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Biases in study design, implementation, and data analysis that distort the appraisal of clinical benefit and ESMO-Magnitude of Clinical Benefit Scale (ESMO-MCBS) scoring

BACKGROUND: The European Society for Medical Oncology-Magnitude of Clinical Benefit Scale (ESMO-MCBS) is a validated, widely used tool developed to score the clinical benefit from cancer medicines reported in clinical trials. ESMO-MCBS scores assume valid research methodologies and quality trial imp...

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Autores principales: Gyawali, B., de Vries, E.G.E., Dafni, U., Amaral, T., Barriuso, J., Bogaerts, J., Calles, A., Curigliano, G., Gomez-Roca, C., Kiesewetter, B., Oosting, S., Passaro, A., Pentheroudakis, G., Piccart, M., Roitberg, F., Tabernero, J., Tarazona, N., Trapani, D., Wester, R., Zarkavelis, G., Zielinski, C., Zygoura, P., Cherny, N.I.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8086024/
https://www.ncbi.nlm.nih.gov/pubmed/33887690
http://dx.doi.org/10.1016/j.esmoop.2021.100117
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author Gyawali, B.
de Vries, E.G.E.
Dafni, U.
Amaral, T.
Barriuso, J.
Bogaerts, J.
Calles, A.
Curigliano, G.
Gomez-Roca, C.
Kiesewetter, B.
Oosting, S.
Passaro, A.
Pentheroudakis, G.
Piccart, M.
Roitberg, F.
Tabernero, J.
Tarazona, N.
Trapani, D.
Wester, R.
Zarkavelis, G.
Zielinski, C.
Zygoura, P.
Cherny, N.I.
author_facet Gyawali, B.
de Vries, E.G.E.
Dafni, U.
Amaral, T.
Barriuso, J.
Bogaerts, J.
Calles, A.
Curigliano, G.
Gomez-Roca, C.
Kiesewetter, B.
Oosting, S.
Passaro, A.
Pentheroudakis, G.
Piccart, M.
Roitberg, F.
Tabernero, J.
Tarazona, N.
Trapani, D.
Wester, R.
Zarkavelis, G.
Zielinski, C.
Zygoura, P.
Cherny, N.I.
author_sort Gyawali, B.
collection PubMed
description BACKGROUND: The European Society for Medical Oncology-Magnitude of Clinical Benefit Scale (ESMO-MCBS) is a validated, widely used tool developed to score the clinical benefit from cancer medicines reported in clinical trials. ESMO-MCBS scores assume valid research methodologies and quality trial implementation. Studies incorporating flawed design, implementation, or data analysis may generate outcomes that exaggerate true benefit and are not generalisable. Failure to either indicate or penalise studies with bias undermines the intention and diminishes the integrity of ESMO-MCBS scores. This review aimed to evaluate the adequacy of the ESMO-MCBS to address bias generated by flawed design, implementation, or data analysis and identify shortcomings in need of amendment. METHODS: As part of a refinement of the ESMO-MCBS, we reviewed trial design, implementation, and data analysis issues that could bias the results. For each issue of concern, we reviewed the ESMO-MCBS v1.1 approach against standards derived from Helsinki guidelines for ethical human research and guidelines from the International Council for Harmonisation of Technical Requirements for Pharmaceuticals for Human Use, the Food and Drugs Administration, the European Medicines Agency, and European Network for Health Technology Assessment. RESULTS: Six design, two implementation, and two data analysis and interpretation issues were evaluated and in three, the ESMO-MCBS provided adequate protections. Seven shortcomings in the ability of the ESMO-MCBS to identify and address bias were identified. These related to (i) evaluation of the control arm, (ii) crossover issues, (iii) criteria for non-inferiority, (iv) substandard post-progression treatment, (v) post hoc subgroup findings based on biomarkers, (vi) informative censoring, and (vii) publication bias against quality-of-life data. CONCLUSION: Interpretation of the ESMO-MCBS scores requires critical appraisal of trials to understand caveats in trial design, implementation, and data analysis that may have biased results and conclusions. These will be addressed in future iterations of the ESMO-MCBS.
