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Main Authors: Lou, Jitong, Rettiganti, Mallikarjuna, Qu, Yongming
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.06939
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author Lou, Jitong
Rettiganti, Mallikarjuna
Qu, Yongming
author_facet Lou, Jitong
Rettiganti, Mallikarjuna
Qu, Yongming
contents Pattern-mixture models have received increasing attention as they are commonly used to assess treatment effects in primary or sensitivity analyses for clinical trials with nonignorable missing data. Pattern-mixture models have traditionally been implemented using multiple imputation, where the variance estimation may be a challenge because the Rubin's approach of combining between- and within-imputation variance may not provide consistent variance estimation while bootstrap methods may be time-consuming. Direct likelihood-based approaches have been proposed in the literature and implemented for some pattern-mixture models, but the assumptions are sometimes restrictive, and the theoretical framework is fragile. In this article, we propose an analytical framework for an efficient direct likelihood estimation method for commonly used pattern-mixture models corresponding to return-to-baseline, jump-to-reference, placebo washout, and retrieved dropout imputations. A parsimonious tipping point analysis is also discussed and implemented. Results from simulation studies demonstrate that the proposed methods provide consistent estimators. We further illustrate the utility of the proposed methods using data from a clinical trial evaluating a treatment for type 2 diabetes.
format Preprint
id arxiv_https___arxiv_org_abs_2410_06939
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Direct Estimation for Commonly Used Pattern-Mixture Models in Clinical Trials
Lou, Jitong
Rettiganti, Mallikarjuna
Qu, Yongming
Methodology
Pattern-mixture models have received increasing attention as they are commonly used to assess treatment effects in primary or sensitivity analyses for clinical trials with nonignorable missing data. Pattern-mixture models have traditionally been implemented using multiple imputation, where the variance estimation may be a challenge because the Rubin's approach of combining between- and within-imputation variance may not provide consistent variance estimation while bootstrap methods may be time-consuming. Direct likelihood-based approaches have been proposed in the literature and implemented for some pattern-mixture models, but the assumptions are sometimes restrictive, and the theoretical framework is fragile. In this article, we propose an analytical framework for an efficient direct likelihood estimation method for commonly used pattern-mixture models corresponding to return-to-baseline, jump-to-reference, placebo washout, and retrieved dropout imputations. A parsimonious tipping point analysis is also discussed and implemented. Results from simulation studies demonstrate that the proposed methods provide consistent estimators. We further illustrate the utility of the proposed methods using data from a clinical trial evaluating a treatment for type 2 diabetes.
title Direct Estimation for Commonly Used Pattern-Mixture Models in Clinical Trials
topic Methodology
url https://arxiv.org/abs/2410.06939