Topological structural alerts modulations of mammalian cell mutagenicity for halogenated derivatives
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Morales Helguera, Aliuska; Borges, F.; Combes, R. D.; Pérez Garrido, Alfonso; Gil Izquierdo, FranciscoFecha
2013Disciplina/s
Ciencias AmbientalesCiencias de la Alimentación
Farmacia
Ingeniería, Industria y Construcción
Medicina
Materia/s
QSARTOPS-MODE
Mutagenicity
Aliphatic halogenated derivatives
Genotoxicity
Structural alerts
Resumen
Genotoxicity is a key toxicity endpoint for current regulatory requirements regarding new
and existing chemicals. However, genotoxicity testing is time-consuming and costly, and
involves the use of laboratory animals. This has motivated the development of computational
approaches, designed to predict genotoxicity without the need to conduct laboratory
tests. Currently, many existing computational methods, like quantitative structure–activity
relationship (QSAR) models, provide limited information about the possible mechanisms
involved in mutagenicity or predictions based on structural alerts (SAs) do not take
statistical models into account. This paper describes an attempt to address this problem by
using the TOPological Substructural MOlecular Design (TOPS-MODE) approach to
develop and validate improved QSAR models for predicting the mutagenicity of a range of
halogenated derivatives. Our most predictive model has an accuracy of 94.12%, exhibits
excellent cross-validation a...