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Evidence synthesis and decision modelling to support complex decisions: stockpiling neuraminidase inhibitors for pandemic influenza usage

Objectives: The stockpiling of neuraminidase inhibitor (NAI) antivirals as a defence against pandemic influenza is a significant public health policy decision that must be made despite a lack of conclusive evidence from randomised controlled trials regarding the effectiveness of NAIs on important cl...

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Autores principales: Watson, Samuel I., Chen, Yen-Fu, Nguyen-Van-Tam, Jonathan S., Myles, Puja R., Venkatesan, Sudhir, Zambon, Maria, Uthman, Olalekan, Chilton, Peter J., Lilford, Richard J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: F1000Research 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5365214/
https://www.ncbi.nlm.nih.gov/pubmed/28413608
http://dx.doi.org/10.12688/f1000research.9414.2
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author Watson, Samuel I.
Chen, Yen-Fu
Nguyen-Van-Tam, Jonathan S.
Myles, Puja R.
Venkatesan, Sudhir
Zambon, Maria
Uthman, Olalekan
Chilton, Peter J.
Lilford, Richard J.
author_facet Watson, Samuel I.
Chen, Yen-Fu
Nguyen-Van-Tam, Jonathan S.
Myles, Puja R.
Venkatesan, Sudhir
Zambon, Maria
Uthman, Olalekan
Chilton, Peter J.
Lilford, Richard J.
author_sort Watson, Samuel I.
collection PubMed
description Objectives: The stockpiling of neuraminidase inhibitor (NAI) antivirals as a defence against pandemic influenza is a significant public health policy decision that must be made despite a lack of conclusive evidence from randomised controlled trials regarding the effectiveness of NAIs on important clinical end points such as mortality. The objective of this study was to determine whether NAIs should be stockpiled for treatment of pandemic influenza on the basis of current evidence. Methods: A decision model for stockpiling was designed. Data on previous pandemic influenza epidemiology was combined with data on the effectiveness of NAIs in reducing mortality obtained from a recent individual participant meta-analysis using observational data. Evidence synthesis techniques and a bias modelling method for observational data were used to incorporate the evidence into the model. The stockpiling decision was modelled for adults (≥16 years old) and the United Kingdom was used as an example. The main outcome was the expected net benefits of stockpiling in monetary terms. Health benefits were estimated from deaths averted through stockpiling. Results: After adjusting for biases in the estimated effectiveness of NAIs, the expected net benefit of stockpiling in the baseline analysis was £444 million, assuming a willingness to pay of £20,000/QALY ($31,000/QALY). The decision would therefore be to stockpile NAIs. There was a greater probability that the stockpile would not be utilised than utilised. However, the rare but catastrophic losses from a severe pandemic justified the decision to stockpile. Conclusions: Taking into account the available epidemiological data and evidence of effectiveness of NAIs in reducing mortality, including potential biases, a decision maker should stockpile anti-influenza medication in keeping with the postulated decision rule.
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spelling pubmed-53652142017-04-14 Evidence synthesis and decision modelling to support complex decisions: stockpiling neuraminidase inhibitors for pandemic influenza usage Watson, Samuel I. Chen, Yen-Fu Nguyen-Van-Tam, Jonathan S. Myles, Puja R. Venkatesan, Sudhir Zambon, Maria Uthman, Olalekan Chilton, Peter J. Lilford, Richard J. F1000Res Research Article Objectives: The stockpiling of neuraminidase inhibitor (NAI) antivirals as a defence against pandemic influenza is a significant public health policy decision that must be made despite a lack of conclusive evidence from randomised controlled trials regarding the effectiveness of NAIs on important clinical end points such as mortality. The objective of this study was to determine whether NAIs should be stockpiled for treatment of pandemic influenza on the basis of current evidence. Methods: A decision model for stockpiling was designed. Data on previous pandemic influenza epidemiology was combined with data on the effectiveness of NAIs in reducing mortality obtained from a recent individual participant meta-analysis using observational data. Evidence synthesis techniques and a bias modelling method for observational data were used to incorporate the evidence into the model. The stockpiling decision was modelled for adults (≥16 years old) and the United Kingdom was used as an example. The main outcome was the expected net benefits of stockpiling in monetary terms. Health benefits were estimated from deaths averted through stockpiling. Results: After adjusting for biases in the estimated effectiveness of NAIs, the expected net benefit of stockpiling in the baseline analysis was £444 million, assuming a willingness to pay of £20,000/QALY ($31,000/QALY). The decision would therefore be to stockpile NAIs. There was a greater probability that the stockpile would not be utilised than utilised. However, the rare but catastrophic losses from a severe pandemic justified the decision to stockpile. Conclusions: Taking into account the available epidemiological data and evidence of effectiveness of NAIs in reducing mortality, including potential biases, a decision maker should stockpile anti-influenza medication in keeping with the postulated decision rule. F1000Research 2017-03-16 /pmc/articles/PMC5365214/ /pubmed/28413608 http://dx.doi.org/10.12688/f1000research.9414.2 Text en Copyright: © 2017 Watson SI et al. http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution Licence, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Watson, Samuel I.
Chen, Yen-Fu
Nguyen-Van-Tam, Jonathan S.
Myles, Puja R.
Venkatesan, Sudhir
Zambon, Maria
Uthman, Olalekan
Chilton, Peter J.
Lilford, Richard J.
Evidence synthesis and decision modelling to support complex decisions: stockpiling neuraminidase inhibitors for pandemic influenza usage
title Evidence synthesis and decision modelling to support complex decisions: stockpiling neuraminidase inhibitors for pandemic influenza usage
title_full Evidence synthesis and decision modelling to support complex decisions: stockpiling neuraminidase inhibitors for pandemic influenza usage
title_fullStr Evidence synthesis and decision modelling to support complex decisions: stockpiling neuraminidase inhibitors for pandemic influenza usage
title_full_unstemmed Evidence synthesis and decision modelling to support complex decisions: stockpiling neuraminidase inhibitors for pandemic influenza usage
title_short Evidence synthesis and decision modelling to support complex decisions: stockpiling neuraminidase inhibitors for pandemic influenza usage
title_sort evidence synthesis and decision modelling to support complex decisions: stockpiling neuraminidase inhibitors for pandemic influenza usage
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5365214/
https://www.ncbi.nlm.nih.gov/pubmed/28413608
http://dx.doi.org/10.12688/f1000research.9414.2
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