Yu Binbing, Huang Lan, Tiwari Ram C, Feuer Eric J, Johnson Karen A
National Institutes of Health, Bethesda, USA.
J R Stat Soc Ser A Stat Soc. 2009 Apr;172(2):405-425. doi: 10.1111/j.1467-985X.2009.00580.x.
In the United States cancer as a whole is the second leading cause of death and a major burden to health care, thus the medical progress against cancer is a major public health goal. There are many individual studies to suggest that cancer treatment breakthroughs and early diagnosis have significantly improved the prognosis of cancer patients. To better understand the relationship between medical improvements and the survival experience for the patient population at large, it is useful to evaluate cancer survival trends on the population level, e.g., to find out when and how much the cancer survival rates changed. In this paper, we analyze the population-based grouped cancer survival data by incorporating joinpoints into the survival models. A joinpoint survival model facilitates the identification of trends with significant change points in cancer survival, when related to cancer treatments or interventions. The Bayesian Information Criterion is used to select the number of joinpoints. The performance of the joinpoint survival models is evaluated with respect to cancer prognosis, joinpoint locations, annual percent changes in death rates by year of diagnosis, and sample sizes through intensive simulation studies. The model is then applied to the grouped relative survival data for several major cancer sites from the Surveillance, Epidemiology and End Results (SEER) Program of the National Cancer Institute. The change points in the survival trends for several major cancer sites are identified and the potential driving forces behind such change points are discussed.
在美国,癌症总体上是第二大死因,也是医疗保健的一项重大负担,因此对抗癌症的医学进展是一项主要的公共卫生目标。有许多单独的研究表明,癌症治疗突破和早期诊断显著改善了癌症患者的预后。为了更好地理解医学进步与广大患者群体生存体验之间的关系,在人群层面评估癌症生存趋势是有用的,例如,找出癌症生存率何时以及在多大程度上发生了变化。在本文中,我们通过将连接点纳入生存模型来分析基于人群的分组癌症生存数据。连接点生存模型有助于识别癌症生存中与癌症治疗或干预相关的具有显著变化点的趋势。贝叶斯信息准则用于选择连接点的数量。通过深入的模拟研究,从癌症预后、连接点位置、按诊断年份划分的死亡率年度百分比变化以及样本量等方面评估连接点生存模型的性能。然后将该模型应用于美国国立癌症研究所监测、流行病学和最终结果(SEER)计划中几个主要癌症部位的分组相对生存数据。确定了几个主要癌症部位生存趋势的变化点,并讨论了这些变化点背后的潜在驱动因素。