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Experimental designs for small randomised clinical trials: an algorithm for choice

BACKGROUND: Small clinical trials are necessary when there are difficulties in recruiting enough patients for conventional frequentist statistical analyses to provide an appropriate answer. These trials are often necessary for the study of rare diseases as well as specific study populations e.g. chi...

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Autores principales: Cornu, Catherine, Kassai, Behrouz, Fisch, Roland, Chiron, Catherine, Alberti, Corinne, Guerrini, Renzo, Rosati, Anna, Pons, Gerard, Tiddens, Harm, Chabaud, Sylvie, Caudri, Daan, Ballot, Clément, Kurbatova, Polina, Castellan, Anne-Charlotte, Bajard, Agathe, Nony, Patrice
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3635911/
https://www.ncbi.nlm.nih.gov/pubmed/23531234
http://dx.doi.org/10.1186/1750-1172-8-48
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author Cornu, Catherine
Kassai, Behrouz
Fisch, Roland
Chiron, Catherine
Alberti, Corinne
Guerrini, Renzo
Rosati, Anna
Pons, Gerard
Tiddens, Harm
Chabaud, Sylvie
Caudri, Daan
Ballot, Clément
Kurbatova, Polina
Castellan, Anne-Charlotte
Bajard, Agathe
Nony, Patrice
author_facet Cornu, Catherine
Kassai, Behrouz
Fisch, Roland
Chiron, Catherine
Alberti, Corinne
Guerrini, Renzo
Rosati, Anna
Pons, Gerard
Tiddens, Harm
Chabaud, Sylvie
Caudri, Daan
Ballot, Clément
Kurbatova, Polina
Castellan, Anne-Charlotte
Bajard, Agathe
Nony, Patrice
author_sort Cornu, Catherine
collection PubMed
description BACKGROUND: Small clinical trials are necessary when there are difficulties in recruiting enough patients for conventional frequentist statistical analyses to provide an appropriate answer. These trials are often necessary for the study of rare diseases as well as specific study populations e.g. children. It has been estimated that there are between 6,000 and 8,000 rare diseases that cover a broad range of diseases and patients. In the European Union these diseases affect up to 30 million people, with about 50% of those affected being children. Therapies for treating these rare diseases need their efficacy and safety evaluated but due to the small number of potential trial participants, a standard randomised controlled trial is often not feasible. There are a number of alternative trial designs to the usual parallel group design, each of which offers specific advantages, but they also have specific limitations. Thus the choice of the most appropriate design is not simple. METHODS: PubMed was searched to identify publications about the characteristics of different trial designs that can be used in randomised, comparative small clinical trials. In addition, the contents tables from 11 journals were hand-searched. An algorithm was developed using decision nodes based on the characteristics of the identified trial designs. RESULTS: We identified 75 publications that reported the characteristics of 12 randomised, comparative trial designs that can be used in for the evaluation of therapies in orphan diseases. The main characteristics and the advantages and limitations of these designs were summarised and used to develop an algorithm that may be used to help select an appropriate design for a given clinical situation. We used examples from publications of given disease-treatment-outcome situations, in which the investigators had used a particular trial design, to illustrate the use of the algorithm for the identification of possible alternative designs. CONCLUSIONS: The algorithm that we propose could be a useful tool for the choice of an appropriate trial design in the development of orphan drugs for a given disease-treatment-outcome situation.
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spelling pubmed-36359112013-04-26 Experimental designs for small randomised clinical trials: an algorithm for choice Cornu, Catherine Kassai, Behrouz Fisch, Roland Chiron, Catherine Alberti, Corinne Guerrini, Renzo Rosati, Anna Pons, Gerard Tiddens, Harm Chabaud, Sylvie Caudri, Daan Ballot, Clément Kurbatova, Polina Castellan, Anne-Charlotte Bajard, Agathe Nony, Patrice Orphanet J Rare Dis Review BACKGROUND: Small clinical trials are necessary when there are difficulties in recruiting enough patients for conventional frequentist statistical analyses to provide an appropriate answer. These trials are often necessary for the study of rare diseases as well as specific study populations e.g. children. It has been estimated that there are between 6,000 and 8,000 rare diseases that cover a broad range of diseases and patients. In the European Union these diseases affect up to 30 million people, with about 50% of those affected being children. Therapies for treating these rare diseases need their efficacy and safety evaluated but due to the small number of potential trial participants, a standard randomised controlled trial is often not feasible. There are a number of alternative trial designs to the usual parallel group design, each of which offers specific advantages, but they also have specific limitations. Thus the choice of the most appropriate design is not simple. METHODS: PubMed was searched to identify publications about the characteristics of different trial designs that can be used in randomised, comparative small clinical trials. In addition, the contents tables from 11 journals were hand-searched. An algorithm was developed using decision nodes based on the characteristics of the identified trial designs. RESULTS: We identified 75 publications that reported the characteristics of 12 randomised, comparative trial designs that can be used in for the evaluation of therapies in orphan diseases. The main characteristics and the advantages and limitations of these designs were summarised and used to develop an algorithm that may be used to help select an appropriate design for a given clinical situation. We used examples from publications of given disease-treatment-outcome situations, in which the investigators had used a particular trial design, to illustrate the use of the algorithm for the identification of possible alternative designs. CONCLUSIONS: The algorithm that we propose could be a useful tool for the choice of an appropriate trial design in the development of orphan drugs for a given disease-treatment-outcome situation. BioMed Central 2013-03-25 /pmc/articles/PMC3635911/ /pubmed/23531234 http://dx.doi.org/10.1186/1750-1172-8-48 Text en Copyright © 2013 Cornu et al.; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Review
Cornu, Catherine
Kassai, Behrouz
Fisch, Roland
Chiron, Catherine
Alberti, Corinne
Guerrini, Renzo
Rosati, Anna
Pons, Gerard
Tiddens, Harm
Chabaud, Sylvie
Caudri, Daan
Ballot, Clément
Kurbatova, Polina
Castellan, Anne-Charlotte
Bajard, Agathe
Nony, Patrice
Experimental designs for small randomised clinical trials: an algorithm for choice
title Experimental designs for small randomised clinical trials: an algorithm for choice
title_full Experimental designs for small randomised clinical trials: an algorithm for choice
title_fullStr Experimental designs for small randomised clinical trials: an algorithm for choice
title_full_unstemmed Experimental designs for small randomised clinical trials: an algorithm for choice
title_short Experimental designs for small randomised clinical trials: an algorithm for choice
title_sort experimental designs for small randomised clinical trials: an algorithm for choice
topic Review
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3635911/
https://www.ncbi.nlm.nih.gov/pubmed/23531234
http://dx.doi.org/10.1186/1750-1172-8-48
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