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Structure-based protein–ligand interaction fingerprints for binding affinity prediction

Debby D. Wang, Moon-Tong Chan, Hong Yan

2021Computational and Structural Biotechnology Journal47 citationsDOIOpen Access PDF

Abstract

Binding affinity prediction (BAP) using protein-ligand complex structures is crucial to computer-aided drug design, but remains a challenging problem. To achieve efficient and accurate BAP, machine-learning scoring functions (SFs) based on a wide range of descriptors have been developed. Among those descriptors, protein-ligand interaction fingerprints (IFPs) are competitive due to their simple representations, elaborate profiles of key interactions and easy collaborations with machine-learning algorithms. In this paper, we have adopted a building-block-based taxonomy to review a broad range of IFP models, and compared representative IFP-based SFs in target-specific and generic scoring tasks. Atom-pair-counts-based and substructure-based IFPs show great potential in these tasks.

Topics & Concepts

Ligand (biochemistry)Computational biologyChemistryPlasma protein bindingProtein ligandComputer scienceBiological systemBiologyBiochemistryReceptorComputational Drug Discovery MethodsMicrobial Natural Products and BiosynthesisProtein Structure and Dynamics
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