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Single molecule insights on conformational selection and induced fit mechanism

期刊

BIOPHYSICAL CHEMISTRY
卷 186, 期 -, 页码 46-54

出版社

ELSEVIER SCIENCE BV
DOI: 10.1016/j.bpc.2013.11.003

关键词

Conformational selection; Induced fit; Single enzyme; Allosteric regulation; In silico drug design; De novo protein synthesis

资金

  1. UNIK research initiative of the Danish Ministry of Science, Technology and Innovation through the Center for Synthetic Biology at the University of Copenhagen
  2. Lundbeck Foundation Center of Excellence Biomembranes in Nanomedicine
  3. UCPH Excellence Programme for Interdisciplinary Research' provided by University of Copenhagen

向作者/读者索取更多资源

Biomolecular interactions regulate a plethora of vital cellular processes, including signal transduction, metabolism, catalysis and gene regulation. Regulation is encoded in the molecular properties of the constituent proteins; distinct conformations correspond to different functional outcomes. To describe the molecular basis of this behavior, two main mechanisms have been advanced: 'induced fit' and 'conformational selection'. Our understanding of these models relies primarily on NMR, computational studies and kinetic measurements. These techniques report the average behavior of a large ensemble of unsynchronized molecules, often masking intrinsic dynamic behavior of proteins and biologically significant transient intermediates. Single molecule measurements are emerging as a powerful tool for characterizing protein function. They offer the direct observation and quantification of the activity, abundance and lifetime of multiple states and transient intermediates in the energy landscape, that are typically averaged out in non-synchronized ensemble measurements. Here we survey new insights from single molecule studies that advance our understanding of the molecular mechanisms underlying biomolecular recognition. (C) 2013 Elsevier B.V. All rights reserved.

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