Lynch Scott M, Zang Emma
Department of Sociology, Duke University Population Research Institute, Duke University, Durham, NC, USA.
Department of Sociology and of Biostatistics, Yale University, New Haven, CT, USA.
Sociol Methodol. 2022 Aug;52(2):254-286. doi: 10.1177/00811750221112398. Epub 2022 Jul 23.
Multistate life table methods are an important tool for producing easily understood measures of population health. Most contemporary uses of these methods involve sample data, thus requiring techniques for capturing uncertainty in estimates. In recent decades, several methods have been developed to do so. Among these methods, the Bayesian approach proposed by Lynch and Brown has several unique advantages. However, the approach is limited to estimating years to be spent in only two living states, such as "healthy" and "unhealthy." In this article, the authors extend this method to allow for large state spaces with "quasi-absorbing" states. The authors illustrate the new method and show its advantages using data from the Health and Retirement Study to investigate U.S. regional differences in years of remaining life to be spent with diabetes, chronic conditions, and disabilities. The method works well and yields rich output for reporting and subsequent analyses. The expanded method also should facilitate the use of multi-state life tables to address a wider array of social science research questions.
多状态生命表方法是生成易于理解的人口健康指标的重要工具。这些方法目前大多应用于样本数据,因此需要采用一些技术来把握估计中的不确定性。近几十年来,已经开发了几种方法来实现这一点。在这些方法中,林奇和布朗提出的贝叶斯方法有几个独特的优点。然而,该方法仅限于估计仅在两种生存状态下度过的年数,例如“健康”和“不健康”。在本文中,作者扩展了这种方法,以允许存在具有“准吸收”状态的大状态空间。作者阐述了这种新方法,并利用健康与退休研究的数据展示了其优势,以调查美国在患糖尿病、慢性病和残疾情况下剩余生命年数的地区差异。该方法运行良好,并能产生丰富的输出结果用于报告和后续分析。扩展后的方法也应有助于使用多状态生命表来解决更广泛的社会科学研究问题。