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

Daniel E DawsonChristopher LauPrachi PradeepRisa R SayreRichard S JudsonRogelio Tornero-VelezJohn F Wambaugh
Published in: Toxics (2023)
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.
Keyphrases
  • machine learning
  • healthcare
  • endothelial cells
  • deep learning
  • magnetic resonance imaging
  • magnetic resonance
  • big data
  • mass spectrometry
  • artificial intelligence
  • placebo controlled
  • case control