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Published in: PharmacoEconomics 9/2010

01-09-2010 | Review Article

Frequency of Treatment-EffectModification Affecting Indirect Comparisons

A Systematic Review

Authors: Associate Professor Michael Coory, Susan Jordan

Published in: PharmacoEconomics | Issue 9/2010

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Abstract

A key assumption of indirect comparisons is similarity, which means that, in the face of differences in patient characteristics or study methods, there is no treatment-effect modification across sides of the indirect comparison. We therefore conducted a systematic review of MEDLINE and EMBASE from inception to November 2009 to summarize currently available information about how frequently, on average, treatment-effect modification occurs across trials that might be used on different sides of an indirect comparison. Although similarity is a key assumption, there is currently no published evidence specifically for indirect comparisons about how frequently treatment-effect modification occurs.
Six analyses were identified that assessed treatment-effect modification across studies included in direct head-to-head meta-analyses. Such analyses are relevant to indirect comparisons because the phenomenon being investigated would occur with similar frequency. They provide important information because lack of treatment-effect modification across sides of an indirect comparison cannot be directly assessed statistically; this is in contrast to direct head-to-head meta-analyses where Cochrane’s Q statistic or I2 can be used. For ratio measures such as the odds ratio and relative risk, treatment-effect modification occurred for 10‐33% of meta-analyses. For the risk difference (an arithmetic measure), the range was 15‐46%.
It is not prudent to assume similarity in an indirect comparison, based only on the result that ratio measures such as the odds ratio are reasonably robust to treatment-effect modification. All indirect comparisons should include a thorough narrative comparison of differences in patient characteristics and study methods. This will provide end users with the best evidence with which to make an assessment of the likelihood of treatment-effect modification and the plausibility of the similarity assumption.
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Metadata
Title
Frequency of Treatment-EffectModification Affecting Indirect Comparisons
A Systematic Review
Authors
Associate Professor Michael Coory
Susan Jordan
Publication date
01-09-2010
Publisher
Springer International Publishing
Published in
PharmacoEconomics / Issue 9/2010
Print ISSN: 1170-7690
Electronic ISSN: 1179-2027
DOI
https://doi.org/10.2165/11535670-000000000-00000

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