METAMISS2: Stata module accounting for missing outcome data in meta-analysis
Anna Chaimani () and
Ian White
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Anna Chaimani: Paris Descartes University
Statistical Software Components from Boston College Department of Economics
Abstract:
Missing outcome data are common in randomized controlled trials. If they are ignored then the estimated treatment effects might be biased. Meta-analysts usually assume that the missing data problem has been solved at the trial level and proceed to an available case analysis. This is equivalent to a missing at random assumption (MAR). However, if reasons for missingness are related to the actual outcome of the trials, then data are missing not at random (MNAR) and ignoring missing data may lead to a biased summary estimate. Models that quantify the degree of departure from the MAR assumption are available for both binary and continuous outcome data. These models relate the mean outcome in the missing data to the mean of the observed data for each group through informative missingness parameters (IMPs). Either the IMPs are informed by expert opinion, or a sensitivity analysis is conducted to evaluate how sensitive results are to different values of the IMPs. Different assumptions for the missing pattern are possible by defining the mean and the variance of the IMP for each study group, and their covariance across study groups. For continuous data, the metamiss2 command allows two definitions of the IMP: the informative missingness difference of means (IMDOM) or the informative missingness ratio of means (IMROM) (Mavridis et al, 2015). For binary data, the IMP is the informative missingness odds ratio (White et al, 2008a). metamiss and metamiss2 are different commands with overlapping functions. Users with binary outcomes including reasons for missing data should use metamiss. Other users should use metamiss2.
Language: Stata
Requires: Stata version 13
Keywords: meta-analysis; missing data; binary outcome; informative missingness (search for similar items in EconPapers)
Date: 2018-10-23, Revised 2019-12-01
Note: This module should be installed from within Stata by typing "ssc install metamiss2". The module is made available under terms of the GPL v3 (https://www.gnu.org/licenses/gpl-3.0.txt). Windows users should not attempt to download these files with a web browser.
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