We propose an approach for the planning of 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. Our work improves the computational appr...
Retrospective outcome dependent sampling (ODS) designs are an efficient class of study designs that ...
Studies of memory trajectories using longitudinal data often result in highly non-representative sam...
Abstract In this dissertation, Bayesian adaptive design used to identify subgroup treatment effect i...
Epidemiological studies can often be designed in several ways, some of which may be more optimal th...
Repeated covariate measurements bring important information on the time-varying risk factors in long...
Longitudinal intervention studies on event occurrence can measure the timing of an event at discrete...
Objective: In epidemiological follow-up studies, many key covariates, such as smoking, use of medic...
In longitudinal studies, a popular model is the linear mixed model that includes fixed effec...
The case-cohort design for longitudinal data consists of a subcohort sampled at the beginning of the...
This paper presents a novel semiparametric joint model for multivariate longitudinal and survival da...
Bayesian statistical methods are becoming increasingly in demand in clinical and public health resea...
Studies with longitudinal measurements are common in clinical research. Particular interest lies in ...
Many large scale longitudinal cohort studies have been carried out in different fields of science. S...
Many clinical trials and other medical studies generate both longitudinal (repeated measurements) an...
Analyses involving both longitudinal and time-to-event data are quite common in medical research. Th...
Retrospective outcome dependent sampling (ODS) designs are an efficient class of study designs that ...
Studies of memory trajectories using longitudinal data often result in highly non-representative sam...
Abstract In this dissertation, Bayesian adaptive design used to identify subgroup treatment effect i...
Epidemiological studies can often be designed in several ways, some of which may be more optimal th...
Repeated covariate measurements bring important information on the time-varying risk factors in long...
Longitudinal intervention studies on event occurrence can measure the timing of an event at discrete...
Objective: In epidemiological follow-up studies, many key covariates, such as smoking, use of medic...
In longitudinal studies, a popular model is the linear mixed model that includes fixed effec...
The case-cohort design for longitudinal data consists of a subcohort sampled at the beginning of the...
This paper presents a novel semiparametric joint model for multivariate longitudinal and survival da...
Bayesian statistical methods are becoming increasingly in demand in clinical and public health resea...
Studies with longitudinal measurements are common in clinical research. Particular interest lies in ...
Many large scale longitudinal cohort studies have been carried out in different fields of science. S...
Many clinical trials and other medical studies generate both longitudinal (repeated measurements) an...
Analyses involving both longitudinal and time-to-event data are quite common in medical research. Th...
Retrospective outcome dependent sampling (ODS) designs are an efficient class of study designs that ...
Studies of memory trajectories using longitudinal data often result in highly non-representative sam...
Abstract In this dissertation, Bayesian adaptive design used to identify subgroup treatment effect i...