Precision of Treatment Hierarchy: A Metric for Quantifying Certainty in Treatment Hierarchies from Network Meta-Analysis
Augustine Wigle (1), Audrey B\'eliveau (1), Georgia Salanti (2), Gerta R\"ucker (3), Guido Schwarzer (3), Dimitris Mavridis (4), Adriani Nikolakopoulou (5, 3) ((1) University of Waterloo, (2) University of Bern, (3) University of Freiburg, (4) University of Ioannina

TL;DR
The paper introduces POTH, a new metric that quantifies the certainty of treatment hierarchies derived from network meta-analyses, enhancing the interpretability of treatment rankings.
Contribution
It proposes POTH, a novel metric linking variance measures to quantify certainty in treatment hierarchies from SUCRAs or P-scores, with applications to subsets of treatments.
Findings
POTH provides an interpretable certainty measure for treatment hierarchies.
The metric can be applied to subsets of treatments, such as top-ranked treatments.
Empirical analysis demonstrates POTH's properties and practical utility.
Abstract
Network meta-analysis (NMA) is an extension of pairwise meta-analysis which facilitates the estimation of relative effects for multiple competing treatments. A hierarchy of treatments is a useful output of an NMA. Treatment hierarchies are produced using ranking metrics. Common ranking metrics include the Surface Under the Cumulative RAnking curve (SUCRA) and P-scores, which are the frequentist analogue to SUCRAs. Both metrics consider the size and uncertainty of the estimated treatment effects, with larger values indicating a more preferred treatment. Although SUCRAs and P-scores themselves consider uncertainty, treatment hierarchies produced by these ranking metrics are typically reported without a measure of certainty, which might be misleading to practitioners. We propose a new metric, Precision of Treatment Hierarchy (POTH), which quantifies the certainty in producing a treatment…
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Taxonomy
TopicsMeta-analysis and systematic reviews · Mental Health Research Topics
