基于持续时间依赖的无残疾预期寿命建模:关于马尔可夫假设偏差的研究笔记。

IF 3.6 1区 社会学 Q1 DEMOGRAPHY
Tianyu Shen, James O'Donnell
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引用次数: 0

摘要

关于健康预期寿命的人口统计学研究往往依赖于马尔科夫假设,而马尔科夫假设没有考虑暴露于风险的持续时间。为了解决这一限制,开发了像依赖于持续时间的多状态生命表(DDMSLT)这样的模型。然而,这些模型不能直接应用于左删节调查数据,因为它们需要知道在初始状态下花费的时间,而由于调查设计的原因,这些时间是很少知道的。本研究报告提出了一种在DDMSLT框架内利用这类调查数据来估计多状态预期寿命的灵活方法。该方法包括部分删除左删减观测值并截断持续时间长度,之后假定持续时间依赖性最小。利用美国健康和退休研究,我们将这种方法应用于计算美国老年人的无残疾/健康预期寿命(HLE),并将持续时间相关模型与具有马尔可夫假设的典型多状态模型进行比较。研究结果表明,虽然过渡概率中存在持续时间依赖性,但其对HLE的影响是平均的。因此,这种情况下的偏差是最小的,并且马尔可夫假设提供了对HLE的合理和简约的估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Disability-Free Life Expectancy With Duration Dependence: A Research Note on the Bias in the Markov Assumption.

Demographic studies on healthy life expectancy often rely on the Markov assumption, which fails to consider the duration of exposure to risk. To address this limitation, models like the duration-dependent multistate life table (DDMSLT) have been developed. However, these models cannot be directly applied to left-censored survey data, as they require knowledge of the time spent in the initial state, which is rarely known because of survey design. This research note presents a flexible approach for utilizing this type of survey data within the DDMSLT framework to estimate multistate life expectancies. The approach involves partially dropping left-censored observations and truncating the duration length after which duration dependence is assumed to be minimal. Utilizing the U.S. Health and Retirement Study, we apply this approach to compute disability-free/healthy life expectancy (HLE) among older adults in the United States and compare duration-dependent models to the typical multistate model with the Markov assumption. Findings suggest that while duration dependence is present in transition probabilities, its effect on HLE is averaged out. As a result, the bias in this case is minimal, and the Markov assumption provides a plausible and parsimonious estimate of HLE.

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来源期刊
Demography
Demography DEMOGRAPHY-
CiteScore
5.90
自引率
2.90%
发文量
82
期刊介绍: Since its founding in 1964, the journal Demography has mirrored the vitality, diversity, high intellectual standard and wide impact of the field on which it reports. Demography presents the highest quality original research of scholars in a broad range of disciplines, including anthropology, biology, economics, geography, history, psychology, public health, sociology, and statistics. The journal encompasses a wide variety of methodological approaches to population research. Its geographic focus is global, with articles addressing demographic matters from around the planet. Its temporal scope is broad, as represented by research that explores demographic phenomena spanning the ages from the past to the present, and reaching toward the future. Authors whose work is published in Demography benefit from the wide audience of population scientists their research will reach. Also in 2011 Demography remains the most cited journal among population studies and demographic periodicals. Published bimonthly, Demography is the flagship journal of the Population Association of America, reaching the membership of one of the largest professional demographic associations in the world.
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