Department of Physics, Auburn University, Auburn, Alabama 36849, United States.
Institute of Physical Chemistry, Department of Chemistry, University of Basel, Basel 4058, Switzerland.
J Am Chem Soc. 2024 Aug 28;146(34):23842-23853. doi: 10.1021/jacs.4c05869. Epub 2024 Aug 15.
Understanding binding epitopes involved in protein-protein interactions and accurately determining their structure are long-standing goals with broad applicability in industry and biomedicine. Although various experimental methods for binding epitope determination exist, these approaches are typically low throughput and cost-intensive. Computational methods have potential to accelerate epitope predictions; however, recently developed artificial intelligence (AI)-based methods frequently fail to predict epitopes of synthetic binding domains with few natural homologues. Here we have developed an integrated method employing generalized-correlation-based dynamic network analysis on multiple molecular dynamics (MD) trajectories, initiated from AlphaFold2Multimer structures, to unravel the structure and binding epitope of the therapeutic PD-L1:Affibody complex. Both AlphaFold2 and conventional molecular dynamics trajectory analysis were ineffective in distinguishing between two proposed binding models, parallel and perpendicular. However, our integrated approach, utilizing dynamic network analysis, demonstrated that the perpendicular mode was significantly more stable. These predictions were validated using a suite of experimental epitope mapping protocols, including cross-linking mass spectrometry and next-generation sequencing-based deep mutational scanning. Conversely, AlphaFold3 failed to predict a structure bound in the perpendicular pose, highlighting the necessity for exploratory research in the search for binding epitopes and challenging the notion that AI-generated protein structures can be accepted without scrutiny. Our research underscores the potential of employing dynamic network analysis to enhance AI-based structure predictions for more accurate identification of protein-protein interaction interfaces.
理解蛋白质-蛋白质相互作用中涉及的结合表位,并准确确定其结构,是工业和生物医学领域具有广泛适用性的长期目标。尽管存在各种用于确定结合表位的实验方法,但这些方法通常通量低且成本高。计算方法有可能加速表位预测;然而,最近开发的基于人工智能 (AI) 的方法经常无法预测具有少数天然同源物的合成结合结构域的表位。在这里,我们开发了一种集成方法,该方法使用基于广义相关的动态网络分析,对来自 AlphaFold2Multimer 结构的多个分子动力学 (MD) 轨迹进行分析,以揭示治疗性 PD-L1:Affibody 复合物的结构和结合表位。AlphaFold2 和传统的分子动力学轨迹分析都无法区分两种提出的结合模型,即平行和垂直。然而,我们的集成方法利用动态网络分析表明,垂直模式明显更稳定。这些预测使用一系列实验表位作图协议进行了验证,包括交联质谱和基于下一代测序的深度突变扫描。相反,AlphaFold3 未能预测垂直构象结合的结构,这突出表明在寻找结合表位时需要进行探索性研究,并且对 AI 生成的蛋白质结构无需仔细审查即可接受的观点提出了挑战。我们的研究强调了利用动态网络分析增强基于 AI 的结构预测以更准确地识别蛋白质-蛋白质相互作用界面的潜力。