Protein conformational dynamics dictate the binding affinity for a ligand

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作者
Moon-Hyeong Seo
Jeongbin Park
Eunkyung Kim
Sungchul Hohng
Hak-Sung Kim
机构
[1] Korea Advanced Institute of Science and Technology,Department of Biological Sciences
[2] Seoul National University,Department of Physics and Astronomy
[3] Seoul National University,Department of Biophysics and Chemical Biology
[4] National Center for Creative Research Initiatives,undefined
[5] Seoul National University,undefined
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Interactions between a protein and a ligand are essential to all biological processes. Binding and dissociation are the two fundamental steps of ligand–protein interactions, and determine the binding affinity. Intrinsic conformational dynamics of proteins have been suggested to play crucial roles in ligand binding and dissociation. Here, we demonstrate how protein dynamics dictate the binding and dissociation of a ligand through a single-molecule kinetic analysis for a series of maltose-binding protein mutants that have different intrinsic conformational dynamics and dissociation constants for maltose. Our results provide direct evidence that the ligand dissociation is determined by the intrinsic opening rate of the protein.
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