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The defective generalized Gompertz distribution and its use in the analysis of lifetime data in presence of cure fraction, censored data and covariates

机译:有缺陷的广义Gompertz分布及其在存在治愈分数,删失数据和协变量的情况下在寿命数据分析中的用途

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Survival analysis methods are widely used in studies where the variable of interest is related to the time until the occurrence of an event. The usual methods assume that all individuals under study are subject to this event, but there are practical situations where this assumption is unrealistic. In some cases it is possible that a percentage of individuals are immune to the event of interest or, especially in cancer clinical trials, they were cured from their disease after a given treatment. In the literature, this percentage is usually referred as "cure fraction". In the present paper, we have proposed a model based on a modification of the generalized Gompertz distribution introduced by El-Gohary et al. (2013) to account for the presence of a cure fraction. We also considered the presence of censored data and covariates. Maximum likelihood and Bayesian methods for estimation of the model parameters are presented. A simulation study is provided to evaluate the performance of the maximum likelihood method in estimating parameters. In the Bayesian analysis, posterior distributions of the parameters are estimated using the Markov chain Monte Carlo (MCMC) method. An example involving a real data set is presented.
机译:生存分析方法广泛用于关注变量与事件发生之前的时间相关的研究中。通常的方法假定所有正在研究的个人都受此事件的影响,但是在实际情况下,此假设是不现实的。在某些情况下,可能有一定比例的个体对目标事件免疫,或者特别是在癌症临床试验中,在给定治疗后他们可以从疾病中治愈。在文献中,该百分比通常称为“固化分数”。在本文中,我们提出了一个基于El-Gohary等人引入的广义Gompertz分布的修正模型。 (2013年),以解决治愈分数的存在。我们还考虑了审查数据和协变量的存在。提出了用于模型参数估计的最大似然法和贝叶斯方法。提供了一个仿真研究来评估最大似然法在估计参数方面的性能。在贝叶斯分析中,使用马尔可夫链蒙特卡洛(MCMC)方法估计参数的后验分布。给出了涉及真实数据集的示例。

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