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Prediction of Clinically Relevant Safety Signals of Nephrotoxicity through Plasma Metabolite Profiling

Addressing safety concerns such as drug-induced kidney injury (DIKI) early in the drug pharmaceutical development process ensures both patient safety and efficient clinical development. We describe a unique adjunct to standard safety assessment wherein the metabolite profile of treated animals is co...

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Autores principales: Mattes, W. B., Kamp, H. G., Fabian, E., Herold, M., Krennrich, G., Looser, R., Mellert, W., Prokoudine, A., Strauss, V., van Ravenzwaay, B., Walk, T., Naraoka, H., Omura, K., Schuppe-Koistinen, I., Nadanaciva, S., Bush, E. D., Moeller, N., Ruiz-Noppinger, P., Piccoli, S. P.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi Publishing Corporation 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3673329/
https://www.ncbi.nlm.nih.gov/pubmed/23762827
http://dx.doi.org/10.1155/2013/202497
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author Mattes, W. B.
Kamp, H. G.
Fabian, E.
Herold, M.
Krennrich, G.
Looser, R.
Mellert, W.
Prokoudine, A.
Strauss, V.
van Ravenzwaay, B.
Walk, T.
Naraoka, H.
Omura, K.
Schuppe-Koistinen, I.
Nadanaciva, S.
Bush, E. D.
Moeller, N.
Ruiz-Noppinger, P.
Piccoli, S. P.
author_facet Mattes, W. B.
Kamp, H. G.
Fabian, E.
Herold, M.
Krennrich, G.
Looser, R.
Mellert, W.
Prokoudine, A.
Strauss, V.
van Ravenzwaay, B.
Walk, T.
Naraoka, H.
Omura, K.
Schuppe-Koistinen, I.
Nadanaciva, S.
Bush, E. D.
Moeller, N.
Ruiz-Noppinger, P.
Piccoli, S. P.
author_sort Mattes, W. B.
collection PubMed
description Addressing safety concerns such as drug-induced kidney injury (DIKI) early in the drug pharmaceutical development process ensures both patient safety and efficient clinical development. We describe a unique adjunct to standard safety assessment wherein the metabolite profile of treated animals is compared with the MetaMap Tox metabolomics database in order to predict the potential for a wide variety of adverse events, including DIKI. To examine this approach, a study of five compounds (phenytoin, cyclosporin A, doxorubicin, captopril, and lisinopril) was initiated by the Technology Evaluation Consortium under the auspices of the Drug Safety Executive Council (DSEC). The metabolite profiles for rats treated with these compounds matched established reference patterns in the MetaMap Tox metabolomics database indicative of each compound's well-described clinical toxicities. For example, the DIKI associated with cyclosporine A and doxorubicin was correctly predicted by metabolite profiling, while no evidence for DIKI was found for phenytoin, consistent with its clinical picture. In some cases the clinical toxicity (hepatotoxicity), not generally seen in animal studies, was detected with MetaMap Tox. Thus metabolite profiling coupled with the MetaMap Tox metabolomics database offers a unique and powerful approach for augmenting safety assessment and avoiding clinical adverse events such as DIKI.
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spelling pubmed-36733292013-06-12 Prediction of Clinically Relevant Safety Signals of Nephrotoxicity through Plasma Metabolite Profiling Mattes, W. B. Kamp, H. G. Fabian, E. Herold, M. Krennrich, G. Looser, R. Mellert, W. Prokoudine, A. Strauss, V. van Ravenzwaay, B. Walk, T. Naraoka, H. Omura, K. Schuppe-Koistinen, I. Nadanaciva, S. Bush, E. D. Moeller, N. Ruiz-Noppinger, P. Piccoli, S. P. Biomed Res Int Research Article Addressing safety concerns such as drug-induced kidney injury (DIKI) early in the drug pharmaceutical development process ensures both patient safety and efficient clinical development. We describe a unique adjunct to standard safety assessment wherein the metabolite profile of treated animals is compared with the MetaMap Tox metabolomics database in order to predict the potential for a wide variety of adverse events, including DIKI. To examine this approach, a study of five compounds (phenytoin, cyclosporin A, doxorubicin, captopril, and lisinopril) was initiated by the Technology Evaluation Consortium under the auspices of the Drug Safety Executive Council (DSEC). The metabolite profiles for rats treated with these compounds matched established reference patterns in the MetaMap Tox metabolomics database indicative of each compound's well-described clinical toxicities. For example, the DIKI associated with cyclosporine A and doxorubicin was correctly predicted by metabolite profiling, while no evidence for DIKI was found for phenytoin, consistent with its clinical picture. In some cases the clinical toxicity (hepatotoxicity), not generally seen in animal studies, was detected with MetaMap Tox. Thus metabolite profiling coupled with the MetaMap Tox metabolomics database offers a unique and powerful approach for augmenting safety assessment and avoiding clinical adverse events such as DIKI. Hindawi Publishing Corporation 2013 2013-05-21 /pmc/articles/PMC3673329/ /pubmed/23762827 http://dx.doi.org/10.1155/2013/202497 Text en Copyright © 2013 W. B. Mattes et al. https://creativecommons.org/licenses/by/3.0/ This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Mattes, W. B.
Kamp, H. G.
Fabian, E.
Herold, M.
Krennrich, G.
Looser, R.
Mellert, W.
Prokoudine, A.
Strauss, V.
van Ravenzwaay, B.
Walk, T.
Naraoka, H.
Omura, K.
Schuppe-Koistinen, I.
Nadanaciva, S.
Bush, E. D.
Moeller, N.
Ruiz-Noppinger, P.
Piccoli, S. P.
Prediction of Clinically Relevant Safety Signals of Nephrotoxicity through Plasma Metabolite Profiling
title Prediction of Clinically Relevant Safety Signals of Nephrotoxicity through Plasma Metabolite Profiling
title_full Prediction of Clinically Relevant Safety Signals of Nephrotoxicity through Plasma Metabolite Profiling
title_fullStr Prediction of Clinically Relevant Safety Signals of Nephrotoxicity through Plasma Metabolite Profiling
title_full_unstemmed Prediction of Clinically Relevant Safety Signals of Nephrotoxicity through Plasma Metabolite Profiling
title_short Prediction of Clinically Relevant Safety Signals of Nephrotoxicity through Plasma Metabolite Profiling
title_sort prediction of clinically relevant safety signals of nephrotoxicity through plasma metabolite profiling
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3673329/
https://www.ncbi.nlm.nih.gov/pubmed/23762827
http://dx.doi.org/10.1155/2013/202497
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