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Frustration and Direct-Coupling Analyses to Predict Formation and Function of Adeno-Associated Virus
Authors:Nicole N Thadani  Qin Zhou  Kiara Reyes Gamas  Susan Butler  Carlos Bueno  Nicholas P Schafer  Faruck Morcos  Peter G Wolynes  Junghae Suh
Institution:1. Department of Bioengineering, Rice University, Houston, Texas;2. Department of Biological Sciences, University of Texas at Dallas, Richardson, Texas;3. Center for Theoretical Biological Physics, Rice University, Houston, Texas;4. Department of Chemistry, Rice University, Houston, Texas;5. Center for Systems Biology, University of Texas at Dallas, Richardson, Texas;6. Department of Bioengineering, University of Texas at Dallas, Richardson, Texas;7. Department of Biosciences, Rice University, Houston, Texas;8. Department of Physics, Rice University, Houston, Texas;9. Department of Chemical and Biomolecular Engineering, Rice University, Houston, Texas;10. Systems, Synthetic, and Physical Biology Program, Rice University, Houston, Texas
Abstract:Adeno-associated virus (AAV) is a promising gene therapy vector because of its efficient gene delivery and relatively mild immunogenicity. To improve delivery target specificity, researchers use combinatorial and rational library design strategies to generate novel AAV capsid variants. These approaches frequently propose high proportions of nonforming or noninfective capsid protein sequences that reduce the effective depth of synthesized vector DNA libraries, thereby raising the discovery cost of novel vectors. We evaluated two computational techniques for their ability to estimate the impact of residue mutations on AAV capsid protein-protein interactions and thus predict changes in vector fitness, reasoning that these approaches might inform the design of functionally enriched AAV libraries and accelerate therapeutic candidate identification. The Frustratometer computes an energy function derived from the energy landscape theory of protein folding. Direct-coupling analysis (DCA) is a statistical framework that captures residue coevolution within proteins. We applied the Frustratometer to select candidate protein residues predicted to favor assembled or disassembled capsid states, then predicted mutation effects at these sites using the Frustratometer and DCA. Capsid mutants were experimentally assessed for changes in virus formation, stability, and transduction ability. The Frustratometer-based metric showed a counterintuitive correlation with viral stability, whereas a DCA-derived metric was highly correlated with virus transduction ability in the small population of residues studied. Our results suggest that coevolutionary models may be able to elucidate complex capsid residue-residue interaction networks essential for viral function, but further study is needed to understand the relationship between protein energy simulations and viral capsid metastability.
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