分析中,死亡通常是感兴趣疾病的竞争事件,当在间歇性随访就诊时做出诊断时,疾病发病时间是区间删失的。因此,在死亡前的最后一次就诊时无疾病的受试者,其疾病状态在死亡时是未知的。标准生存分析包括在该就诊时对疾病发病时间进行右删失,这可能会导致疾病发病率的低估。相比之下,区间删失数据的疾病-死亡模型考虑了在该就诊和死亡之间发生疾病的概率,并提供了更好的发病率估计。然而,这两种方法从未在估计暴露对疾病风险的影响方面进行过比较。
本文通过模拟比较了区间删失数据的半参数疾病-死亡模型和标准 Cox 模型的效果估计的准确性。还比较了这两种方法在使用法国老年 PAQUID 队列数据估计选定风险因素对痴呆风险的影响方面的效果。
疾病-死亡模型提供了更准确的暴露效果估计,这些暴露也影响了死亡率。Cox 模型的偏差的方向和大小取决于暴露对疾病和死亡的影响。对 PAQUID 队列的应用证实了模拟结果。
如果随访间隔较宽且暴露对死亡有影响,那么应该优先选择区间删失数据的疾病-死亡模型,而不是标准的 Cox 回归分析。