Literature DB >> 25540470

Bayesian piecewise mixture model for racial disparity in prostate cancer progression.

L Zhao1, M Banerjee2.   

Abstract

Racial differences in prostate cancer incidence and mortality have been reported. Several authors hypothesize that African Americans have a more rapid growth rate of prostate cancer compared to Caucasians, that manifests in higher recurrence and lower survival rates in the former group. In this paper we propose a Bayesian piecewise mixture model to characterize PSA progression over time in African Americans and Caucasians, using follow-up serial PSA measurements after surgery. Each individual's PSA trajectory is hypothesized to have a latent phase immediately following surgery followed by a rapid increase in PSA indicating regrowth of the tumor. The true time of transition from the latent phase to the rapid growth phase is unknown, and can vary across individuals, suggesting a random change point across individuals. Furthermore, some patients may not experience the latent phase due to the cancer having already spread outside the prostate before undergoing surgery. We propose a two-component mixture model to accommodate patients both with and without a latent phase. Within the framework of this mixture model, patients who do not have a latent phase are allowed to have different rates of PSA rise; patients who have a latent phase are allowed to have different PSA trajectories, represented by subject-specific change points and rates of PSA rise before and after the change point. The proposed Bayesian methodology is implemented using Markov Chain Monte Carlo techniques. Model selection is performed using deviance information criteria based on the observed and complete likelihoods. Finally, we illustrate the methods using a prostate cancer dataset.

Entities:  

Keywords:  DIC; MCMC; PSA profiles; mixture distribution; random change point

Year:  2012        PMID: 25540470      PMCID: PMC4273308          DOI: 10.1016/j.csda.2011.07.011

Source DB:  PubMed          Journal:  Comput Stat Data Anal        ISSN: 0167-9473            Impact factor:   1.681


  10 in total

1.  A statistical method for assessing a threshold in epidemiological studies.

Authors:  K Ulm
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3.  Black race is an adverse prognostic factor for prostate cancer recurrence following radical prostatectomy in an equal access health care setting.

Authors:  J W Moul; T H Douglas; W F McCarthy; D G McLeod
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4.  Should African-American men be tested for prostate carcinoma at an earlier age than white men?

Authors:  I J Powell; M Banerjee; W Sakr; D Grignon; D P Wood; M Novallo; E Pontes
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5.  An assessment of radical prostatectomy. Time trends, geographic variation, and outcomes. The Prostate Patient Outcomes Research Team.

Authors:  G L Lu-Yao; D McLerran; J Wasson; J E Wennberg
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Authors:  A S Kiuchi; J A Hartigan; T R Holford; P Rubinstein; C E Stevens
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7.  Hierarchical changepoint models for biochemical markers illustrated by tracking postradiotherapy prostate-specific antigen series in men with prostate cancer.

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8.  Prostate specific antigen doubling time and disease relapse after radiotherapy for prostate cancer.

Authors:  A Pollack; G K Zagars; V S Kavadi
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9.  Follow-up prostate cancer treatments after radical prostatectomy: a population-based study.

Authors:  G L Lu-Yao; A L Potosky; P C Albertsen; J H Wasson; M J Barry; J E Wennberg
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10.  Determinants of prostate cancer specific survival following radiation therapy during the prostate specific antigen era.

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