Department of Bioengineering, Rice University, Houston, Texas.
Department of Biological Sciences, University of Texas at Dallas, Richardson, Texas.
Biophys J. 2021 Feb 2;120(3):489-503. doi: 10.1016/j.bpj.2020.12.018. Epub 2020 Dec 25.
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.
腺相关病毒(AAV)是一种很有前途的基因治疗载体,因为它具有高效的基因传递和相对温和的免疫原性。为了提高递药靶向特异性,研究人员采用组合和合理的文库设计策略来产生新型 AAV 衣壳变体。这些方法经常提出很高比例的非形成或非感染性衣壳蛋白序列,从而降低了合成载体 DNA 文库的有效深度,增加了新型载体的发现成本。我们评估了两种计算技术在预测残基突变对 AAV 衣壳蛋白-蛋白相互作用的影响和预测载体适应性变化方面的能力,认为这些方法可能有助于设计功能丰富的 AAV 文库并加速治疗候选物的鉴定。Frustratometer 计算了一个源自蛋白质折叠能量景观理论的能量函数。直接耦联分析(DCA)是一种捕获蛋白质内部残基共进化的统计框架。我们应用 Frustratometer 选择预测有利于衣壳组装或解体的衣壳状态的候选蛋白残基,然后使用 Frustratometer 和 DCA 预测这些位点的突变效应。衣壳突变体在实验中评估了病毒形成、稳定性和转导能力的变化。基于 Frustratometer 的度量与病毒稳定性呈反直觉相关,而 DCA 衍生的度量与研究的小残基群体中的病毒转导能力高度相关。我们的结果表明,共进化模型可能能够阐明对于病毒功能至关重要的复杂衣壳残基-残基相互作用网络,但需要进一步研究以了解蛋白质能量模拟与病毒衣壳亚稳定性之间的关系。