Ideal gas behavior of rotamerically defined conformers in native globular proteins
Kai Wang, Shiyang Long, Zhiming Zhang, Lanru Liu, Qimeng Wang, Pu, Tian

TL;DR
This study shows that conformational entropy effectively predicts protein conformational distributions and free energy, offering a new theoretical foundation for computational protein analysis and related fields.
Contribution
It introduces conformational entropy as a reliable proxy for free energy in proteins, challenging traditional potential energy-based methods.
Findings
Conformational entropy correlates linearly with free energy.
Potential energy span correlates with conformational entropy and free energy.
Traditional free energy proxies show poor correlation with actual free energy.
Abstract
Protein conformational transitions, which are essential for function, may be driven either by entropy or enthalpy when molecular systems comprising solute and solvent molecules are the focus. Revealing thermodynamic origin of a given molecular process is an important but difficult task, and general principles governing protein conformational distributions remain elusive. Here we demonstrate that when protein molecules are taken as thermodynamic systems and solvents being treated as the environment, conformational entropy is an excellent proxy for free energy and is sufficient to explain protein conformational distributions. Specifically, by defining each unique combination of side chain torsional state as a conformer, the population distribution (or free energy) on an arbitrarily given order parameter is approximately a linear function of conformational entropy. Additionally, span of…
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Taxonomy
TopicsProtein Structure and Dynamics · Molecular spectroscopy and chirality · Computational Drug Discovery Methods
