Cargando…

A Machine Learning Model to Estimate Toxicokinetic Half-Lives of Per- and Polyfluoro-Alkyl Substances (PFAS) in Multiple Species

Per- and polyfluoroalkyl substances (PFAS) are a diverse group of man-made chemicals that are commonly found in body tissues. The toxicokinetics of most PFAS are currently uncharacterized, but long half-lives (t(½)) have been observed in some cases. Knowledge of chemical-specific t(½) is necessary f...

Descripción completa

Detalles Bibliográficos
Autores principales: Dawson, Daniel E., Lau, Christopher, Pradeep, Prachi, Sayre, Risa R., Judson, Richard S., Tornero-Velez, Rogelio, Wambaugh, John F.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9962572/
https://www.ncbi.nlm.nih.gov/pubmed/36850973
http://dx.doi.org/10.3390/toxics11020098
_version_ 1784896038779224064
author Dawson, Daniel E.
Lau, Christopher
Pradeep, Prachi
Sayre, Risa R.
Judson, Richard S.
Tornero-Velez, Rogelio
Wambaugh, John F.
author_facet Dawson, Daniel E.
Lau, Christopher
Pradeep, Prachi
Sayre, Risa R.
Judson, Richard S.
Tornero-Velez, Rogelio
Wambaugh, John F.
author_sort Dawson, Daniel E.
collection PubMed
description Per- and polyfluoroalkyl substances (PFAS) are a diverse group of man-made chemicals that are commonly found in body tissues. The toxicokinetics of most PFAS are currently uncharacterized, but long half-lives (t(½)) have been observed in some cases. Knowledge of chemical-specific t(½) is necessary for exposure reconstruction and extrapolation from toxicological studies. We used an ensemble machine learning method, random forest, to model the existing in vivo measured t(½) across four species (human, monkey, rat, mouse) and eleven PFAS. Mechanistically motivated descriptors were examined, including two types of surrogates for renal transporters: (1) physiological descriptors, including kidney geometry, for renal transporter expression and (2) structural similarity of defluorinated PFAS to endogenous chemicals for transporter affinity. We developed a classification model for t(½) (Bin 1: <12 h; Bin 2: <1 week; Bin 3: <2 months; Bin 4: >2 months). The model had an accuracy of 86.1% in contrast to 32.2% for a y-randomized null model. A total of 3890 compounds were within domain of the model, and t(½) was predicted using the bin medians: 4.9 h, 2.2 days, 33 days, and 3.3 years. For human t(½), 56% of PFAS were classified in Bin 4, 7% were classified in Bin 3, and 37% were classified in Bin 2. This model synthesizes the limited available data to allow tentative extrapolation and prioritization.
format Online
Article
Text
id pubmed-9962572
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-99625722023-02-26 A Machine Learning Model to Estimate Toxicokinetic Half-Lives of Per- and Polyfluoro-Alkyl Substances (PFAS) in Multiple Species Dawson, Daniel E. Lau, Christopher Pradeep, Prachi Sayre, Risa R. Judson, Richard S. Tornero-Velez, Rogelio Wambaugh, John F. Toxics Article Per- and polyfluoroalkyl substances (PFAS) are a diverse group of man-made chemicals that are commonly found in body tissues. The toxicokinetics of most PFAS are currently uncharacterized, but long half-lives (t(½)) have been observed in some cases. Knowledge of chemical-specific t(½) is necessary for exposure reconstruction and extrapolation from toxicological studies. We used an ensemble machine learning method, random forest, to model the existing in vivo measured t(½) across four species (human, monkey, rat, mouse) and eleven PFAS. Mechanistically motivated descriptors were examined, including two types of surrogates for renal transporters: (1) physiological descriptors, including kidney geometry, for renal transporter expression and (2) structural similarity of defluorinated PFAS to endogenous chemicals