Hardie Adele, Cossins Benjamin P, Lovera Silvia, Michel Julien
EaStChem School of Chemistry, Joseph Black Building, University of Edinburgh, Edinburgh, EH9 3FJ, UK.
UCB Pharma, 216 Bath Road, Slough, UK.
Commun Chem. 2023 Jun 15;6(1):125. doi: 10.1038/s42004-023-00926-1.
Fragment-based drug discovery is an established methodology for finding hit molecules that can be elaborated into lead compounds. However it is currently challenging to predict whether fragment hits that do not bind to an orthosteric site could be elaborated into allosteric modulators, as in these cases binding does not necessarily translate into a functional effect. We propose a workflow using Markov State Models (MSMs) with steered molecular dynamics (sMD) to assess the allosteric potential of known binders. sMD simulations are employed to sample protein conformational space inaccessible to routine equilibrium MD timescales. Protein conformations sampled by sMD provide starting points for seeded MD simulations, which are combined into MSMs. The methodology is demonstrated on a dataset of protein tyrosine phosphatase 1B ligands. Experimentally confirmed allosteric inhibitors are correctly classified as inhibitors, whereas the deconstructed analogues show reduced inhibitory activity. Analysis of the MSMs provide insights into preferred protein-ligand arrangements that correlate with functional outcomes. The present methodology may find applications for progressing fragments towards lead molecules in FBDD campaigns.
基于片段的药物发现是一种成熟的方法,用于寻找可以进一步优化为先导化合物的苗头分子。然而,目前要预测那些不与正构位点结合的片段苗头是否可以进一步优化为变构调节剂具有挑战性,因为在这些情况下,结合并不一定转化为功能效应。我们提出了一种使用马尔可夫状态模型(MSM)和引导分子动力学(sMD)的工作流程,以评估已知结合剂的变构潜力。sMD模拟用于对常规平衡MD时间尺度无法访问的蛋白质构象空间进行采样。通过sMD采样的蛋白质构象为种子MD模拟提供起点,这些模拟被组合成MSM。该方法在蛋白质酪氨酸磷酸酶1B配体的数据集上得到了验证。实验证实的变构抑制剂被正确分类为抑制剂,而解构类似物的抑制活性则有所降低。对MSM的分析提供了与功能结果相关的优选蛋白质-配体排列的见解。本方法可能在基于片段的药物发现(FBDD)活动中为将片段推进到先导分子方面找到应用。