Department of Epidemiology, Gillings School of Global Public Health, University of North Carolina at Chapel Hill, Chapel Hill, North Carolina, United States of America.
Department of Physical Medicine and Rehabilitation, School of Medicine, University of North Carolina, Chapel Hill, North Carolina, United States of America.
PLoS One. 2023 Jun 8;18(6):e0286984. doi: 10.1371/journal.pone.0286984. eCollection 2023.
Missing data is a key methodological consideration in longitudinal studies of aging. We described missing data challenges and potential methodological solutions using a case example describing five-year frailty state transitions in a cohort of older adults.
We used longitudinal data from the National Health and Aging Trends Study, a nationally-representative cohort of Medicare beneficiaries. We assessed the five components of the Fried frailty phenotype and classified frailty based on their number of components (robust: 0, prefrail: 1-2, frail: 3-5). One-, two-, and five-year frailty state transitions were defined as movements between frailty states or death. Missing frailty components were imputed using hot deck imputation. Inverse probability weights were used to account for potentially informative loss-to-follow-up. We conducted scenario analyses to test a range of assumptions related to missing data.
Missing data were common for frailty components measured using physical assessments (walking speed, grip strength). At five years, 36% of individuals were lost-to-follow-up, differentially with respect to baseline frailty status. Assumptions for missing data mechanisms impacted inference regarding individuals improving or worsening in frailty.
Missing data and loss-to-follow-up are common in longitudinal studies of aging. Robust epidemiologic methods can improve the rigor and interpretability of aging-related research.
在老龄化纵向研究中,缺失数据是一个关键的方法学考虑因素。我们使用一个描述老年人群队列中五年虚弱状态转变的案例示例,描述了缺失数据的挑战和潜在的方法学解决方案。
我们使用了来自全国健康老龄化趋势研究(一项针对医疗保险受益人的全国代表性队列研究)的纵向数据。我们评估了 Fried 虚弱表型的五个组成部分,并根据其组成部分的数量对虚弱进行分类(强壮:0,虚弱前期:1-2,虚弱:3-5)。一年、两年和五年的虚弱状态转变定义为在虚弱状态之间或死亡之间的移动。使用热deck 插补法对缺失的虚弱成分进行插补。逆概率权重用于考虑潜在的有信息的随访丢失。我们进行了情景分析,以测试与缺失数据相关的一系列假设。
使用身体评估(步行速度、握力)测量的虚弱成分的缺失数据很常见。在五年时,36%的个体失去随访,与基线虚弱状态存在差异。缺失数据机制的假设会影响对个体虚弱状况改善或恶化的推断。
在老龄化的纵向研究中,缺失数据和随访丢失很常见。稳健的流行病学方法可以提高与衰老相关研究的严谨性和可解释性。