The mixture cure model for analyzing survival data is characterized by the assumption that the population under study is divided into a group of subjects who will experience the event of interest over some finite time horizon and another group of cured subjects who will never experience the event irrespective of the duration of follow-up. When using the Bayesian paradigm for inference in survival models with a cure fraction, it is common practice to rely on Markov chain Monte Carlo (MCMC) methods to sample from posterior distributions. Although computationally feasible, the iterative nature of MCMC often implies long sampling times to explore the target space with chains that may suffer from slow convergence and poor mixing. Furthermore, extra efforts have to be invested in diagnostic checks to monitor the reliability of the generated posterior samples. An alternative strategy for fast and flexible sampling-free Bayesian inference in the mixture cure model is suggested in this paper by combining Laplace approximations and penalized B-splines. A logistic regression model is assumed for the cure proportion and a Cox proportional hazards model with a P-spline approximated baseline hazard is used to specify the conditional survival function of susceptible subjects. Laplace approximations to the conditional latent vector are based on analytical formulas for the gradient and Hessian of the log-likelihood, resulting in a substantial speed-up in approximating posterior distributions. Results show that LPSMC is an appealing alternative to classic MCMC for approximate Bayesian inference in standard mixture cure models.
翻译:用于分析生存数据的混合治愈模型的特点是,假设研究中的人口被分成一组主体,在一定的时间范围内将经历感兴趣的事件,在一定的时间范围内将经历感兴趣的事件,而另一组已治愈的主体将永远不会经历这种事件,无论后续时间长短。在使用巴伊西亚模式在生存模型中用治愈分数进行推断时,通常的做法是依靠Markov链和Monte Carlo(MCMC)方法从海面分布中取样。虽然计算上可行,但MCMC的迭接性往往意味着要花很长的采样时间来探索目标空间,其链条可能因缓慢趋同和混杂而受到影响。此外,还需要在诊断性检查方面作出更多努力,以监测所生成的海象样品的可靠性。本文建议采用快速和灵活、无采样的巴耶斯在混合物治愈模型中进行推断的替代战略,将Laplace 近似近似和惩罚性B-Spline的B-Spline方法作为治疗比例分析模型,并用P-spline 准基准危险模型来确定易感性标物的替代生存特性。Laplace-lagelimal 将最终结果显示一个基础矢测测测测测测值为基值。