Browsing by Author "Orlovsky, Nicole"
Results Per Page
Sort Options
Item Open Access Developing a Predictive and Quantitative Understanding of RNA Ligand Recognition(2021) Orlovsky, NicoleRNA recognition frequently results in conformational changes that optimize
intermolecular binding. As a consequence, the overall binding affinity of RNA
to its binding partners depends not only on the intermolecular interactions
formed in the bound state, but also on the energy cost associated with changing
the RNA conformational distribution. Measuring these conformational penalties
is however challenging because bound RNA conformations tend to have equilibrium
populations in the absence of the binding partner that fall outside detection by
conventional biophysical methods.
In this work we employ as a model system HIV-1 TAR RNA and its interaction with
the ligand argininamide (ARG), a mimic of TAR’s cognate protein binding partner,
the transactivator Tat. We use NMR chemical shift perturbations (CSP) and NMR
relaxation dispersion (RD) in combination with Bayesian inference to develop a
detailed thermodynamic model of coupled conformational change and ligand
binding. Starting from a comprehensive 12-state model of the equilibrium, we
estimate the energies of six distinct detectable thermodynamic states that are
not accessible by currently available methods.
Our approach identifies a minimum of four RNA intermediates that differ in terms
of the TAR conformation and ARG-occupancy. The dominant bound TAR conformation
features two bound ARG ligands and has an equilibrium population in the absence
of ARG that is below detection limit. Consequently, even though ARG binds to TAR
with an apparent overall weak affinity ($\Kdapp \approx \SI{0.2}{\milli
\Molar}$), it binds the prefolded conformation with a $K_{\ch{d}}$ in the nM
range. Our results show that conformational penalties can be major determinants
of RNA-ligand binding affinity as well as a source of binding cooperativity,
with important implications for a predictive understanding of how RNA is
recognized and for RNA-targeted drug discovery.
Additionally, we describe in detail the development of our approach for fitting
complex ligand binding data to mathematical models using Bayesian
inference. We provide crucial benchmarks and demonstrate the
robustness of our fitting approach with the goal of application
to other systems. This thesis aims to provide new insight into
the dynamics of RNA-ligand recognition as well as provide new
methods that can be applied to achieve this goal.