Missing data approaches in longitudinal studies of aging: A case example using the National Health and Aging Trends Study

Author:

Duchesneau Emilie D.ORCID,Shmuel Shahar,Faurot Keturah R.ORCID,Musty Allison,Park JihyeORCID,Stürmer Til,Kinlaw Alan C.,Yang Yang Claire,Lund Jennifer L.ORCID

Abstract

Purpose 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. Methods 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. Results 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. Conclusions 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.

Funder

National Cancer Institute

National Institute on Aging

Pharmaceutical Research and Manufacturers of America Foundation

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

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