Litcius/Paper detail

AlphaFold, allosteric, and orthosteric drug discovery: Ways forward

Ruth Nussinov, Mingzhen Zhang, Yonglan Liu, Hyunbum Jang

2023Drug Discovery Today93 citationsDOIOpen Access PDF

Abstract

Drug discovery is arguably a highly challenging and significant interdisciplinary aim. The stunning success of the artificial intelligence-powered AlphaFold, whose latest version is buttressed by an innovative machine-learning approach that integrates physical and biological knowledge about protein structures, raised drug discovery hopes that unsurprisingly, have not come to bear. Even though accurate, the models are rigid, including the drug pockets. AlphaFold's mixed performance poses the question of how its power can be harnessed in drug discovery. Here we discuss possible ways of going forward wielding its strengths, while bearing in mind what AlphaFold can and cannot do. For kinases and receptors, an input enriched in active (ON) state models can better AlphaFold's chance of rational drug design success.

Topics & Concepts

Drug discoveryAllosteric regulationDrugData scienceComputer scienceComputational biologyPharmacologyChemistryMedicineBioinformaticsBiologyReceptorBiochemistryProtein Structure and DynamicsComputational Drug Discovery MethodsReceptor Mechanisms and Signaling