Cargando…

Predicting in vivo effect levels for repeat-dose systemic toxicity using chemical, biological, kinetic and study covariates

In an effort to address a major challenge in chemical safety assessment, alternative approaches for characterizing systemic effect levels, a predictive model was developed. Systemic effect levels were curated from ToxRefDB, HESS-DB and COSMOS-DB from numerous study types totaling 4379 in vivo studie...

Descripción completa

Detalles Bibliográficos
Autores principales: Truong, Lisa, Ouedraogo, Gladys, Pham, LyLy, Clouzeau, Jacques, Loisel-Joubert, Sophie, Blanchet, Delphine, Noçairi, Hicham, Setzer, Woodrow, Judson, Richard, Grulke, Chris, Mansouri, Kamel, Martin, Matthew
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer Berlin Heidelberg 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5818596/
https://www.ncbi.nlm.nih.gov/pubmed/29075892
http://dx.doi.org/10.1007/s00204-017-2067-x
_version_ 1783301056606765056
author Truong, Lisa
Ouedraogo, Gladys
Pham, LyLy
Clouzeau, Jacques
Loisel-Joubert, Sophie
Blanchet, Delphine
Noçairi, Hicham
Setzer, Woodrow
Judson, Richard
Grulke, Chris
Mansouri, Kamel
Martin, Matthew
author_facet Truong, Lisa
Ouedraogo, Gladys
Pham, LyLy
Clouzeau, Jacques
Loisel-Joubert, Sophie
Blanchet, Delphine
Noçairi, Hicham
Setzer, Woodrow
Judson, Richard
Grulke, Chris
Mansouri, Kamel
Martin, Matthew
author_sort Truong, Lisa
collection PubMed
description In an effort to address a major challenge in chemical safety assessment, alternative approaches for characterizing systemic effect levels, a predictive model was developed. Systemic effect levels were curated from ToxRefDB, HESS-DB and COSMOS-DB from numerous study types totaling 4379 in vivo studies for 1247 chemicals. Observed systemic effects in mammalian models are a complex function of chemical dynamics, kinetics, and inter- and intra-individual variability. To address this complex problem, systemic effect levels were modeled at the study-level by leveraging study covariates (e.g., study type, strain, administration route) in addition to multiple descriptor sets, including chemical (ToxPrint, PaDEL, and Physchem), biological (ToxCast), and kinetic descriptors. Using random forest modeling with cross-validation and external validation procedures, study-level covariates alone accounted for approximately 15% of the variance reducing the root mean squared error (RMSE) from 0.96 log(10) to 0.85 log(10) mg/kg/day, providing a baseline performance metric (lower expectation of model performance). A consensus model developed using a combination of study-level covariates, chemical, biological, and kinetic descriptors explained a total of 43% of the variance with an RMSE of 0.69 log(10) mg/kg/day. A benchmark model (upper expectation of model performance) was also developed with an RMSE of 0.5 log(10) mg/kg/day by incorporating study-level covariates and the mean effect level per chemical. To achieve a representative chemical-level prediction, the minimum study-level predicted and observed effect level per chemical were compared reducing the RMSE from 1.0 to 0.73 log(10) mg/kg/day, equivalent to 87% of predictions falling within an order-of-magnitude of the observed value. Although biological descriptors did not improve model performance, the final model was enriched for biological descriptors that indicated xenobiotic metabolism gene expression, oxidative stress, and cytotoxicity, demonstrating the importance of accounting for kinetics and non-specific bioactivity in predicting systemic effect levels. Herein, we generated an externally predictive model of systemic effect levels for use as a safety assessment tool and have generated forward predictions for over 30,000 chemicals. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (doi:10.1007/s00204-017-2067-x) contains supplementary material, which is available to authorized users.
format Online
Article
Text
id pubmed-5818596
institution National Center for Biotechnology Information
language English
publishDate 2017
publisher Springer Berlin Heidelberg
record_format MEDLINE/PubMed
spelling pubmed-58185962018-02-27 Predicting in vivo effect levels for repeat-dose systemic toxicity using chemical, biological, kinetic and study covariates Truong, Lisa Ouedraogo, Gladys Pham, LyLy Clouzeau, Jacques Loisel-Joubert, Sophie Blanchet, Delphine Noçairi, Hicham Setzer, Woodrow Judson, Richard Grulke, Chris Mansouri, Kamel Martin, Matthew Arch Toxicol Regulatory Toxicology In an effort to address a major challenge in chemical safety assessment, alternative approaches for characterizing systemic effect levels, a predictive model was developed. Systemic effect levels were curated from ToxRefDB, HESS-DB and COSMOS-DB from numerous study types totaling 4379 in vivo studies for 1247 chemicals. Observed systemic effects in mammalian models are a complex function of chemical dynamics, kinetics, and inter- and intra-individual variability. To address this complex problem, systemic effect levels were modeled at the