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Semiparametric Bayesian approaches to joinpoint regression for population-based cancer survival data

机译:用于基于人群的癌症生存数据的联结回归的半参数贝叶斯方法

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摘要

According to the American Cancer Society report (1999), cancer surpasses heart disease as the leading cause of death in the United States of America (USA) for people of age less than 85. Thus, medical research in cancer is an important public health interest. Understanding how medical improvements are affecting cancer incidence, mortality and survival is critical for effective cancer control. In this paper, we study the cancer survival trend on the population level cancer data. In particular, we develop a parametric Bayesian joinpoint regression model based on a Poisson distribution for the relative survival. To avoid identifying the cause of death, we only conduct analysis based on the relative survival. The method is further extended to the semiparametric Bayesian joinpoint regression models wherein the parametric distributional assumptions of the joinpoint regression models are relaxed by modeling the distribution of regression slopes using Dirichlet process mixtures. We also consider the effect of adding covariates of interest in the joinpoint model. Three model selection criteria, namely, the conditional predictive ordinate (CPO), the expected predictive deviance (EPD), and the deviance information criteria (DIC), are used to select the number of joinpoints. We analyze the grouped survival data for distant testicular cancer from the Surveillance, Epidemiology, and End Results (SEER) Program using these Bayesian models.
机译:根据美国癌症协会的报告(1999年),在美国(85岁以下)人群中,癌症已超过心脏病,成为导致死亡的主要原因。因此,癌症的医学研究具有重要的公共卫生意义。 。了解医学进步如何影响癌症的发病率,死亡率和生存率对于有效控制癌症至关重要。在本文中,我们从人群水平的癌症数据研究了癌症的生存趋势。特别是,我们基于相对生存的泊松分布,开发了参数贝叶斯连接点回归模型。为了避免确定死亡原因,我们仅根据相对存活率进行分析。该方法进一步扩展到半参数贝叶斯连接点回归模型,其中通过使用Dirichlet过程混合物对回归斜率的分布进行建模,可以放宽连接点回归模型的参数分布假设。我们还考虑了在联接点模型中添加感兴趣的协变量的效果。使用三个模型选择标准,即条件预测纵坐标(CPO),预期预测偏差(EPD)和偏差信息标准(DIC),来选择连接点的数量。我们使用这些贝叶斯模型从监测,流行病学和最终结果(SEER)计划中分析了远处睾丸癌的分组生存数据。

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