Rapid and accurate determination of atomistic RNA dynamic ensemble models using NMR and structure prediction.
Biomolecules form dynamic ensembles of many inter-converting conformations which are key for understanding how they fold and function. However, determining ensembles is challenging because the information required to specify atomic structures for thousands of conformations far exceeds that of experimental measurements. We addressed this data gap and dramatically simplified and accelerated RNA ensemble determination by using structure prediction tools that leverage the growing database of RNA structures to generate a conformation library. Refinement of this library with NMR residual dipolar couplings provided an atomistic ensemble model for HIV-1 TAR, and the model accuracy was independently supported by comparisons to quantum-mechanical calculations of NMR chemical shifts, comparison to a crystal structure of a substate, and through designed ensemble redistribution via atomic mutagenesis. Applications to TAR bulge variants and more complex tertiary RNAs support the generality of this approach and the potential to make the determination of atomic-resolution RNA ensembles routine.
Duke Scholars
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- RNA, Viral
- RNA Folding
- Nuclear Magnetic Resonance, Biomolecular
- Molecular Dynamics Simulation
- Models, Chemical
- HIV-1
- HIV Long Terminal Repeat
- Cheminformatics
Citation
Published In
DOI
EISSN
Publication Date
Volume
Issue
Start / End Page
Location
Related Subject Headings
- RNA, Viral
- RNA Folding
- Nuclear Magnetic Resonance, Biomolecular
- Molecular Dynamics Simulation
- Models, Chemical
- HIV-1
- HIV Long Terminal Repeat
- Cheminformatics