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Mining of Consumer Product Ingredient and Purchasing Data to Identify Potential Chemical Coexposures

BACKGROUND: Chemicals in consumer products are a major contributor to human chemical coexposures. Consumers purchase and use a wide variety of products containing potentially thousands of chemicals. There is a need to identify potential real-world chemical coexposures to prioritize in vitro toxicity...

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Autores principales: Stanfield, Zachary, Addington, Cody K., Dionisio, Kathie L., Lyons, David, Tornero-Velez, Rogelio, Phillips, Katherine A., Buckley, Timothy J., Isaacs, Kristin K.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Environmental Health Perspectives 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8221370/
https://www.ncbi.nlm.nih.gov/pubmed/34160298
http://dx.doi.org/10.1289/EHP8610
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author Stanfield, Zachary
Addington, Cody K.
Dionisio, Kathie L.
Lyons, David
Tornero-Velez, Rogelio
Phillips, Katherine A.
Buckley, Timothy J.
Isaacs, Kristin K.
author_facet Stanfield, Zachary
Addington, Cody K.
Dionisio, Kathie L.
Lyons, David
Tornero-Velez, Rogelio
Phillips, Katherine A.
Buckley, Timothy J.
Isaacs, Kristin K.
author_sort Stanfield, Zachary
collection PubMed
description BACKGROUND: Chemicals in consumer products are a major contributor to human chemical coexposures. Consumers purchase and use a wide variety of products containing potentially thousands of chemicals. There is a need to identify potential real-world chemical coexposures to prioritize in vitro toxicity screening. However, due to the vast number of potential chemical combinations, this identification has been a major challenge. OBJECTIVES: We aimed to develop and implement a data-driven procedure for identifying prevalent chemical combinations to which humans are exposed through purchase and use of consumer products. METHODS: We applied frequent itemset mining to an integrated data set linking consumer product chemical ingredient data with product purchasing data from 60,000 households to identify chemical combinations resulting from co-use of consumer products. RESULTS: We identified co-occurrence patterns of chemicals over all households as well as those specific to demographic groups based on race/ethnicity, income, education, and family composition. We also identified chemicals with the highest potential for aggregate exposure by identifying chemicals occurring in multiple products used by the same household. Last, a case study of chemicals active in estrogen and androgen receptor in silico models revealed priority chemical combinations co-targeting receptors involved in important biological signaling pathways. DISCUSSION: Integration and comprehensive analysis of household purchasing data and product-chemical information provided a means to assess human near-field exposure and inform selection of chemical combinations for high-throughput screening in in vitro assays. https://doi.org/10.1289/EHP8610
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spelling pubmed-82213702021-06-26 Mining of Consumer Product Ingredient and Purchasing Data to Identify Potential Chemical Coexposures Stanfield, Zachary Addington, Cody K. Dionisio, Kathie L. Lyons, David Tornero-Velez, Rogelio Phillips, Katherine A. Buckley, Timothy J. Isaacs, Kristin K. Environ Health Perspect Research BACKGROUND: Chemicals in consumer products are a major contributor to human chemical coexposures. Consumers purchase and use a wide variety of products containing potentially thousands of chemicals. There is a need to identify potential real-world chemical coexposures to prioritize in vitro toxicity screening. However, due to the vast number of potential chemical combinations, this identification has been a major challenge. OBJECTIVES: We aimed to develop and implement a data-driven procedure for identifying prevalent chemical combinations to which humans are exposed through purchase and use of consumer products. METHODS: We applied frequent itemset mining to an integrated data set linking consumer product chemical ingredient data with product purchasing data from 60,000 households to identify chemical combinations resulting from co-use of consumer products. RESULTS: We identified co-occurrence patterns of chemicals over all households as well as those specific to demographic groups based on race/ethnicity, income, education, and family composition. We also identified chemicals with the highest potential for aggregate exposure by identifying chemicals occurring in multiple products used by the same household. Last, a case study of chemicals active in estrogen and androgen receptor in silico models revealed priority chemical combinations co-targeting receptors involved in important biological signaling pathways. DISCUSSION: Integration and comprehensive analysis of household purchasing data and product-chemical information provided a means to assess human near-field exposure and inform selection of chemical combinations for high-throughput screening in in vitro assays. https://doi.org/10.1289/EHP8610 Environmental Health Perspectives 2021-06-23 /pmc/articles/PMC8221370/ /pubmed/34160298 http://dx.doi.org/10.1289/EHP8610 Text en https://ehp.niehs.nih.gov/about-ehp/licenseEHP 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
Stanfield, Zachary
Addington, Cody K.
Dionisio, Kathie L.
Lyons, David
Tornero-Velez, Rogelio
Phillips, Katherine A.
Buckley, Timothy J.
Isaacs, Kristin K.
Mining of Consumer Product Ingredient and Purchasing Data to Identify Potential Chemical Coexposures
title Mining of Consumer Product Ingredient and Purchasing Data to Identify Potential Chemical Coexposures
title_full Mining of Consumer Product Ingredient and Purchasing Data to Identify Potential Chemical Coexposures
title_fullStr Mining of Consumer Product Ingredient and Purchasing Data to Identify Potential Chemical Coexposures
title_full_unstemmed Mining of Consumer Product Ingredient and Purchasing Data to Identify Potential Chemical Coexposures
title_short Mining of Consumer Product Ingredient and Purchasing Data to Identify Potential Chemical Coexposures
title_sort mining of consumer product ingredient and purchasing data to identify potential chemical coexposures
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8221370/
https://www.ncbi.nlm.nih.gov/pubmed/34160298
http://dx.doi.org/10.1289/EHP8610
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