Partial imputation approach to analysis of repeated measurements with dependent drop-outs
- 30 April 2001
- journal article
- research article
- Published by Wiley in Statistics in Medicine
- Vol. 20 (8) , 1197-1214
- https://doi.org/10.1002/sim.778
Abstract
In clinical trials repeated measurements of a response variable are usually taken at prespecified time-points to compare the treatment effects. However, the comparison of treatment effects is often complicated by missing data caused by the withdrawal of some patients before the end of the study (that is, drop-outs). When the drop-out process depends on the response variable of interest, ignoring missing data may lead to biased comparison of the treatment effect. In this paper, conditions for ignoring the dependent missingness are investigated and a new approach using the usual testing procedure based on data with partial carrying-forward imputation is proposed. The proposed approach is conceptually and practically simple, and is motivated by making incremental improvement on the familiar 'all available data' (AAD) approach and the 'last value carrying forward' (LVCF) approach, which are commonly used in data analysis with drop-outs by practitioners. It is also compared favourably to the mixed-effect model approach with dependent drop-outs. Simulations and real data are used to evaluate and illustrate statistical properties of the proposed approach. The principle of the proposed approach can also be extended to using other imputation methods such as the multiple imputation.Keywords
This publication has 11 references indexed in Scilit:
- Rank Estimation of Treatment Differences Based on Repeated Measurements Subject to Dependent CensoringJournal of the American Statistical Association, 1999
- Stratified testing for treatment effects with missing data.Published by JSTOR ,1998
- Analysis of incomplete repeated measurements with dependent censoring timesBiometrika, 1998
- Weighted estimating equations with nonignorably missing response data.Published by JSTOR ,1997
- TESTING FOR TREATMENT DIFFERENCES WITH DROPOUTS PRESENT IN CLINICAL TRIALS - A COMPOSITE APPROACHStatistics in Medicine, 1997
- MIXTURE MODELS FOR THE JOINT DISTRIBUTION OF REPEATED MEASURES AND EVENT TIMESStatistics in Medicine, 1997
- Semiparametric regression estimation in the presence of dependent censoringBiometrika, 1995
- Statistical handling of drop‐outs in longitudinal clinical trialsStatistics in Medicine, 1992
- Estimation and Comparison of Changes in the Presence of Informative Right Censoring by Modeling the Censoring ProcessPublished by JSTOR ,1988
- Inference and missing dataBiometrika, 1976