Please use this identifier to cite or link to this item: https://oxfordhealth-nhs.archive.knowledgearc.net/handle/123456789/842
Title: A dose-effect network meta-analysis model: an application in antidepressants
Authors: Cipriani, Andrea
Keywords: Antidepressant Drugs
Depressive Disorders
Issue Date: Apr-2021
Citation: Tasnim Hamza, Toshi A. Furukawa, Nicola Orsini, Andrea Cipriani, Cynthia Iglesias, Georgia Salanti. A dose-effect network meta-analysis model: an application in antidepressants. arXiv.org > stat > arXiv:2104.05414
Abstract: Network meta-analysis (NMA) has been used to answer a range of clinical questions about the preferable intervention for a given condition. Although the effectiveness and safety of pharmacological agents depend on the dose administered, NMA applications typically ignore the role that drugs dosage play on the results. This leads to more heterogeneity in the network. In this paper we present a suite of network meta-analysis models that incorporates the dose-effect relationship (DE-NMA) using restricted cubic splines (RCS). We extend the model into a dose-effect network meta-regression to account for study-level covariates and for groups of agents in a class-effect DE-NMA model. We apply the models to a network of aggregate data about the efficacy of 21 antidepressants and placebo for depression. We found that all antidepressants are more efficacious than placebo after a certain dose. We also identify the dose level in which each antidepressant effect exceeds that of placebo and estimate the dose beyond the effect of the antidepressants no longer increases. The DE-NMA model with RCS takes a flexible approach to modelling the dose-effect relationship in multiple interventions, so decision-makers can use them to inform treatment choice.
URI: https://oxfordhealth-nhs.archive.knowledgearc.net/handle/123456789/842
Appears in Collections:Depressive Disorders

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