| Literature DB >> 28834175 |
Fei Gao1, Guanghan F Liu2, Donglin Zeng1, Lei Xu2, Bridget Lin1, Guoqing Diao3, Gregory Golm2, Joseph F Heyse2, Joseph G Ibrahim1.
Abstract
In clinical trials, missing data commonly arise through nonadherence to the randomized treatment or to study procedure. For trials in which recurrent event endpoints are of interests, conventional analyses using the proportional intensity model or the count model assume that the data are missing at random, which cannot be tested using the observed data alone. Thus, sensitivity analyses are recommended. We implement the control-based multiple imputation as sensitivity analyses for the recurrent event data. We model the recurrent event using a piecewise exponential proportional intensity model with frailty and sample the parameters from the posterior distribution. We impute the number of events after dropped out and correct the variance estimation using a bootstrap procedure. We apply the method to an application of sitagliptin study.Entities:
Keywords: bootstrap; control-based imputation; missing data; multiple imputation; recurrent event data
Mesh:
Substances:
Year: 2017 PMID: 28834175 DOI: 10.1002/pst.1821
Source DB: PubMed Journal: Pharm Stat ISSN: 1539-1604 Impact factor: 1.894