Data-driven probabilistic definition of the low energy conformational states of protein residues

Author:

Gavalda-Garcia Jose12ORCID,Bickel David12ORCID,Roca-Martinez Joel12ORCID,Raimondi Daniele3ORCID,Orlando Gabriele4ORCID,Vranken Wim12ORCID

Affiliation:

1. Interuniversity Institute of Bioinformatics in Brussels , ULB-VUB, Brussels, Belgium

2. Structural Biology Brussels, Vrije Universiteit Brussel , Brussels, Belgium

3. ESAT-STADIUS , KU Leuven, Leuven, Belgium

4. Switch Laboratory , KU Leuven Leuven, Belgium

Abstract

Abstract Protein dynamics and related conformational changes are essential for their function but difficult to characterise and interpret. Amino acids in a protein behave according to their local energy landscape, which is determined by their local structural context and environmental conditions. The lowest energy state for a given residue can correspond to sharply defined conformations, e.g. in a stable helix, or can cover a wide range of conformations, e.g. in intrinsically disordered regions. A good definition of such low energy states is therefore important to describe the behaviour of a residue and how it changes with its environment. We propose a data-driven probabilistic definition of six low energy conformational states typically accessible for amino acid residues in proteins. This definition is based on solution NMR information of 1322 proteins through a combined analysis of structure ensembles with interpreted chemical shifts. We further introduce a conformational state variability parameter that captures, based on an ensemble of protein structures from molecular dynamics or other methods, how often a residue moves between these conformational states. The approach enables a different perspective on the local conformational behaviour of proteins that is complementary to their static interpretation from single structure models.

Funder

Marie Skłodowska-Curie

Research Foundation Flanders

European Cooperation in Science and Technology

Research Foundation—Flanders

Flemish Government

Publisher

Oxford University Press (OUP)

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