PROJECT SUMMARY/ABSTRACT
To advance the understanding of atomic-level mechanisms behind critical protein functions like enzyme
catalysis and allosteric regulation, it is important to first elucidate a true representation of the protein in
solution. In an effort to achieve this long term goal, we will use the recently developed Kinetic Ensemble
approach to transform the way in which nuclear magnetic resonance (NMR) data is computationally modeled
to solve protein structures and measure protein motions. NMR is one of the most powerful techniques for
elucidating the structure and dynamics of proteins. It enables their study in solution (unlike x-ray
crystallography) and can capture critical structural rearrangements as they happen at room temperature (unlike
cryo-electron microscopy). However, despite these advantages, there have been relatively few practical
improvements to one of the foundational aspects behind the way protein structures are solved, namely the
calculation of interatomic distances from nuclear Overhauser effect (NOE) experiments. Such methods have
remained largely qualitative, resulting in large uncertainties in the atomic positions for most NMR structures.
Also, the field has almost completely ignored how angular motion and kinetics affect the NOE, resulting in
atoms appearing much further away from one another than they actually are. To overcome these significant
deficiencies, we will implement and test new Kinetic Ensemble-based refinement algorithms that are
considerably more accurate and physically realistic than previous approaches, accounting for both angular
motion and kinetics. To eliminate a significant fraction of the systematic and random structural errors resulting
from poorly quantified NMR spectra, we will also integrate advances made by the FitNMR peak quantification
software recently developed by our lab. These methods will be used to create better experimental NMR
structures, more exhaustive models of side chain dynamics, and determine differences between solution and
crystal states with unprecedented detail. This work will allow much more accurate determination of the
structural dynamics in parts of the protein exhibiting significant fluctuations, including protein active sites,
regulatory regions, and hidden binding sites. Such knowledge will advance our fundamental understanding of
protein biophysics and facilitate rational design of new therapeutics.