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Steady-state Gibbs sampler estimation for lung cancer data
Authors:Martin X Dunbar  Robert Vogel  Lili Yu
Institution:1. Abbott Laboratories, 100 Abbott Park Road, Abbott Park, IL 60064, USA;2. Jiann-Ping Hsu College of Public Health, Karl E. Peace Center for Biostatistics, Georgia Southern University, Statesboro, GA 30460, USA
Abstract:This paper is based on the application of a Bayesian model to a clinical trial study to determine a more effective treatment to lower mortality rates and consequently to increase survival times among patients with lung cancer. In this study, Qian et al. 13 J. Qian, D.K. Stangl, and S. George, A Weibull model for survival data: Using prediction to decide when to stop a clinical trial, in Bayesian Biostatistics, D. Berry and D. Stangl, eds., Marcel Dekker, New York, 1996, pp. 187205. Google Scholar]] strived to determine if a Weibull survival model can be used to decide whether to stop a clinical trial. The traditional Gibbs sampler was used to estimate the model parameters. This paper proposes to use the independent steady-state Gibbs sampling (ISSGS) approach, introduced by Dunbar et al. 3 M. Dunbar, H.M. Samawi, R. Vogel, and L. Yu, A more efficient Gibbs sampler estimation using steady state simulation: Application to public health studies, J. Stat. Simul. Comput. 10.1080/00949655.2013.770857.Taylor &; Francis Online] Google Scholar]], to improve the original Gibbs sampler in multidimensional problems. It is demonstrated that ISSGS provides accuracy with unbiased estimation and improves the performance and convergence of the Gibbs sampler in this application.
Keywords:Bayesian model  clinical trial  Markov chain Monte Carlo methods  Gibbs sampler  dependent steady-state Gibbs sampling  independent steady-state Gibbs sampler  steady-state ranked simulated sampling
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