Energy landscapes from single-particle imaging of biological processes in and out of equilibrium
ORAL
Abstract
Ideally, a measurement of the free energy landscape of a biomolecule would combine the sampling of a macroscopic ensemble with the microscopic information of molecular simulation. We have developed a graph-theoretic technique which allows us to map the low-dimensional conformational manifold embedded in noisy single-particle cryo-electron microscope images[1,2]. Recently we successfully applied the method to X-ray Free Electron Laser diffraction images to map the process of genome release of the PR772 virus[3]. In all cases, we find continuous structural pathways on the extracted landscape which correspond directly to known biological function. Processes such as viral infection are highly non-equilibrium; in principle, the underlying free energy landscape can be derived from such non-equilibrium measurements, and we demonstrate this possibility in simple models. Single-particle imaging promises unprecedented access to the energy landscapes of biological systems.
[1] Trajectories of the ribosome as a Brownian nanomachine. PNAS (2014).
[2] Conformational Dynamics and Energy Landscapes of Ligand Binding in RyR1. bioRxiv (2017).
[3] Conformational landscape of a virus by single-particle X-ray scattering. Nat. Methods (2017).
[1] Trajectories of the ribosome as a Brownian nanomachine. PNAS (2014).
[2] Conformational Dynamics and Energy Landscapes of Ligand Binding in RyR1. bioRxiv (2017).
[3] Conformational landscape of a virus by single-particle X-ray scattering. Nat. Methods (2017).
*DOE under DE-SC0002164 and NSF under STC 1231306 and 1551489.
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Presenters
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Jeremy Copperman
- Physics, Univ of Wisconsin, Milwaukee
- Physics, University of Wisconsin, Milwaukee