Computer Regression Models for P-Glycoprotein Transport of Drugs


Citar

Texto integral

Acesso aberto Acesso aberto
Acesso é fechado Acesso está concedido
Acesso é fechado Somente assinantes

Resumo

Regression models of the cellular substrate specificity of 177 drugs for P-glycoprotein were built using linear regression, random forest, and support vector methods. QSAR modeling used a full-trial search of all possible combinations of the seven most significant molecular descriptors with clear physicochemical interpretations. The statistics of the obtained models were satisfactory according to an internal cross-validation and external validation tests using 44 new compounds. H-bond descriptors were components of almost all most significant QSAR models. This confirmed that H-bonds played an important role in penetration of the compounds through the blood–brain barrier. The developed statistical models could be used to assess P-glycoprotein transport of investigational new drugs.

Palavras-chave

Sobre autores

V. Grigorev

Institute of Physiologically Active Compounds, Russian Academy of Sciences

Autor responsável pela correspondência
Email: beng@ipac.ac.ru
Rússia, 1 Severnyi Pr., Chernogolovka, Moscow Oblast, 142432

S. Solodova

Institute of Physiologically Active Compounds, Russian Academy of Sciences

Email: beng@ipac.ac.ru
Rússia, 1 Severnyi Pr., Chernogolovka, Moscow Oblast, 142432

D. Polianczyk

Institute of Physiologically Active Compounds, Russian Academy of Sciences

Email: beng@ipac.ac.ru
Rússia, 1 Severnyi Pr., Chernogolovka, Moscow Oblast, 142432

J. Dearden

School of Pharmacy and Biomolecular Sciences, Liverpool John Moores University

Email: beng@ipac.ac.ru
Reino Unido da Grã-Bretanha e Irlanda do Norte, Liverpool, L3 3AF

O. Raevsky

Institute of Physiologically Active Compounds, Russian Academy of Sciences

Email: beng@ipac.ac.ru
Rússia, 1 Severnyi Pr., Chernogolovka, Moscow Oblast, 142432

Arquivos suplementares

Arquivos suplementares
Ação
1. JATS XML

Declaração de direitos autorais © Springer Science+Business Media, LLC, part of Springer Nature, 2019