Calsavara Vinicius F, Milani Eder A, Bertolli Eduardo, Tomazella Vera
Department of Epidemiology and Statistics, A.C.Camargo Cancer Center, São Paulo, Brazil.
Institute of Mathematics and Statistics, Federal University of Goiás, Goiânia, Brazil.
Stat Methods Med Res. 2020 Aug;29(8):2100-2118. doi: 10.1177/0962280219883905. Epub 2019 Nov 6.
The semiparametric Cox regression model is often fitted in the modeling of survival data. One of its main advantages is the ease of interpretation, as long as the hazards rates for two individuals do not vary over time. In practice the proportionality assumption of the hazards may not be true in some situations. In addition, in several survival data is common a proportion of units not susceptible to the event of interest, even if, accompanied by a sufficiently large time, which is so-called immune, "cured," or not susceptible to the event of interest. In this context, several cure rate models are available to deal with in the long term. Here, we consider the generalized time-dependent logistic (GTDL) model with a power variance function (PVF) frailty term introduced in the hazard function to control for unobservable heterogeneity in patient populations. It allows for non-proportional hazards, as well as survival data with long-term survivors. Parameter estimation was performed using the maximum likelihood method, and Monte Carlo simulation was conducted to evaluate the performance of the models. Its practice relevance is illustrated in a real medical dataset from a population-based study of incident cases of melanoma diagnosed in the state of São Paulo, Brazil.
半参数Cox回归模型常用于生存数据建模。其主要优点之一是易于解释,前提是两个人的风险率不随时间变化。在实际中,风险的比例假设在某些情况下可能不成立。此外,在一些生存数据中,即使经过足够长的时间,也常有一定比例的个体对感兴趣的事件不敏感,即所谓的免疫、“治愈”或对感兴趣的事件不敏感。在这种情况下,有几种治愈率模型可用于长期处理。在此,我们考虑广义时间依赖逻辑(GTDL)模型,其风险函数中引入了幂方差函数(PVF)脆弱项,以控制患者群体中不可观测的异质性。它允许非比例风险以及存在长期幸存者的生存数据。使用最大似然法进行参数估计,并进行蒙特卡罗模拟以评估模型的性能。通过巴西圣保罗州一项基于人群的黑色素瘤新发病例研究的真实医学数据集说明了其实际相关性。