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Cox à méta-analyse×Méta-analyse de données individuelles de patients×
DomaineÉpidémiologieSynthèse des données probantes
FamilleProcess / pipelineProcess / pipeline
Année d'origine1998–20071990s
Auteur d'origineParmar, Torri & Stewart; Tierney et al.Cochrane Collaboration, Pioneered by Stewart & Clarke
TypeMeta-analytic survival modelMethod
Source fondatriceTierney, J. F., Stewart, L. A., Ghersi, D., Burdett, S., & Sydes, M. R. (2007). Practical methods for incorporating summary time-to-event data into meta-analysis. Trials, 8(1), 16. DOI ↗Stewart, L. A., Clarke, M. J., & Cochrane IPD Meta-analysis Methods Group. (2015). Practical methodology of meta-analyses (including IPD) of randomised trials reporting time to event data. Cochrane Database of Systematic Reviews, 2015(10), MR000027. link ↗
Aliaspooled Cox regression meta-analysis, meta-Cox model, survival meta-analysis, Cox PH poolingIPD Meta-Analysis, Participant-Level Data Synthesis, One-Stage Meta-Analysis
Apparentées31
RésuméMeta-analytic Cox proportional hazards is a quantitative synthesis technique that pools log hazard ratios from multiple Cox regression survival analyses into a single, more precise estimate of the association between an exposure or treatment and a time-to-event outcome. It combines the inferential power of survival analysis with the evidence-aggregation logic of meta-analysis, making it the standard approach for summarising multi-study survival evidence in clinical and epidemiological research.Individual patient data meta-analysis (IPD-MA) is a systematic synthesis method where researchers obtain and analyze raw data at the patient level from multiple randomized controlled trials, rather than relying on published summary statistics (aggregate data). Pioneered by the Cochrane Collaboration and formalized by Stewart, Clarke, and Riley, IPD-MA is considered the gold standard for evidence synthesis because it enables consistent outcome definition across trials, robust subgroup analysis, and detection of treatment-covariate interactions. Though time-intensive and resource-demanding, IPD-MA provides the most reliable estimates of intervention effects and is preferred for critical clinical decisions, particularly for identifying which patients benefit most from treatment.
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ScholarGateComparer des méthodes: Meta-analytic Cox proportional hazards · Individual Patient Data Meta-Analysis. Consulté le 2026-06-20 sur https://scholargate.app/fr/compare