Longitudinal Data with Follow-up Truncated by Death: Match the Analysis Method to Research Aims
Brenda F. Kurland, Laura L. Johnson, Brian L. Egleston, Paula H. Diehr

TL;DR
This paper reviews various statistical methods for analyzing longitudinal data truncated by death, emphasizing matching the analysis approach to specific research aims and illustrating with cognitive aging data.
Contribution
It clarifies how different models arise from distribution factorizations and guides researchers in choosing appropriate methods based on their research goals.
Findings
Unconditional models may implicitly impute data beyond death.
Fully conditional models effectively describe individual trajectories.
Partly conditional models reflect average responses in survivors.
Abstract
Diverse analysis approaches have been proposed to distinguish data missing due to death from nonresponse, and to summarize trajectories of longitudinal data truncated by death. We demonstrate how these analysis approaches arise from factorizations of the distribution of longitudinal data and survival information. Models are illustrated using cognitive functioning data for older adults. For unconditional models, deaths do not occur, deaths are independent of the longitudinal response, or the unconditional longitudinal response is averaged over the survival distribution. Unconditional models, such as random effects models fit to unbalanced data, may implicitly impute data beyond the time of death. Fully conditional models stratify the longitudinal response trajectory by time of death. Fully conditional models are effective for describing individual trajectories, in terms of either aging…
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