Litcius/Paper detail

An up-to-date overview of computational polypharmacology in modern drug discovery

Rajan Chaudhari, Lon Wolf R. Fong, Zhi Tan, Beibei Huang, Shuxing Zhang

2020Expert Opinion on Drug Discovery83 citationsDOIOpen Access PDF

Abstract

INTRODUCTION: In recent years, computational polypharmacology has gained significant attention to study the promiscuous nature of drugs. Despite tremendous challenges, community-wide efforts have led to a variety of novel approaches for predicting drug polypharmacology. In particular, some rapid advances using machine learning and artificial intelligence have been reported with great success. AREAS COVERED: In this article, the authors provide a comprehensive update on the current state-of-the-art polypharmacology approaches and their applications, focusing on those reports published after our 2017 review article. The authors particularly discuss some novel, groundbreaking concepts, and methods that have been developed recently and applied to drug polypharmacology studies. EXPERT OPINION: assays to characterize multi-targeting agents, shortage of robust computational methods, and challenges to identify the best target combinations and design effective multi-targeting agents. Fortunately, numerous national/international efforts including multi-omics and artificial intelligence initiatives as well as most recent collaborations on addressing the COVID-19 pandemic have shown significant promise to propel the field of polypharmacology forward.

Topics & Concepts

Data scienceDrug discoveryComputer scienceDrug repositioningVariety (cybernetics)Field (mathematics)Artificial intelligenceMedicineDrugBioinformaticsBiologyPharmacologyMathematicsPure mathematicsComputational Drug Discovery MethodsReceptor Mechanisms and Signalingvaccines and immunoinformatics approaches