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Protein-Folding Analysis Using Features Obtained by Persistent Homology

Takashi Ichinomiya, Ippei Obayashi, Yasuaki Hiraoka

2020Biophysical Journal30 citationsDOIOpen Access PDF

Abstract

Understanding the protein-folding process is an outstanding issue in biophysics; recent developments in molecular dynamics simulation have provided insights into this phenomenon. However, the large freedom of atomic motion hinders the understanding of this process. In this study, we applied persistent homology, an emerging method to analyze topological features in a data set, to reveal protein-folding dynamics. We developed a new, to our knowledge, method to characterize the protein structure based on persistent homology and applied this method to molecular dynamics simulations of chignolin. Using principle component analysis or nonnegative matrix factorization, our analysis method revealed two stable states and one saddle state, corresponding to the native, misfolded, and transition states, respectively. We also identified an unfolded state with slow dynamics in the reduced space. Our method serves as a promising tool to understand the protein-folding process.

Topics & Concepts

Protein foldingMolecular dynamicsFolding (DSP implementation)Computational biologyHomology modelingNative stateHomology (biology)Persistent homologyBiological systemPhysicsComputer scienceBiophysicsChemistryBiologyComputational chemistryCrystallographyAlgorithmEngineeringBiochemistryEnzymeGeneElectrical engineeringTopological and Geometric Data AnalysisProtein Structure and DynamicsCell Image Analysis Techniques
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