study-level by leveraging study covariates (e.g., study type, strain, administration route) in addition to multiple descriptor sets, including chemical (ToxPrint, PaDEL, and Physchem), biological (ToxCast), and kinetic descriptors. Using random forest modeling with cross-validation and external validation procedures, study-level covariates alone accounted for approximately 15% of the variance reducing the root mean squared error (RMSE) from 0.96 log(10) to 0.85 log(10) mg/kg/day, providing a baseline performance metric (lower expectation of model performance). A consensus model developed using a combination of study-level covariates, chemical, biological, and kinetic descriptors explained a total of 43% of the variance with an RMSE of 0.69 log(10) mg/kg/day. A benchmark model (upper expectation of model performance) was also developed with an RMSE of 0.5 log(10) mg/kg/day by incorporating study-level covariates and the mean effect level per chemical. To achieve a representative chemical-level prediction, the minimum study-level predicted and observed effect level per chemical were compared reducing the RMSE from 1.0 to 0.73 log(10) mg/kg/day, equivalent to 87% of predictions falling within an order-of-magnitude of the observed value. Although biological descriptors did not improve model performance, the final model was enriched for biological descriptors that indicated xenobiotic metabolism gene expression, oxidative stress, and cytotoxicity, demonstrating the importance of accounting for kinetics and non-specific bioactivity in predicting systemic effect levels. Herein, we generated an externally predictive model of systemic effect levels for use as a safety assessment tool and have generated forward predictions for over 30,000 chemicals. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (doi:10.1007/s00204-017-2067-x) contains supplementary material, which is available to authorized users. Springer Berlin Heidelberg 2017-10-27 2018 /pmc/articles/PMC5818596/ /pubmed/29075892 http://dx.doi.org/10.1007/s00204-017-2067-x Text en © The Author(s) 2017 Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided 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.
spellingShingle Regulatory Toxicology
Truong, Lisa
Ouedraogo, Gladys
Pham, LyLy
Clouzeau, Jacques
Loisel-Joubert, Sophie
Blanchet, Delphine
Noçairi, Hicham
Setzer, Woodrow
Judson, Richard
Grulke, Chris
Mansouri, Kamel
Martin, Matthew
Predicting in vivo effect levels for repeat-dose systemic toxicity using chemical, biological, kinetic and study covariates
title Predicting in vivo effect levels for repeat-dose systemic toxicity using chemical, biological, kinetic and study covariates
title_full Predicting in vivo effect levels for repeat-dose systemic toxicity using chemical, biological, kinetic and study covariates
title_fullStr Predicting in vivo effect levels for repeat-dose systemic toxicity using chemical, biological, kinetic and study covariates
title_full_unstemmed Predicting in vivo effect levels for repeat-dose systemic toxicity using chemical, biological, kinetic and study covariates
title_short Predicting in vivo effect levels for repeat-dose systemic toxicity using chemical, biological, kinetic and study covariates
title_sort predicting in vivo effect levels for repeat-dose systemic toxicity using chemical, biological, kinetic and study covariates
topic Regulatory Toxicology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5818596/
https://www.ncbi.nlm.nih.gov/pubmed/29075892
http://dx.doi.org/10.1007/s00204-017-2067-x
work_keys_str_mv AT truonglisa predictinginvivoeffectlevelsforrepeatdosesystemictoxicityusingchemicalbiologicalkineticandstudycovariates
AT ouedraogogladys predictinginvivoeffectlevelsforrepeatdosesystemictoxicityusingchemicalbiologicalkineticandstudycovariates
AT phamlyly predictinginvivoeffectlevelsforrepeatdosesystemictoxicityusingchemicalbiologicalkineticandstudycovariates
AT clouzeaujacques predictinginvivoeffectlevelsforrepeatdosesystemictoxicityusingchemicalbiologicalkineticandstudycovariates
AT loiseljoubertsophie predictinginvivoeffectlevelsforrepeatdosesystemictoxicityusingchemicalbiologicalkineticandstudycovariates
AT blanchetdelphine predictinginvivoeffectlevelsforrepeatdosesystemictoxicityusingchemicalbiologicalkineticandstudycovariates
AT nocairihicham predictinginvivoeffectlevelsforrepeatdosesystemictoxicityusingchemicalbiologicalkineticandstudycovariates
AT setzerwoodrow predictinginvivoeffectlevelsforrepeatdosesystemictoxicityusingchemicalbiologicalkineticandstudycovariates
AT judsonrichard predictinginvivoeffectlevelsforrepeatdosesystemictoxicityusingchemicalbiologicalkineticandstudycovariates
AT grulkechris predictinginvivoeffectlevelsforrepeatdosesystemictoxicityusingchemicalbiologicalkineticandstudycovariates
AT mansourikamel predictinginvivoeffectlevelsforrepeatdosesystemictoxicityusingchemicalbiologicalkineticandstudycovariates
AT martinmatthew predictinginvivoeffectlevelsforrepeatdosesystemictoxicityusingchemicalbiologicalkineticandstudycovariates