for transporter affinity. We developed a classification model for t(½) (Bin 1: <12 h; Bin 2: <1 week; Bin 3: <2 months; Bin 4: >2 months). The model had an accuracy of 86.1% in contrast to 32.2% for a y-randomized null model. A total of 3890 compounds were within domain of the model, and t(½) was predicted using the bin medians: 4.9 h, 2.2 days, 33 days, and 3.3 years. For human t(½), 56% of PFAS were classified in Bin 4, 7% were classified in Bin 3, and 37% were classified in Bin 2. This model synthesizes the limited available data to allow tentative extrapolation and prioritization. MDPI 2023-01-20 /pmc/articles/PMC9962572/ /pubmed/36850973 http://dx.doi.org/10.3390/toxics11020098 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Dawson, Daniel E.
Lau, Christopher
Pradeep, Prachi
Sayre, Risa R.
Judson, Richard S.
Tornero-Velez, Rogelio
Wambaugh, John F.
A Machine Learning Model to Estimate Toxicokinetic Half-Lives of Per- and Polyfluoro-Alkyl Substances (PFAS) in Multiple Species
title A Machine Learning Model to Estimate Toxicokinetic Half-Lives of Per- and Polyfluoro-Alkyl Substances (PFAS) in Multiple Species
title_full A Machine Learning Model to Estimate Toxicokinetic Half-Lives of Per- and Polyfluoro-Alkyl Substances (PFAS) in Multiple Species
title_fullStr A Machine Learning Model to Estimate Toxicokinetic Half-Lives of Per- and Polyfluoro-Alkyl Substances (PFAS) in Multiple Species
title_full_unstemmed A Machine Learning Model to Estimate Toxicokinetic Half-Lives of Per- and Polyfluoro-Alkyl Substances (PFAS) in Multiple Species
title_short A Machine Learning Model to Estimate Toxicokinetic Half-Lives of Per- and Polyfluoro-Alkyl Substances (PFAS) in Multiple Species
title_sort machine learning model to estimate toxicokinetic half-lives of per- and polyfluoro-alkyl substances (pfas) in multiple species
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9962572/
https://www.ncbi.nlm.nih.gov/pubmed/36850973
http://dx.doi.org/10.3390/toxics11020098
work_keys_str_mv AT dawsondaniele amachinelearningmodeltoestimatetoxicokinetichalflivesofperandpolyfluoroalkylsubstancespfasinmultiplespecies
AT lauchristopher amachinelearningmodeltoestimatetoxicokinetichalflivesofperandpolyfluoroalkylsubstancespfasinmultiplespecies
AT pradeepprachi amachinelearningmodeltoestimatetoxicokinetichalflivesofperandpolyfluoroalkylsubstancespfasinmultiplespecies
AT sayrerisar amachinelearningmodeltoestimatetoxicokinetichalflivesofperandpolyfluoroalkylsubstancespfasinmultiplespecies
AT judsonrichards amachinelearningmodeltoestimatetoxicokinetichalflivesofperandpolyfluoroalkylsubstancespfasinmultiplespecies
AT tornerovelezrogelio amachinelearningmodeltoestimatetoxicokinetichalflivesofperandpolyfluoroalkylsubstancespfasinmultiplespecies
AT wambaughjohnf amachinelearningmodeltoestimatetoxicokinetichalflivesofperandpolyfluoroalkylsubstancespfasinmultiplespecies
AT dawsondaniele machinelearningmodeltoestimatetoxicokinetichalflivesofperandpolyfluoroalkylsubstancespfasinmultiplespecies
AT lauchristopher machinelearningmodeltoestimatetoxicokinetichalflivesofperandpolyfluoroalkylsubstancespfasinmultiplespecies
AT pradeepprachi machinelearningmodeltoestimatetoxicokinetichalflivesofperandpolyfluoroalkylsubstancespfasinmultiplespecies
AT sayrerisar machinelearningmodeltoestimatetoxicokinetichalflivesofperandpolyfluoroalkylsubstancespfasinmultiplespecies
AT judsonrichards machinelearningmodeltoestimatetoxicokinetichalflivesofperandpolyfluoroalkylsubstancespfasinmultiplespecies
AT tornerovelezrogelio machinelearningmodeltoestimatetoxicokinetichalflivesofperandpolyfluoroalkylsubstancespfasinmultiplespecies
AT wambaughjohnf machinelearningmodeltoestimatetoxicokinetichalflivesofperandpolyfluoroalkylsubstancespfasinmultiplespecies