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EM algorithm-based likelihood estimation for a generalized Gompertz regression model in presence of survival data with long-term survivors: an application to uterine cervical cancer data

机译:存在长期存活者的存在生存数据的广义Gompertz回归模型的基于EM算法的似然估计:在子宫宫颈癌数据中的应用

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In this paper we develop a regression model for survival data in the presence of long-term survivors based on the generalized Gompertz distribution introduced by El-Gohary et al. [The generalized Gompertz distribution. Appl Math Model. 2013;37:13-24] in a defective version. This model includes as special case the Gompertz cure rate model proposed by Gieser et al. [Modelling cure rates using the Gompertz model with covariate information. Stat Med. 1998;17:831-839]. Next, an expectation maximization algorithm is then developed for determining the maximum likelihood estimates (MLEs) of the parameters of the model. In addition, we discuss the construction of confidence intervals for the parameters using the asymptotic distributions of the MLEs and the parametric bootstrap method, and assess their performance through a Monte Carlo simulation study. Finally, the proposed methodology was applied to a database on uterine cervical cancer.
机译:在本文中,我们根据El-Gohary等人提出的广义Gompertz分布,为存在长期生存者的生存数据建立了回归模型。 [广义Gompertz分布。应用数学模型。 2013; 37:13-24]中存在缺陷的版本。作为特殊情况,该模型包括Gieser等人提出的Gompertz固化速率模型。 [使用Gompertz模型和协变量信息对治愈率进行建模。 Stat Med。 1998; 17:831-839]。接下来,然后开发期望最大化算法,用于确定模型参数的最大似然估计(MLE)。此外,我们讨论了使用MLE的渐近分布和参数自举方法构造参数的置信区间,并通过蒙特卡洛模拟研究评估其性能。最后,将所提出的方法应用于子宫宫颈癌数据库。

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