Department of Statistical Science, University College London, London, UK.
Department of Statistics, Pontificia Universidad Católica de Chile, Macul, Chile.
BMC Med Res Methodol. 2022 Apr 3;22(1):95. doi: 10.1186/s12874-022-01582-0.
Cancer survival represents one of the main indicators of interest in cancer epidemiology. However, the survival of cancer patients can be affected by several factors, such as comorbidities, that may interact with the cancer biology. Moreover, it is interesting to understand how different cancer sites and tumour stages are affected by different comorbidities. Identifying the comorbidities that affect cancer survival is thus of interest as it can be used to identify factors driving the survival of cancer patients. This information can also be used to identify vulnerable groups of patients with comorbidities that may lead to worst prognosis of cancer. We address these questions and propose a principled selection and evaluation of the effect of comorbidities on the overall survival of cancer patients. In the first step, we apply a Bayesian variable selection method that can be used to identify the comorbidities that predict overall survival. In the second step, we build a general Bayesian survival model that accounts for time-varying effects. In the third step, we derive several posterior predictive measures to quantify the effect of individual comorbidities on the population overall survival. We present applications to data on lung and colorectal cancers from two Spanish population-based cancer registries. The proposed methodology is implemented with a combination of the R-packages mombf and rstan. We provide the code for reproducibility at https://github.com/migariane/BayesVarImpComorbiCancer .
癌症存活率是癌症流行病学中主要关注的指标之一。然而,癌症患者的存活率可能受到多种因素的影响,例如合并症,这些因素可能与癌症生物学相互作用。此外,了解不同癌症部位和肿瘤阶段如何受到不同合并症的影响也很有趣。确定影响癌症存活率的合并症很重要,因为它可以用于确定导致癌症患者存活率的因素。这些信息还可用于识别合并症可能导致癌症预后最差的脆弱患者群体。我们解决了这些问题,并提出了一种有原则的选择和评估合并症对癌症患者总体存活率影响的方法。在第一步中,我们应用了一种贝叶斯变量选择方法,可用于识别预测总体存活率的合并症。在第二步中,我们构建了一个通用的贝叶斯生存模型,该模型考虑了时变效应。在第三步中,我们推导出了几种后验预测指标,以量化个体合并症对人群总体存活率的影响。我们将该方法应用于来自两个西班牙基于人群的癌症登记处的肺癌和结直肠癌数据。该方法是使用 R 包 mombf 和 rstan 组合实现的。我们在 https://github.com/migariane/BayesVarImpComorbiCancer 上提供了可重现性的代码。