Litcius/Paper detail

C@PA: Computer-Aided Pattern Analysis to Predict Multitarget ABC Transporter Inhibitors

Vigneshwaran Namasivayam, Katja Silbermann, Michael Wiese, Jens Pahnke, Sven Marcel Stefan

2021Journal of Medicinal Chemistry43 citationsDOIOpen Access PDF

Abstract

Based on literature reports of the last two decades, a computer-aided pattern analysis (C@PA) was implemented for the discovery of novel multitarget ABCB1 (P-gp), ABCC1 (MRP1), and ABCG2 (BCRP) inhibitors. C@PA included basic scaffold identification, substructure search and statistical distribution, as well as novel scaffold extraction to screen a large virtual compound library. Over 45,000 putative and novel broad-spectrum ABC transporter inhibitors were identified, from which 23 were purchased for biological evaluation. Our investigations revealed five novel lead molecules as triple ABCB1, ABCC1, and ABCG2 inhibitors. C@PA is the very first successful computational approach for the discovery of promiscuous ABC transporter inhibitors.

Topics & Concepts

ABCC1Abcg2ChemistryComputational biologyATP-binding cassette transporterTransporterBiochemistryBiologyGeneDrug Transport and Resistance MechanismsComputational Drug Discovery MethodsCholesterol and Lipid Metabolism