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Autori principali: Wigle, Augustine, Béliveau, Audrey, Nikolakopoulou, Adriani, Lin, Lifeng
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2605.15142
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author Wigle, Augustine
Béliveau, Audrey
Nikolakopoulou, Adriani
Lin, Lifeng
author_facet Wigle, Augustine
Béliveau, Audrey
Nikolakopoulou, Adriani
Lin, Lifeng
contents Component network meta-analysis (CNMA) is a statistical methodology that enables estimation of relative effects for multi-component treatments, such as combinations of antidepressants, and individual components, such as single antidepressants, by synthesizing data from multiple studies. A commonly desired output of a systematic review and meta-analysis is a hierarchy of the treatments in terms of a certain performance metric. Methods have been established for standard network meta-analysis (NMA), but have not yet been extended to CNMA. In particular, CNMA presents unique challenges because the set of relative effects that can be uniquely estimated is more complex to determine compared to standard NMA, and a hierarchy involving relative effects that are not uniquely estimable is misleading. We present a step-by-step workflow for answering treatment hierarchy questions in both frequentist and Bayesian CNMA, including explicitly identifying the uniquely estimable relative effects. We illustrate the workflow by posing multiple treatment hierarchy questions in two distinct networks, one concerning primary care of depression and one disconnected network investigating treatment for chronic lymphocytic leukemia.
format Preprint
id arxiv_https___arxiv_org_abs_2605_15142
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Creating treatment and component hierarchies in component network meta-analysis
Wigle, Augustine
Béliveau, Audrey
Nikolakopoulou, Adriani
Lin, Lifeng
Methodology
Component network meta-analysis (CNMA) is a statistical methodology that enables estimation of relative effects for multi-component treatments, such as combinations of antidepressants, and individual components, such as single antidepressants, by synthesizing data from multiple studies. A commonly desired output of a systematic review and meta-analysis is a hierarchy of the treatments in terms of a certain performance metric. Methods have been established for standard network meta-analysis (NMA), but have not yet been extended to CNMA. In particular, CNMA presents unique challenges because the set of relative effects that can be uniquely estimated is more complex to determine compared to standard NMA, and a hierarchy involving relative effects that are not uniquely estimable is misleading. We present a step-by-step workflow for answering treatment hierarchy questions in both frequentist and Bayesian CNMA, including explicitly identifying the uniquely estimable relative effects. We illustrate the workflow by posing multiple treatment hierarchy questions in two distinct networks, one concerning primary care of depression and one disconnected network investigating treatment for chronic lymphocytic leukemia.
title Creating treatment and component hierarchies in component network meta-analysis
topic Methodology
url https://arxiv.org/abs/2605.15142