ISISTAN   23985
INSTITUTO SUPERIOR DE INGENIERIA DEL SOFTWARE
Unidad Ejecutora - UE
artículos
Título:
QSAR Modelling to Identify LRRK2 Inhibitors for Parkinson's Disease
Autor/es:
MARTÍNEZ, MARÍA JIMENA; MARTÍNEZ, ANA; MARTÍNEZ, MARÍA JIMENA; MARTÍNEZ, ANA; GIL, CARMEN; PONZONI, IGNACIO; GIL, CARMEN; PONZONI, IGNACIO; SEBASTIÁN-PÉREZ, VÍCTOR; CAMPILLO, NURIA EUGENIA; SEBASTIÁN-PÉREZ, VÍCTOR; CAMPILLO, NURIA EUGENIA
Revista:
Journal of integrative bioinformatics
Editorial:
NLM (Medline)
Referencias:
Año: 2019 vol. 16
Resumen:
Parkinson´s disease is one of the most common neurodegenerative illnesses in older persons and the leucine-rich repeat kinase 2 (LRRK2) is an auspicious target for its pharmacological treatment. In this work, quantitative structure-activity relationship (QSAR) models for identification of putative inhibitors of LRRK2 protein are developed by using an in-house chemical library and several machine learning techniques. The methodology applied in this paper has two steps: first, alternative subsets of molecular descriptors useful for characterizing LRRK2 inhibitors are chosen by a multi-objective feature selection method; secondly, QSAR models are learned by using these subsets and three different strategies for supervised learning. The qualities of all these QSAR models are compared by classical metrics and the best models are discussed in statistical and physicochemical terms.