» Articles » PMID: 15475417

Sensitivity Analysis of Longitudinal Binary Data with Non-monotone Missing Values

Overview
Journal Biostatistics
Specialty Public Health
Date 2004 Oct 12
PMID 15475417
Citations 6
Authors
Affiliations
Soon will be listed here.
Abstract

This paper highlights the consequences of incomplete observations in the analysis of longitudinal binary data, in particular non-monotone missing data patterns. Sensitivity analysis is advocated and a method is proposed based on a log-linear model. A sensitivity parameter that represents the relationship between the response mechanism and the missing data mechanism is introduced. It is shown that although this parameter is identifiable, its estimation is highly questionable. A far better approach is to consider a range of plausible values and to estimate the parameters of interest conditionally upon each value of the sensitivity parameter. This allows us to assess the sensitivity of study's conclusion to assumptions regarding the missing data mechanism. The method is applied to a randomized clinical trial comparing the efficacy of two treatment regimens in patients with persistent asthma.

Citing Articles

Global sensitivity analysis of randomized trials with nonmonotone missing binary outcomes: Application to studies of substance use disorders.

Scharfstein D, Steingrimsson J, McDermott A, Wang C, Ray S, Campbell A Biometrics. 2021; 78(2):649-659.

PMID: 33728637 PMC: 10392106. DOI: 10.1111/biom.13455.


Randomized controlled trial of the mySmartSkin web-based intervention to promote skin self-examination and sun protection behaviors among individuals diagnosed with melanoma: study design and baseline characteristics.

Coups E, Manne S, Strickland P, Hilgart M, Goydos J, Heckman C Contemp Clin Trials. 2019; 83:117-127.

PMID: 31255801 PMC: 6690854. DOI: 10.1016/j.cct.2019.06.014.


Sensitivity analysis for non-monotone missing binary data in longitudinal studies: Application to the NIDA collaborative cocaine treatment study.

Fitzmaurice G, Lipsitz S, Weiss R Stat Methods Med Res. 2018; 28(10-11):3057-3073.

PMID: 30146938 PMC: 6393220. DOI: 10.1177/0962280218794725.


Inference in randomized trials with death and missingness.

Wang C, Scharfstein D, Colantuoni E, Girard T, Yan Y Biometrics. 2016; 73(2):431-440.

PMID: 27753071 PMC: 6383567. DOI: 10.1111/biom.12594.


Semiparametric regression models for repeated measures of mortal cohorts with non-monotone missing outcomes and time-dependent covariates.

Shardell M, Hicks G, Miller R, Magaziner J Stat Med. 2010; 29(22):2282-96.

PMID: 20564729 PMC: 3731632. DOI: 10.1002/sim.3985.