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spelling pubmed-80860242021-05-11 Biases in study design, implementation, and data analysis that distort the appraisal of clinical benefit and ESMO-Magnitude of Clinical Benefit Scale (ESMO-MCBS) scoring Gyawali, B. de Vries, E.G.E. Dafni, U. Amaral, T. Barriuso, J. Bogaerts, J. Calles, A. Curigliano, G. Gomez-Roca, C. Kiesewetter, B. Oosting, S. Passaro, A. Pentheroudakis, G. Piccart, M. Roitberg, F. Tabernero, J. Tarazona, N. Trapani, D. Wester, R. Zarkavelis, G. Zielinski, C. Zygoura, P. Cherny, N.I. ESMO Open Review BACKGROUND: The European Society for Medical Oncology-Magnitude of Clinical Benefit Scale (ESMO-MCBS) is a validated, widely used tool developed to score the clinical benefit from cancer medicines reported in clinical trials. ESMO-MCBS scores assume valid research methodologies and quality trial implementation. Studies incorporating flawed design, implementation, or data analysis may generate outcomes that exaggerate true benefit and are not generalisable. Failure to either indicate or penalise studies with bias undermines the intention and diminishes the integrity of ESMO-MCBS scores. This review aimed to evaluate the adequacy of the ESMO-MCBS to address bias generated by flawed design, implementation, or data analysis and identify shortcomings in need of amendment. METHODS: As part of a refinement of the ESMO-MCBS, we reviewed trial design, implementation, and data analysis issues that could bias the results. For each issue of concern, we reviewed the ESMO-MCBS v1.1 approach against standards derived from Helsinki guidelines for ethical human research and guidelines from the International Council for Harmonisation of Technical Requirements for Pharmaceuticals for Human Use, the Food and Drugs Administration, the European Medicines Agency, and European Network for Health Technology Assessment. RESULTS: Six design, two implementation, and two data analysis and interpretation issues were evaluated and in three, the ESMO-MCBS provided adequate protections. Seven shortcomings in the ability of the ESMO-MCBS to identify and address bias were identified. These related to (i) evaluation of the control arm, (ii) crossover issues, (iii) criteria for non-inferiority, (iv) substandard post-progression treatment, (v) post hoc subgroup findings based on biomarkers, (vi) informative censoring, and (vii) publication bias against quality-of-life data. CONCLUSION: Interpretation of the ESMO-MCBS scores requires critical appraisal of trials to understand caveats in trial design, implementation, and data analysis that may have biased results and conclusions. These will be addressed in future iterations of the ESMO-MCBS. Elsevier 2021-04-20 /pmc/articles/PMC8086024/ /pubmed/33887690 http://dx.doi.org/10.1016/j.esmoop.2021.100117 Text en © 2021 The Author(s) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Review
Gyawali, B.
de Vries, E.G.E.
Dafni, U.
Amaral, T.
Barriuso, J.
Bogaerts, J.
Calles, A.
Curigliano, G.
Gomez-Roca, C.
Kiesewetter, B.
Oosting, S.
Passaro, A.
Pentheroudakis, G.
Piccart, M.
Roitberg, F.
Tabernero, J.
Tarazona, N.
Trapani, D.
Wester, R.
Zarkavelis, G.
Zielinski, C.
Zygoura, P.
Cherny, N.I.
Biases in study design, implementation, and data analysis that distort the appraisal of clinical benefit and ESMO-Magnitude of Clinical Benefit Scale (ESMO-MCBS) scoring
title Biases in study design, implementation, and data analysis that distort the appraisal of clinical benefit and ESMO-Magnitude of Clinical Benefit Scale (ESMO-MCBS) scoring
title_full Biases in study design, implementation, and data analysis that distort the appraisal of clinical benefit and ESMO-Magnitude of Clinical Benefit Scale (ESMO-MCBS) scoring
title_fullStr Biases in study design, implementation, and data analysis that distort the appraisal of clinical benefit and ESMO-Magnitude of Clinical Benefit Scale (ESMO-MCBS) scoring
title_full_unstemmed Biases in study design, implementation, and data analysis that distort the appraisal of clinical benefit and ESMO-Magnitude of Clinical Benefit Scale (ESMO-MCBS) scoring
title_short Biases in study design, implementation, and data analysis that distort the appraisal of clinical benefit and ESMO-Magnitude of Clinical Benefit Scale (ESMO-MCBS) scoring
title_sort biases in study design, implementation, and data analysis that distort the appraisal of clinical benefit and esmo-magnitude of clinical benefit scale (esmo-mcbs) scoring
topic Review
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8086024/
https://www.ncbi.nlm.nih.gov/pubmed/33887690
http://dx.doi.org/10.1016/j.esmoop.2021.100117
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