Litcius/Paper detail

Sequence-based prediction of protein binding mode landscapes

Attila Horváth, Márton Miskei, Viktor Ambrus, Michele Vendruscolo, Mónika Fuxreiter

2020PLoS Computational Biology63 citationsDOIOpen Access PDF

Abstract

Interactions between disordered proteins involve a wide range of changes in the structure and dynamics of the partners involved. These changes can be classified in terms of binding modes, which include disorder-to-order (DO) transitions, when proteins fold upon binding, as well as disorder-to-disorder (DD) transitions, when the conformational heterogeneity is maintained in the bound states. Furthermore, systematic studies of these interactions are revealing that proteins may exhibit different binding modes with different partners. Proteins that exhibit this context-dependent binding can be referred to as fuzzy proteins. Here we investigate amino acid code for fuzzy binding in terms of the entropy of the probability distribution of transitions towards decreasing order. We implement these entropy calculations into the FuzPred (http://protdyn-fuzpred.org) algorithm to predict the range of context-dependent binding modes of proteins from their amino acid sequences. As we illustrate through a variety of examples, this method identifies those binding sites that are sensitive to the cellular context or post-translational modifications, and may serve as regulatory points of cellular pathways.

Topics & Concepts

Context (archaeology)Computational biologyEntropy (arrow of time)Plasma protein bindingBinding siteAmino acidSequence (biology)Protein structureBiologyPhysicsGeneticsBiochemistryPaleontologyQuantum mechanicsProtein Structure and DynamicsEnzyme Structure and FunctionRNA and protein synthesis mechanisms