Literature DB >> 29226339

Development of an artificial neural network model for risk assessment of skin sensitization using human cell line activation test, direct peptide reactivity assay, KeratinoSens™ and in silico structure alert parameter.

Morihiko Hirota1, Takao Ashikaga1, Hirokazu Kouzuki1.   

Abstract

It is important to predict the potential of cosmetic ingredients to cause skin sensitization, and in accordance with the European Union cosmetic directive for the replacement of animal tests, several in vitro tests based on the adverse outcome pathway have been developed for hazard identification, such as the direct peptide reactivity assay, KeratinoSens™ and the human cell line activation test. Here, we describe the development of an artificial neural network (ANN) prediction model for skin sensitization risk assessment based on the integrated testing strategy concept, using direct peptide reactivity assay, KeratinoSens™, human cell line activation test and an in silico or structure alert parameter. We first investigated the relationship between published murine local lymph node assay EC3 values, which represent skin sensitization potency, and in vitro test results using a panel of about 134 chemicals for which all the required data were available. Predictions based on ANN analysis using combinations of parameters from all three in vitro tests showed a good correlation with local lymph node assay EC3 values. However, when the ANN model was applied to a testing set of 28 chemicals that had not been included in the training set, predicted EC3s were overestimated for some chemicals. Incorporation of an additional in silico or structure alert descriptor (obtained with TIMES-M or Toxtree software) in the ANN model improved the results. Our findings suggest that the ANN model based on the integrated testing strategy concept could be useful for evaluating the skin sensitization potential.
Copyright © 2017 John Wiley & Sons, Ltd.

Entities:  

Keywords:  DPRA; KeratinoSens™, artificial neural network; TIMES; Toxtree; adverse outcome pathway; h-CLAT; integrated testing strategy; risk assessment; skin sensitization

Mesh:

Year:  2017        PMID: 29226339     DOI: 10.1002/jat.3558

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


  2 in total

1.  Weight of Evidence Approach for Skin Sensitization Potency Categorization of Fragrance Ingredients.

Authors:  Mihwa Na; Devin O'Brien; Maura Lavelle; Isabelle Lee; G Frank Gerberick; Anne Marie Api
Journal:  Dermatitis       Date:  2022 Mar-Apr 01       Impact factor: 4.867

2.  Artificial Neural Network Assisted Cancer Risk Prediction of Oral Precancerous Lesions.

Authors:  Wenao Chen; Ruijie Zeng; Yiyao Jin; Xi Sun; Zihan Zhou; Chao Zhu
Journal:  Biomed Res Int       Date:  2022-09-22       Impact factor: 3.246

  2 in total

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