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Síťová metaanalýza×Metaregrese×
OborSyntéza důkazůMetaanalýza
RodinaProcess / pipelineRegression model
Rok vzniku20022002
TvůrceLumley (2002)Simon Thompson & Julian Higgins
TypMethodWeighted regression for effect-size heterogeneity
Původní zdrojLumley, T. (2002). Network meta-analysis for indirect treatment comparisons. Statistics in Medicine, 21(16), 2313–2324. DOI ↗Thompson, S. G., & Higgins, J. P. T. (2002). How should meta-regression analyses be undertaken and interpreted? Statistics in Medicine, 21(11), 1559–1573. DOI ↗
Další názvyMixed Treatment Comparison, MTC, Indirect Comparison Meta-AnalysisMeta-Analytic Regression, Weighted Regression in Meta-Analysis, Moderator Analysis, Meta-regresyon
Příbuzné12
ShrnutíNetwork meta-analysis (NMA) is a systematic method for comparing multiple interventions simultaneously within a single analytical framework, incorporating both direct evidence (head-to-head trials) and indirect evidence (comparisons via common comparators). First formalized by Lumley in 2002, NMA allows researchers to rank treatments and quantify comparative effectiveness even when some treatment pairs have never been directly studied.Meta-regression is a statistical technique that extends conventional meta-analysis by regressing study-level effect sizes on one or more study characteristics (moderators) to explain between-study heterogeneity. Formalized by Thompson and Higgins in 2002, it uses weighted least squares — weighting each study by the inverse of its variance — within a mixed-effects framework, allowing researchers to identify which study features systematically account for variation in observed effects across the literature.
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ScholarGatePorovnat metody: Network Meta-Analysis · Meta-Regression. Získáno 2026-06-17 z https://scholargate.app/cs/compare