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Modelling time‐course relationships with multiple treatments: Model‐based network meta‐analysis for continuous summary outcomes

BACKGROUND: Model‐based meta‐analysis (MBMA) is increasingly used to inform drug‐development decisions by synthesising results from multiple studies to estimate treatment, dose‐response, and time‐course characteristics. Network meta‐analysis (NMA) is used in Health Technology Appraisals for simultan...

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Autores principales: Pedder, Hugo, Dias, Sofia, Bennetts, Margherita, Boucher, Martin, Welton, Nicky J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6563489/
https://www.ncbi.nlm.nih.gov/pubmed/31013000
http://dx.doi.org/10.1002/jrsm.1351
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author Pedder, Hugo
Dias, Sofia
Bennetts, Margherita
Boucher, Martin
Welton, Nicky J.
author_facet Pedder, Hugo
Dias, Sofia
Bennetts, Margherita
Boucher, Martin
Welton, Nicky J.
author_sort Pedder, Hugo
collection PubMed
description BACKGROUND: Model‐based meta‐analysis (MBMA) is increasingly used to inform drug‐development decisions by synthesising results from multiple studies to estimate treatment, dose‐response, and time‐course characteristics. Network meta‐analysis (NMA) is used in Health Technology Appraisals for simultaneously comparing effects of multiple treatments, to inform reimbursement decisions. Recently, a framework for dose‐response model‐based network meta‐analysis (MBNMA) has been proposed that combines, often nonlinear, MBMA modelling with the statistically robust properties of NMA. Here, we aim to extend this framework to time‐course models. METHODS: We propose a Bayesian time‐course MBNMA modelling framework for continuous summary outcomes that allows for nonlinear modelling of multiparameter time‐course functions, accounts for residual correlation between observations, preserves randomisation by modelling relative effects, and allows for testing of inconsistency between direct and indirect evidence on the time‐course parameters. We demonstrate our modelling framework using an illustrative dataset of 23 trials investigating treatments for pain in osteoarthritis. RESULTS: Of the time‐course functions that we explored, the E(max) model gave the best fit to the data and has biological plausibility. Some simplifying assumptions were needed to identify the ET(50), due to few observations at early follow‐up times. Treatment estimates were robust to the inclusion of correlations in the likelihood. CONCLUSIONS: Time‐course MBNMA provides a statistically robust framework for synthesising evidence on multiple treatments at multiple time points. The use of placebo‐controlled studies in drug‐development means there is limited potential for inconsistency. The methods can inform drug‐development decisions and provide the rigour needed in the reimbursement decision‐making process.
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spelling pubmed-65634892019-06-17 Modelling time‐course relationships with multiple treatments: Model‐based network meta‐analysis for continuous summary outcomes Pedder, Hugo Dias, Sofia Bennetts, Margherita Boucher, Martin Welton, Nicky J. Res Synth Methods Research Articles BACKGROUND: Model‐based meta‐analysis (MBMA) is increasingly used to inform drug‐development decisions by synthesising results from multiple studies to estimate treatment, dose‐response, and time‐course characteristics. Network meta‐analysis (NMA) is used in Health Technology Appraisals for simultaneously comparing effects of multiple treatments, to inform reimbursement decisions. Recently, a framework for dose‐response model‐based network meta‐analysis (MBNMA) has been proposed that combines, often nonlinear, MBMA modelling with the statistically robust properties of NMA. Here, we aim to extend this framework to time‐course models. METHODS: We propose a Bayesian time‐course MBNMA modelling framework for continuous summary outcomes that allows for nonlinear modelling of multiparameter time‐course functions, accounts for residual correlation between observations, preserves randomisation by modelling relative effects, and allows for testing of inconsistency between direct and indirect evidence on the time‐course parameters. We demonstrate our modelling framework using an illustrative dataset of 23 trials investigating treatments for pain in osteoarthritis. RESULTS: Of the time‐course functions that we explored, the E(max) model gave the best fit to the data and has biological plausibility. Some simplifying assumptions were needed to identify the ET(50), due to few observations at early follow‐up times. Treatment estimates were robust to the inclusion of correlations in the likelihood. CONCLUSIONS: Time‐course MBNMA provides a statistically robust framework for synthesising evidence on multiple treatments at multiple time points. The use of placebo‐controlled studies in drug‐development means there is limited potential for inconsistency. The methods can inform drug‐development decisions and provide the rigour needed in the reimbursement decision‐making process. John Wiley and Sons Inc. 2019-05-29 2019-06 /pmc/articles/PMC6563489/ /pubmed/31013000 http://dx.doi.org/10.1002/jrsm.1351 Text en © 2019 The Authors Research Synthesis Methods Published by John Wiley & Sons Ltd This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Articles
Pedder, Hugo
Dias, Sofia
Bennetts, Margherita
Boucher, Martin
Welton, Nicky J.
Modelling time‐course relationships with multiple treatments: Model‐based network meta‐analysis for continuous summary outcomes
title Modelling time‐course relationships with multiple treatments: Model‐based network meta‐analysis for continuous summary outcomes
title_full Modelling time‐course relationships with multiple treatments: Model‐based network meta‐analysis for continuous summary outcomes
title_fullStr Modelling time‐course relationships with multiple treatments: Model‐based network meta‐analysis for continuous summary outcomes
title_full_unstemmed Modelling time‐course relationships with multiple treatments: Model‐based network meta‐analysis for continuous summary outcomes
title_short Modelling time‐course relationships with multiple treatments: Model‐based network meta‐analysis for continuous summary outcomes
title_sort modelling time‐course relationships with multiple treatments: model‐based network meta‐analysis for continuous summary outcomes
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6563489/
https://www.ncbi.nlm.nih.gov/pubmed/31013000
http://dx.doi.org/10.1002/jrsm.1351
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