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Improving the odds of drug development success through human genomics: modelling study

Lack of efficacy in the intended disease indication is the major cause of clinical phase drug development failure. Explanations could include the poor external validity of pre-clinical (cell, tissue, and animal) models of human disease and the high false discovery rate (FDR) in preclinical science....

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Autores principales: Hingorani, Aroon D., Kuan, Valerie, Finan, Chris, Kruger, Felix A., Gaulton, Anna, Chopade, Sandesh, Sofat, Reecha, MacAllister, Raymond J., Overington, John P., Hemingway, Harry, Denaxas, Spiros, Prieto, David, Casas, Juan Pablo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6906499/
https://www.ncbi.nlm.nih.gov/pubmed/31827124
http://dx.doi.org/10.1038/s41598-019-54849-w
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author Hingorani, Aroon D.
Kuan, Valerie
Finan, Chris
Kruger, Felix A.
Gaulton, Anna
Chopade, Sandesh
Sofat, Reecha
MacAllister, Raymond J.
Overington, John P.
Hemingway, Harry
Denaxas, Spiros
Prieto, David
Casas, Juan Pablo
author_facet Hingorani, Aroon D.
Kuan, Valerie
Finan, Chris
Kruger, Felix A.
Gaulton, Anna
Chopade, Sandesh
Sofat, Reecha
MacAllister, Raymond J.
Overington, John P.
Hemingway, Harry
Denaxas, Spiros
Prieto, David
Casas, Juan Pablo
author_sort Hingorani, Aroon D.
collection PubMed
description Lack of efficacy in the intended disease indication is the major cause of clinical phase drug development failure. Explanations could include the poor external validity of pre-clinical (cell, tissue, and animal) models of human disease and the high false discovery rate (FDR) in preclinical science. FDR is related to the proportion of true relationships available for discovery (γ), and the type 1 (false-positive) and type 2 (false negative) error rates of the experiments designed to uncover them. We estimated the FDR in preclinical science, its effect on drug development success rates, and improvements expected from use of human genomics rather than preclinical studies as the primary source of evidence for drug target identification. Calculations were based on a sample space defined by all human diseases – the ‘disease-ome’ – represented as columns; and all protein coding genes – ‘the protein-coding genome’– represented as rows, producing a matrix of unique gene- (or protein-) disease pairings. We parameterised the space based on 10,000 diseases, 20,000 protein-coding genes, 100 causal genes per disease and 4000 genes encoding druggable targets, examining the effect of varying the parameters and a range of underlying assumptions, on the inferences drawn. We estimated γ, defined mathematical relationships between preclinical FDR and drug development success rates, and estimated improvements in success rates based on human genomics (rather than orthodox preclinical studies). Around one in every 200 protein-disease pairings was estimated to be causal (γ = 0.005) giving an FDR in preclinical research of 92.6%, which likely makes a major contribution to the reported drug development failure rate of 96%. Observed success rate was only slightly greater than expected for a random pick from the sample space. Values for γ back-calculated from reported preclinical and clinical drug development success rates were also close to the a priori estimates. Substituting genome wide (or druggable genome wide) association studies for preclinical studies as the major information source for drug target identification was estimated to reverse the probability of late stage failure because of the more stringent type 1 error rate employed and the ability to interrogate every potential druggable target in the same experiment. Genetic studies conducted at much larger scale, with greater resolution of disease end-points, e.g. by connecting genomics and electronic health record data within healthcare systems has the potential to produce radical improvement in drug development success rate.
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spelling pubmed-69064992019-12-13 Improving the odds of drug development success through human genomics: modelling study Hingorani, Aroon D. Kuan, Valerie Finan, Chris Kruger, Felix A. Gaulton, Anna Chopade, Sandesh Sofat, Reecha MacAllister, Raymond J. Overington, John P. Hemingway, Harry Denaxas, Spiros Prieto, David Casas, Juan Pablo Sci Rep Article Lack of efficacy in the intended disease indication is the major cause of clinical phase drug development failure. Explanations could include the poor external validity of pre-clinical (cell, tissue, and animal) models of human disease and the high false discovery rate (FDR) in preclinical science. FDR is related to the proportion of true relationships available for discovery (γ), and the type 1 (false-positive) and type 2 (false negative) error rates of the experiments designed to uncover them. We estimated the FDR in preclinical science, its effect on drug development success rates, and improvements expected from use of human genomics rather than preclinical studies as the primary source of evidence for drug target identification. Calculations were based on a sample space defined by all human diseases – the ‘disease-ome’ – represented as columns; and all protein coding genes – ‘the protein-coding genome’– represented as rows, producing a matrix of unique gene- (or protein-) disease pairings. We parameterised the space based on 10,000 diseases, 20,000 protein-coding genes, 100 causal genes per disease and 4000 genes encoding druggable targets, examining the effect of varying the parameters and a range of underlying assumptions, on the inferences drawn. We estimated γ, defined mathematical relationships between preclinical FDR and drug development success rates, and estimated improvements in success rates based on human genomics (rather than orthodox preclinical studies). Around one in every 200 protein-disease pairings was estimated to be causal (γ = 0.005) giving an FDR in preclinical research of 92.6%, which likely makes a major contribution to the reported drug development failure rate of 96%. Observed success rate was only slightly greater than expected for a random pick from the sample space. Values for γ back-calculated from reported preclinical and clinical drug development success rates were also close to the a priori estimates. Substituting genome wide (or druggable genome wide) association studies for preclinical studies as the major information source for drug target identification was estimated to reverse the probability of late stage failure because of the more stringent type 1 error rate employed and the ability to interrogate every potential druggable target in the same experiment. Genetic studies conducted at much larger scale, with greater resolution of disease end-points, e.g. by connecting genomics and electronic health record data within healthcare systems has the potential to produce radical improvement in drug development success rate. Nature Publishing Group UK 2019-12-11 /pmc/articles/PMC6906499/ /pubmed/31827124 http://dx.doi.org/10.1038/s41598-019-54849-w Text en © The Author(s) 2019 Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons license, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons license and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this license, visit http://creativecommons.org/licenses/by/4.0/.
spellingShingle Article
Hingorani, Aroon D.
Kuan, Valerie
Finan, Chris
Kruger, Felix A.
Gaulton, Anna
Chopade, Sandesh
Sofat, Reecha
MacAllister, Raymond J.
Overington, John P.
Hemingway, Harry
Denaxas, Spiros
Prieto, David
Casas, Juan Pablo
Improving the odds of drug development success through human genomics: modelling study
title Improving the odds of drug development success through human genomics: modelling study
title_full Improving the odds of drug development success through human genomics: modelling study
title_fullStr Improving the odds of drug development success through human genomics: modelling study
title_full_unstemmed Improving the odds of drug development success through human genomics: modelling study
title_short Improving the odds of drug development success through human genomics: modelling study
title_sort improving the odds of drug development success through human genomics: modelling study
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6906499/
https://www.ncbi.nlm.nih.gov/pubmed/31827124
http://dx.doi.org/10.1038/s41598-019-54849-w
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