Inconsistency identification in network meta-analysis via stochastic search variable selection
Georgios Seitidis, Stavros Nikolakopoulos, Ioannis Ntzoufras, Dimitris, Mavridis

TL;DR
This paper introduces SSIFS, a novel stochastic search variable selection method for detecting inconsistencies in network meta-analysis by evaluating effect modifiers and incorporating historical data for priors.
Contribution
The paper proposes a new Bayesian approach, SSIFS, for inconsistency detection in NMA that uses variable selection and informative priors based on historical meta-analyses.
Findings
Method effectively identifies inconsistent comparisons.
Incorporates historical data for better prior specification.
Available as an R package for practical use.
Abstract
The reliability of the results of network meta-analysis (NMA) lies in the plausibility of key assumption of transitivity. This assumption implies that the effect modifiers' distribution is similar across treatment comparisons. Transitivity is statistically manifested through the consistency assumption which suggests that direct and indirect evidence are in agreement. Several methods have been suggested to evaluate consistency. A popular approach suggests adding inconsistency factors to the NMA model. We follow a different direction by describing each inconsistency factor with a candidate covariate whose choice relies on variable selection techniques. Our proposed method, Stochastic Search Inconsistency Factor Selection (SSIFS), evaluates the consistency assumption both locally and globally, by applying the stochastic search variable selection method to determine whether the…
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Taxonomy
TopicsMeta-analysis and systematic reviews
