| Literature DB >> 17364907 |
Ofer Harel1, Scott M Hofer, Lesa Hoffman, Nancy L Pedersen, Boo Johansson.
Abstract
A major challenge for inference regarding aging-related change in longitudinal studies is that of study attrition and population mortality. Inferences in longitudinal studies can account for attrition and mortality-related change as distinct processes, but this is made difficult when follow-up of all individuals (i.e., age at death) is not complete. This is a common problem because most longitudinal studies of aging either have incomplete follow-up or are still collecting data on subsequent outcomes, including time of death. A statistical approach is suggested for including time-to-death as a predictor in models with incomplete follow-up using a two-stage multiple-imputation procedure. An empirical example using data from the OCTO-Twin study is presented that shows the utility of his procedure for making inferences conditional on mortality when mortality data are incomplete.Mesh:
Year: 2007 PMID: 17364907 DOI: 10.1080/03610730701239004
Source DB: PubMed Journal: Exp Aging Res ISSN: 0361-073X Impact factor: 1.645