Evaluating Skin Sensitization Via Soft and Hard Multivariate Modeling

التفاصيل البيبلوغرافية
العنوان: Evaluating Skin Sensitization Via Soft and Hard Multivariate Modeling
المؤلفون: Gonçalo Brites, Ana Silva, Bruno Miguel Neves, Jorge Pereira, Maria Teresa Cruz, Isabel C.F.R. Ferreira, Filipa A. L. S. Silva
المصدر: International journal of toxicology. 39(6)
سنة النشر: 2020
مصطلحات موضوعية: Multivariate statistics, Computer science, In silico, Population, 010501 environmental sciences, Toxicology, Machine learning, computer.software_genre, Animal Testing Alternatives, 01 natural sciences, Models, Biological, 03 medical and health sciences, Structure-Activity Relationship, Animals, Humans, Computer Simulation, Information gain, education, 030304 developmental biology, 0105 earth and related environmental sciences, Skin, 0303 health sciences, education.field_of_study, End point, Molecular Structure, business.industry, Skin sensitization, Allergens, Data set, Dermatitis, Allergic Contact, Multivariate Analysis, Biological Assay, Artificial intelligence, business, computer, Predictive modelling
الوصف: Allergic contact dermatitis is the most frequent manifestation of immunotoxicity in humans with a prevalence rate of 15% to 20% over general population. Skin sensitization is a complex end point that was for a long time being evaluated using animal testing. Great efforts have been made to completely substitute the use of animals and replace them by integrating data from in vitro and in chemico assays with in silico calculated parameters. However, it remains undefined how to make the best use of the cumulative data in such a way that information gain is maximized and accomplished with the fewest number of tests possible. In this work, 3 skin sensitization prediction models were considered: one to discriminate sensitizers from non-sensitizers, considering a 2-level scale; one according to the GHS, considering a 3-level scale; and the other to categorize potency in a 6-level scale, according to available human data. We used a data set of known human skin allergens for which in vitro, in chemico, and in silico descriptors where available to build classifiers based on soft and hard multivariate modeling. Model building, optimization, and refinement resulted in 100% accuracy in distinguishing between sensitizers and non-sensitizers. The same model was able to perform the characterization, in 3 and 6 levels, respectively, with 98.8 and 97.5% accuracy. Combining data from in vitro and in chemico tests with in silico descriptors is relatively simple to implement and some predictors are fitting the adverse outcome pathway for skin sensitization.
تدمد: 1092-874X
الوصول الحر: https://explore.openaire.eu/search/publication?articleId=doi_dedup___::066ced7b7a962a2227e57e914610a5a0Test
https://pubmed.ncbi.nlm.nih.gov/32757797Test
حقوق: CLOSED
رقم الانضمام: edsair.doi.dedup.....066ced7b7a962a2227e57e914610a5a0
قاعدة البيانات: OpenAIRE