Department of Mathematics and Statistics, Macquarie University, Sydney, New South Wales, Australia.
Melanoma Institute Australia, The University of Sydney, North Sydney, New South Wales, Australia.
Stat Med. 2022 Jul 30;41(17):3260-3280. doi: 10.1002/sim.9415. Epub 2022 Apr 26.
Time-to-event data in medical studies may involve some patients who are cured and will never experience the event of interest. In practice, those cured patients are right censored. However, when data contain a cured fraction, standard survival methods such as Cox proportional hazards models can produce biased results and therefore misleading interpretations. In addition, for some outcomes, the exact time of an event is not known; instead an interval of time in which the event occurred is recorded. This article proposes a new computational approach that can deal with both the cured fraction issues and the interval censoring challenge. To do so, we extend the traditional mixture cure Cox model to accommodate data with partly interval censoring for the observed event times. The traditional method for estimation of the model parameters is based on the expectation-maximization (EM) algorithm, where the log-likelihood is maximized through an indirect complete data log-likelihood function. We propose in this article an alternative algorithm that directly optimizes the log-likelihood function. Extensive Monte Carlo simulations are conducted to demonstrate the performance of the new method over the EM algorithm. The main advantage of the new algorithm is the generation of asymptotic variance matrices for all the estimated parameters. The new method is applied to a thin melanoma dataset to predict melanoma recurrence. Various inferences, including survival and hazard function plots with point-wise confidence intervals, are presented. An R package is now available at Github and will be uploaded to R CRAN.
在医学研究中,时间事件数据可能涉及一些已经治愈且永远不会经历感兴趣事件的患者。在实践中,这些治愈的患者被右删失。然而,当数据包含治愈部分时,标准的生存方法,如 Cox 比例风险模型,可能会产生有偏的结果,从而导致误导性的解释。此外,对于某些结果,事件的确切时间并不清楚;相反,记录的是事件发生的时间间隔。本文提出了一种新的计算方法,可以处理治愈部分问题和区间删失挑战。为此,我们将传统的混合治愈 Cox 模型扩展到可以处理观察到的事件时间存在部分区间删失的数据。模型参数的传统估计方法基于期望最大化 (EM) 算法,通过间接的完整数据对数似然函数最大化对数似然。本文提出了一种替代算法,直接优化对数似然函数。广泛的蒙特卡罗模拟表明,新方法在 EM 算法上的性能。新方法的主要优点是为所有估计参数生成渐近方差矩阵。该方法应用于一个薄的黑色素瘤数据集,以预测黑色素瘤复发。给出了各种推断,包括生存和危险函数图以及逐点置信区间。现在可以在 Github 上获得一个新的 R 包,并将其上传到 R CRAN。