Literature DB >> 23720372

Causal inference for bivariate longitudinal quality of life data in presence of death by using global odds ratios.

Keunbaik Lee1, Michael J Daniels.   

Abstract

In longitudinal clinical trials, if a subject drops out due to death, certain responses, such as those measuring quality of life (QoL), will not be defined after the time of death. Thus, standard missing data analyses, e.g., under ignorable dropout, are problematic because these approaches implicitly 'impute' values of the response after death. In this paper we define a new survivor average causal effect for a bivariate response in a longitudinal quality of life study that had a high dropout rate with the dropout often due to death (or tumor progression). We show how principal stratification, with a few sensitivity parameters, can be used to draw causal inferences about the joint distribution of these two ordinal quality of life measures.
Copyright © 2013 John Wiley & Sons, Ltd.

Entities:  

Keywords:  missing data; ordinal data; principal stratification

Mesh:

Year:  2013        PMID: 23720372      PMCID: PMC3935993          DOI: 10.1002/sim.5857

Source DB:  PubMed          Journal:  Stat Med        ISSN: 0277-6715            Impact factor:   2.373


  17 in total

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7.  CAUSAL EFFECTS OF TREATMENTS FOR INFORMATIVE MISSING DATA DUE TO PROGRESSION/DEATH.

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8.  A global odds ratio regression model for bivariate ordered categorical data from ophthalmologic studies.

Authors:  J Williamson; K Kim
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9.  Marginalized models for longitudinal ordinal data with application to quality of life studies.

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10.  Estimation and inference for the causal effect of receiving treatment on a multinomial outcome.

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2.  A comparison of methods to estimate the survivor average causal effect in the presence of missing data: a simulation study.

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