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Accurate prediction of protein folding mechanisms by simple structure-based statistical mechanical models

Koji Ooka, Munehito Arai

2023Nature Communications19 citationsDOIOpen Access PDF

Abstract

Recent breakthroughs in highly accurate protein structure prediction using deep neural networks have made considerable progress in solving the structure prediction component of the 'protein folding problem'. However, predicting detailed mechanisms of how proteins fold into specific native structures remains challenging, especially for multidomain proteins constituting most of the proteomes. Here, we develop a simple structure-based statistical mechanical model that introduces nonlocal interactions driving the folding of multidomain proteins. Our model successfully predicts protein folding processes consistent with experiments, without the limitations of protein size and shape. Furthermore, slight modifications of the model allow prediction of disulfide-oxidative and disulfide-intact protein folding. These predictions depict details of the folding processes beyond reproducing experimental results and provide a rationale for the folding mechanisms. Thus, our physics-based models enable accurate prediction of protein folding mechanisms with low computational complexity, paving the way for solving the folding process component of the 'protein folding problem'.

Topics & Concepts

Simple (philosophy)Protein structure predictionProtein foldingComputer scienceFolding (DSP implementation)CASPProtein structureComputational biologyBiological systemBiologyEngineeringPhilosophyBiochemistryEpistemologyElectrical engineeringProtein Structure and DynamicsEnzyme Structure and FunctionRNA and protein synthesis mechanisms