INVESTIGADORES
DIAZ Monica Fatima
congresos y reuniones científicas
Título:
QSAR Classification Models for Predicting Affinity to Blood or Liver of Volatile Organic Compounds in e-Health (10)
Autor/es:
FIORELLA CRAVERO; MARÍA JIMENA MARTÍNEZ; MONICA F. DIAZ; IGNACIO PONZONI
Lugar:
Granada
Reunión:
Congreso; International Work-Conference on Bioinformatics and Biomedical Engineering (IWBBIO); 2017
Institución organizadora:
Universidad de Granada, España
Resumen:
DOI 10.1007/978-3-319-56154-7_38classification models for characterization of molecules affinity to blood or liver for volatile organic compounds (VOCs), using information provided from log Pliver measures for VOCs. The models are computed from a dataset of 122 molecules. As a first phase, alternative subsets of relevant molecular descriptors related to the target property are selected by using feature selection methods and visual analytics techniques. From these subsets, several QSAR models are inferred by different machine learning methods. These models allow classifying a new compound as a molecule with affinity to blood, to the liver or equal affinity to both. The model with the highest performance correctly classifies72.13% of VOCs and has an average receiver operating characteristic area equal to 0.83. As a conclusion, this QSAR model can predict the medium affinity of a VOC, which can help in the development of physiologically based pharmacokinetic computational models required in e-health.