Helman_2019_Regul.Toxicol.Pharmacol__104480

Reference

Title : Quantitative prediction of repeat dose toxicity values using GenRA - Helman_2019_Regul.Toxicol.Pharmacol__104480
Author(s) : Helman G , Patlewicz G , Shah I
Ref : Regul Toxicol Pharmacol , :104480 , 2019
Abstract :

Computational approaches have recently gained popularity in the field of read-across to automatically fill data-gaps for untested chemicals. Previously, we developed the generalized read-across (GenRA) tool, which utilizes in vitro bioactivity data in conjunction with chemical descriptor information to derive local validity domains to predict hazards observed in in vivo toxicity studies. Here, we modified GenRA to quantitatively predict point of departure (POD) values obtained from US EPA's Toxicity Reference Database (ToxRefDB) version 2.0. To evaluate GenRA predictions, we first aggregated oral Lowest Observed Adverse Effect Levels (LOAEL) for 1,014 chemicals by systemic, developmental, reproductive, and cholinesterase effects. The mean LOAEL values for each chemical were converted to log molar equivalents. Applying GenRA to all chemicals with a minimum Jaccard similarity threshold of 0.05 for Morgan fingerprints and a maximum of 10 nearest neighbors predicted systemic, developmental, reproductive, and cholinesterase inhibition min aggregated LOAEL values with R(2) values of 0.23, 0.22, 0.14, and 0.43, respectively. However, when evaluating GenRA locally to clusters of structurally-similar chemicals (containing 2 to 362 chemicals), average R(2) values for systemic, developmental, reproductive, and cholinesterase LOAEL predictions improved to 0.73, 0.66, 0.60 and 0.79, respectively. Our findings highlight the complexity of the chemical-toxicity landscape and the importance of identifying local domains where GenRA can be used most effectively for predicting PODs.

PubMedSearch : Helman_2019_Regul.Toxicol.Pharmacol__104480
PubMedID: 31550520

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Citations formats

Helman G, Patlewicz G, Shah I (2019)
Quantitative prediction of repeat dose toxicity values using GenRA
Regul Toxicol Pharmacol :104480

Helman G, Patlewicz G, Shah I (2019)
Regul Toxicol Pharmacol :104480