Li Yicheng, Raftery Adrian E
Department of Statistics, Box 354322, University of Washington, Seattle, Washington 98195-4322, USA.
Ann Appl Stat. 2020 Mar;14(1):381-408. doi: 10.1214/19-aoas1306. Epub 2020 Apr 16.
Smoking is one of the leading preventable threats to human health and a major risk factor for lung cancer, upper aero-digestive cancer, and chronic obstructive pulmonary disease. Estimating and forecasting the smoking attributable fraction (SAF) of mortality can yield insights into smoking epidemics and also provide a basis for more accurate mortality and life expectancy projection. Peto et al. (1992) proposed a method to estimate the SAF using the lung cancer mortality rate as an indicator of exposure to smoking in the population of interest. Here we use the same method to estimate the all-age SAF (ASAF) for both genders for over 60 countries. We document a strong and cross-nationally consistent pattern of the evolution of the SAF over time. We use this as the basis for a new Bayesian hierarchical model to project future male and female ASAF from over 60 countries simultaneously. This gives forecasts as well as predictive distributions that can be used to find uncertainty intervals for any quantity of interest. We assess the model using out-of-sample predictive validation, and find that it provides good forecasts and well calibrated forecast intervals, comparing favorably with other methods.
吸烟是对人类健康主要的可预防威胁之一,也是肺癌、上呼吸道消化道癌症和慢性阻塞性肺疾病的主要风险因素。估计和预测吸烟导致的死亡归因比例(SAF)可以深入了解吸烟流行情况,也为更准确地预测死亡率和预期寿命提供依据。佩托等人(1992年)提出了一种方法,以肺癌死亡率作为目标人群吸烟暴露的指标来估计SAF。在此,我们使用相同方法来估计60多个国家男女的全年龄段SAF(ASAF)。我们记录了SAF随时间演变的一种强烈且跨国一致的模式。我们以此为基础建立一个新的贝叶斯分层模型,以同时预测60多个国家未来的男性和女性ASAF。这给出了预测结果以及预测分布,可用于找到任何感兴趣数量的不确定性区间。我们使用样本外预测验证来评估该模型,发现它能提供良好的预测结果和校准良好的预测区间,与其他方法相比具有优势。