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Hauptverfasser: Reinikainen, Jaakko, Karvanen, Juha
Format: Preprint
Veröffentlicht: 2016
Schlagworte:
Online-Zugang:https://arxiv.org/abs/1609.01547
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author Reinikainen, Jaakko
Karvanen, Juha
author_facet Reinikainen, Jaakko
Karvanen, Juha
contents We consider planning longitudinal covariate measurements in follow-up studies where covariates are time-varying. We assume that the entire cohort cannot be selected for longitudinal measurements due to financial limitations and study how a subset of the cohort should be selected optimally in order to obtain precise estimates of covariate effects in a survival model. In our approach, the study will be designed sequentially utilizing the data collected in previous measurements of the individuals as prior information. We propose using a Bayesian optimality criterion in the subcohort selections, which is compared with simple random sampling using simulated and real follow-up data. This study extends previous results where optimal subcohort selection was studied with only one re-measurement and one covariate, to more realistic cases where several covariates and measurement points are allowed. Our results support the conclusion that the precision of the estimates can be clearly improved by optimal design.
format Preprint
id arxiv_https___arxiv_org_abs_1609_01547
institution arXiv
publishDate 2016
record_format arxiv
spellingShingle Bayesian subcohort selection for longitudinal covariate measurements in follow-up studies
Reinikainen, Jaakko
Karvanen, Juha
Methodology
We consider planning longitudinal covariate measurements in follow-up studies where covariates are time-varying. We assume that the entire cohort cannot be selected for longitudinal measurements due to financial limitations and study how a subset of the cohort should be selected optimally in order to obtain precise estimates of covariate effects in a survival model. In our approach, the study will be designed sequentially utilizing the data collected in previous measurements of the individuals as prior information. We propose using a Bayesian optimality criterion in the subcohort selections, which is compared with simple random sampling using simulated and real follow-up data. This study extends previous results where optimal subcohort selection was studied with only one re-measurement and one covariate, to more realistic cases where several covariates and measurement points are allowed. Our results support the conclusion that the precision of the estimates can be clearly improved by optimal design.
title Bayesian subcohort selection for longitudinal covariate measurements in follow-up studies
topic Methodology
url https://arxiv.org/abs/1609.01547