Artículos de revistas
Visual analytics in cheminformatics: user-supervised descriptor selection for QSAR methods
Fecha
2015-08-19Registro en:
Martínez, María Jimena; Ponzoni, Ignacio; Diaz, Monica Fatima; Vazquez, Gustavo Esteban; Soto, Axel Juan; Visual analytics in cheminformatics: user-supervised descriptor selection for QSAR methods; Chemistry Central; Journal of cheminformatics; 7; 39; 19-8-2015; 1-17
1758-2946
CONICET Digital
CONICET
Autor
Martínez, María Jimena
Ponzoni, Ignacio
Diaz, Monica Fatima
Vazquez, Gustavo Esteban
Soto, Axel Juan
Resumen
The design of QSAR/QSPR models is a challenging problem, where the selection of the most relevant descriptors constitutes a key step of the process. Several feature selection methods that address this step are concentrated on statistical associations among descriptors and target properties, whereas the chemical knowledge is left out of the analysis. For this reason, the interpretability and generality of the QSAR/QSPR models obtained by these feature selection methods are drastically affected. Therefore, an approach for integrating domain expert?s knowledge in the selection process is needed for increase the confidence in the final set of descriptors.