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Published in: Systematic Reviews 1/2015

Open Access 01-12-2015 | Commentary

Network meta-analysis incorporating randomized controlled trials and non-randomized comparative cohort studies for assessing the safety and effectiveness of medical treatments: challenges and opportunities

Authors: Chris Cameron, Bruce Fireman, Brian Hutton, Tammy Clifford, Doug Coyle, George Wells, Colin R. Dormuth, Robert Platt, Sengwee Toh

Published in: Systematic Reviews | Issue 1/2015

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Abstract

Network meta-analysis is increasingly used to allow comparison of multiple treatment alternatives simultaneously, some of which may not have been compared directly in primary research studies. The majority of network meta-analyses published to date have incorporated data from randomized controlled trials (RCTs) only; however, inclusion of non-randomized studies may sometimes be considered. Non-randomized studies can complement RCTs or address some of their limitations, such as short follow-up time, small sample size, highly selected population, high cost, and ethical restrictions. In this paper, we discuss the challenges and opportunities of incorporating both RCTs and non-randomized comparative cohort studies into network meta-analysis for assessing the safety and effectiveness of medical treatments. Non-randomized studies with inadequate control of biases such as confounding may threaten the validity of the entire network meta-analysis. Therefore, identification and inclusion of non-randomized studies must balance their strengths with their limitations. Inclusion of both RCTs and non-randomized studies in network meta-analysis will likely increase in the future due to the growing need to assess multiple treatments simultaneously, the availability of higher quality non-randomized data and more valid methods, and the increased use of progressive licensing and product listing agreements requiring collection of data over the life cycle of medical products. Inappropriate inclusion of non-randomized studies could perpetuate the biases that are unknown, unmeasured, or uncontrolled. However, thoughtful integration of randomized and non-randomized studies may offer opportunities to provide more timely, comprehensive, and generalizable evidence about the comparative safety and effectiveness of medical treatments.
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Metadata
Title
Network meta-analysis incorporating randomized controlled trials and non-randomized comparative cohort studies for assessing the safety and effectiveness of medical treatments: challenges and opportunities
Authors
Chris Cameron
Bruce Fireman
Brian Hutton
Tammy Clifford
Doug Coyle
George Wells
Colin R. Dormuth
Robert Platt
Sengwee Toh
Publication date
01-12-2015
Publisher
BioMed Central
Published in
Systematic Reviews / Issue 1/2015
Electronic ISSN: 2046-4053
DOI
https://doi.org/10.1186/s13643-015-0133-0

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