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Conditional Toxicity Value (CTV) Predictor: An In Silico Approach for Generating Quantitative Risk Estimates for Chemicals

BACKGROUND: Human health assessments synthesize human, animal, and mechanistic data to produce toxicity values that are key inputs to risk-based decision making. Traditional assessments are data-, time-, and resource-intensive, and they cannot be developed for most environmental chemicals owing to a...

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Autores principales: Wignall, Jessica A., Muratov, Eugene, Sedykh, Alexander, Guyton, Kathryn Z., Tropsha, Alexander, Rusyn, Ivan, Chiu, Weihsueh A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Environmental Health Perspectives 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6071978/
https://www.ncbi.nlm.nih.gov/pubmed/29847084
http://dx.doi.org/10.1289/EHP2998
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author Wignall, Jessica A.
Muratov, Eugene
Sedykh, Alexander
Guyton, Kathryn Z.
Tropsha, Alexander
Rusyn, Ivan
Chiu, Weihsueh A.
author_facet Wignall, Jessica A.
Muratov, Eugene
Sedykh, Alexander
Guyton, Kathryn Z.
Tropsha, Alexander
Rusyn, Ivan
Chiu, Weihsueh A.
author_sort Wignall, Jessica A.
collection PubMed
description BACKGROUND: Human health assessments synthesize human, animal, and mechanistic data to produce toxicity values that are key inputs to risk-based decision making. Traditional assessments are data-, time-, and resource-intensive, and they cannot be developed for most environmental chemicals owing to a lack of appropriate data. OBJECTIVES: As recommended by the National Research Council, we propose a solution for predicting toxicity values for data-poor chemicals through development of quantitative structure–activity relationship (QSAR) models. METHODS: We used a comprehensive database of chemicals with existing regulatory toxicity values from U.S. federal and state agencies to develop quantitative QSAR models. We compared QSAR-based model predictions to those based on high-throughput screening (HTS) assays. RESULTS: QSAR models for noncancer threshold-based values and cancer slope factors had cross-validation-based [Formula: see text] of 0.25–0.45, mean model errors of 0.70–1.11 [Formula: see text] units, and applicability domains covering [Formula: see text] of environmental chemicals. Toxicity values predicted from QSAR models developed in this study were more accurate and precise than those based on HTS assays or mean-based predictions. A publicly accessible web interface to make predictions for any chemical of interest is available at http://toxvalue.org. CONCLUSIONS: An in silico tool that can predict toxicity values with an uncertainty of an order of magnitude or less can be used to quickly and quantitatively assess risks of environmental chemicals when traditional toxicity data or human health assessments are unavailable. This tool can fill a critical gap in the risk assessment and management of data-poor chemicals. https://doi.org/10.1289/EHP2998
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spelling pubmed-60719782018-08-09 Conditional Toxicity Value (CTV) Predictor: An In Silico Approach for Generating Quantitative Risk Estimates for Chemicals Wignall, Jessica A. Muratov, Eugene Sedykh, Alexander Guyton, Kathryn Z. Tropsha, Alexander Rusyn, Ivan Chiu, Weihsueh A. Environ Health Perspect Research BACKGROUND: Human health assessments synthesize human, animal, and mechanistic data to produce toxicity values that are key inputs to risk-based decision making. Traditional assessments are data-, time-, and resource-intensive, and they cannot be developed for most environmental chemicals owing to a lack of appropriate data. OBJECTIVES: As recommended by the National Research Council, we propose a solution for predicting toxicity values for data-poor chemicals through development of quantitative structure–activity relationship (QSAR) models. METHODS: We used a comprehensive database of chemicals with existing regulatory toxicity values from U.S. federal and state agencies to develop quantitative QSAR models. We compared QSAR-based model predictions to those based on high-throughput screening (HTS) assays. RESULTS: QSAR models for noncancer threshold-based values and cancer slope factors had cross-validation-based [Formula: see text] of 0.25–0.45, mean model errors of 0.70–1.11 [Formula: see text] units, and applicability domains covering [Formula: see text] of environmental chemicals. Toxicity values predicted from QSAR models developed in this study were more accurate and precise than those based on HTS assays or mean-based predictions. A publicly accessible web interface to make predictions for any chemical of interest is available at http://toxvalue.org. CONCLUSIONS: An in silico tool that can predict toxicity values with an uncertainty of an order of magnitude or less can be used to quickly and quantitatively assess risks of environmental chemicals when traditional toxicity data or human health assessments are unavailable. This tool can fill a critical gap in the risk assessment and management of data-poor chemicals. https://doi.org/10.1289/EHP2998 Environmental Health Perspectives 2018-05-29 /pmc/articles/PMC6071978/ /pubmed/29847084 http://dx.doi.org/10.1289/EHP2998 Text en EHP is an open-access journal published with support from the National Institute of Environmental Health Sciences, National Institutes of Health. All content is public domain unless otherwise noted.
spellingShingle Research
Wignall, Jessica A.
Muratov, Eugene
Sedykh, Alexander
Guyton, Kathryn Z.
Tropsha, Alexander
Rusyn, Ivan
Chiu, Weihsueh A.
Conditional Toxicity Value (CTV) Predictor: An In Silico Approach for Generating Quantitative Risk Estimates for Chemicals
title Conditional Toxicity Value (CTV) Predictor: An In Silico Approach for Generating Quantitative Risk Estimates for Chemicals
title_full Conditional Toxicity Value (CTV) Predictor: An In Silico Approach for Generating Quantitative Risk Estimates for Chemicals
title_fullStr Conditional Toxicity Value (CTV) Predictor: An In Silico Approach for Generating Quantitative Risk Estimates for Chemicals
title_full_unstemmed Conditional Toxicity Value (CTV) Predictor: An In Silico Approach for Generating Quantitative Risk Estimates for Chemicals
title_short Conditional Toxicity Value (CTV) Predictor: An In Silico Approach for Generating Quantitative Risk Estimates for Chemicals
title_sort conditional toxicity value (ctv) predictor: an in silico approach for generating quantitative risk estimates for chemicals
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6071978/
https://www.ncbi.nlm.nih.gov/pubmed/29847084
http://dx.doi.org/10.1289/EHP2998
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