Research and Development, BioPharmics LLC, Sonoma County, CA, USA.
Bristol-Myers Squibb Company, Princeton, NJ, USA.
J Comput Aided Mol Des. 2023 Nov;37(11):519-535. doi: 10.1007/s10822-023-00524-2. Epub 2023 Aug 3.
Systematic optimization of large macrocyclic peptide ligands is a serious challenge. Here, we describe an approach for lead-optimization using the PD-1/PD-L1 system as a retrospective example of moving from initial lead compound to clinical candidate. We show how conformational restraints can be derived by exploiting NMR data to identify low-energy solution ensembles of a lead compound. Such restraints can be used to focus conformational search for analogs in order to accurately predict bound ligand poses through molecular docking and thereby estimate ligand strain and protein-ligand intermolecular binding energy. We also describe an analogous ligand-based approach that employs molecular similarity optimization to predict bound poses. Both approaches are shown to be effective for prioritizing lead-compound analogs. Surprisingly, relatively small ligand modifications, which may have minimal effects on predicted bound pose or intermolecular interactions, often lead to large changes in estimated strain that have dominating effects on overall binding energy estimates. Effective macrocyclic conformational search is crucial, whether in the context of NMR-based restraints, X-ray ligand refinement, partial torsional restraint for docking/ligand-similarity calculations or agnostic search for nominal global minima. Lead optimization for peptidic macrocycles can be made more productive using a multi-disciplinary approach that combines biophysical data with practical and efficient computational methods.
系统地优化大型环状肽配体是一项严峻的挑战。在这里,我们描述了一种使用 PD-1/PD-L1 系统进行先导优化的方法,该方法以从初始先导化合物到临床候选药物的转变为例。我们展示了如何通过利用 NMR 数据来识别先导化合物的低能量溶液构象,从而得出构象限制。这些限制可用于集中构象搜索类似物,以通过分子对接准确预测结合配体构象,并估算配体应变和蛋白-配体分子间结合能。我们还描述了一种类似的基于配体的方法,该方法采用分子相似性优化来预测结合构象。这两种方法都被证明可有效地对先导化合物类似物进行优先级排序。令人惊讶的是,相对较小的配体修饰,可能对预测的结合构象或分子间相互作用影响不大,通常会导致估计应变的大幅变化,而应变的变化对整体结合能估计有主导作用。有效的大环构象搜索至关重要,无论是在基于 NMR 的限制、X 射线配体精修、用于对接/配体相似性计算的部分扭转限制还是对名义全局最小值的盲目搜索的背景下。使用结合了生物物理数据和实用有效的计算方法的多学科方法,可以使肽大环的先导优化更具成效。