Literature DB >> 28244128

A quantitative in silico model for predicting skin sensitization using a nearest neighbours approach within expert-derived structure-activity alert spaces.

Steven J Canipa1, Martyn L Chilton1, Rachel Hemingway1, Donna S Macmillan1, Alun Myden1, Jeffrey P Plante1, Rachael E Tennant1, Jonathan D Vessey1, Thomas Steger-Hartmann2, Janet Gould3, Jedd Hillegass3, Sylvain Etter4, Benjamin P C Smith5, Angela White6, Paul Sterchele7, Ann De Smedt8, Devin O'Brien9, Rahul Parakhia9.   

Abstract

Dermal contact with chemicals may lead to an inflammatory reaction known as allergic contact dermatitis. Consequently, it is important to assess new and existing chemicals for their skin sensitizing potential and to mitigate exposure accordingly. There is an urgent need to develop quantitative non-animal methods to better predict the potency of potential sensitizers, driven largely by European Union (EU) Regulation 1223/2009, which forbids the use of animal tests for cosmetic ingredients sold in the EU. A Nearest Neighbours in silico model was developed using an in-house dataset of 1096 murine local lymph node (LLNA) studies. The EC3 value (the effective concentration of the test substance producing a threefold increase in the stimulation index compared to controls) of a given chemical was predicted using the weighted average of EC3 values of up to 10 most similar compounds within the same mechanistic space (as defined by activating the same Derek skin sensitization alert). The model was validated using previously unseen internal (n = 45) and external (n = 103) data and accuracy of predictions assessed using a threefold error, fivefold error, European Centre for Ecotoxicology and Toxicology of Chemicals (ECETOC) and Globally Harmonized System of Classification and Labelling of Chemicals (GHS) classifications. In particular, the model predicts the GHS skin sensitization category of compounds well, predicting 64% of chemicals in an external test set within the correct category. Of the remaining chemicals in the previously unseen dataset, 25% were over-predicted (GHS 1A predicted: GHS 1B experimentally) and 11% were under-predicted (GHS 1B predicted: GHS 1A experimentally).
Copyright © 2017 John Wiley & Sons, Ltd. Copyright © 2017 John Wiley & Sons, Ltd.

Entities:  

Keywords:  Derek Nexus; LLNA; QSAR; local lymph node assay; skin sensitization

Mesh:

Substances:

Year:  2017        PMID: 28244128     DOI: 10.1002/jat.3448

Source DB:  PubMed          Journal:  J Appl Toxicol        ISSN: 0260-437X            Impact factor:   3.446


  5 in total

1.  Use of Lhasa Limited Products for the In Silico Prediction of Drug Toxicity.

Authors:  David J Ponting; Michael J Burns; Robert S Foster; Rachel Hemingway; Grace Kocks; Donna S MacMillan; Andrew L Shannon-Little; Rachael E Tennant; Jessica R Tidmarsh; David J Yeo
Journal:  Methods Mol Biol       Date:  2022

2.  An Evaluation of the Occupational Health Hazards of Peptide Couplers.

Authors:  Jessica C Graham; Alejandra Trejo-Martin; Martyn L Chilton; Jakub Kostal; Joel Bercu; Gregory L Beutner; Uma S Bruen; David G Dolan; Stephen Gomez; Jedd Hillegass; John Nicolette; Matthew Schmitz
Journal:  Chem Res Toxicol       Date:  2022-05-09       Impact factor: 3.973

3.  A dual luciferase assay for evaluation of skin sensitizing potential of medical devices.

Authors:  Elisabeth Mertl; Elisabeth Riegel; Nicole Glück; Gabriele Ettenberger-Bornberg; Grace Lin; Sabrina Auer; Magdalena Haller; Angelika Wlodarczyk; Christoph Steurer; Christian Kirchnawy; Thomas Czerny
Journal:  Mol Biol Rep       Date:  2019-07-30       Impact factor: 2.316

4.  Enhanced Skin Adhesive Property of Hydrophobically Modified Poly(vinyl alcohol) Films.

Authors:  Xi Chen; Tetsushi Taguchi
Journal:  ACS Omega       Date:  2020-01-10

Review 5.  In silico prediction of toxicity and its applications for chemicals at work.

Authors:  Kyung-Taek Rim
Journal:  Toxicol Environ Health Sci       Date:  2020-05-14
  5 in total

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