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Bayesian approach to cancer-trend analysis using age-stratified Poisson regression models.

机译:使用年龄分层泊松回归模型的贝叶斯趋势分析方法。

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摘要

Annual Percentage Change (APC) summarizes trends in age-adjusted cancer rates over short time-intervals. This measure implicitly assumes linearity of the log-rates over the intervals in question, which may not be valid, especially for relatively longer time-intervals. An alternative is the Average Annual Percentage Change (AAPC), which computes a weighted average of APC values over intervals where log-rates are piece-wise linear. In this article, we propose a Bayesian approach to calculating APC and AAPC values from age-adjusted cancer rate data. The procedure involves modeling the corresponding counts using age-specific Poisson regression models with a log-link function that contains unknown joinpoints. The slope-changes at the joinpoints are assumed to have a mixture distribution with point mass at zero and the joinpoints are assumed to be uniformly distributed subject to order-restrictions. Additionally, the age-specific intercept parameters are modeled nonparametrically using a Dirichlet process prior. The proposed method can be used to construct Bayesian credible intervals for AAPC using age-adjusted mortality rates. This provides a significant improvement over the currently available frequentist method, where variance calculations are done conditional on the joinpoint locations. Simulation studies are used to demonstrate the success of the method in capturing trend-changes. Finally, the proposed method is illustrated using data on prostate cancer incidence.
机译:年度百分比变更(APC)总结了在短时间间隔内调整的癌症率的趋势。这种度量隐含地假设对数的日志率的线性,这可能没有有效,特别是对于相对较长的时间间隔。替代方案是年平均年百分比变化(AAPC),其计算到数间隔的APC值的加权平均值,其中log-rates是碎片线性的。在本文中,我们提出了一种贝叶斯方法来计算来自年龄调整后的癌症率数据的APC和AAPC值。该过程涉及使用具有未知joinpoints的日志链路函数使用年龄特定的泊松回归模型来建立相应的计数。假设加入点处的斜率变化具有在零处具有点质量的混合分布,并且假设突出点被均匀分布于秩序限制。另外,特定年龄的截距参数在先前使用Dirichlet Process的非分度性地建模。所提出的方法可用于使用年龄调整后的死亡率构建AAPC的贝叶斯可信间隔。这提供了对当前可用的频率方法的显着改进,其中方差计算在加入点位置处于条件。仿真研究用于展示捕捉趋势变化的方法的成功。最后,使用关于前列腺癌发病率的数据来说明所提出的方法。

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