Institute for Physical Science and Technology, University of Maryland, College Park, Maryland 20742, United States.
Biophysics Program and Institute for Physical Science and Technology, University of Maryland, College Park, Maryland 20742, United States.
J Chem Inf Model. 2024 Apr 8;64(7):2789-2797. doi: 10.1021/acs.jcim.3c01436. Epub 2023 Nov 20.
Kinases compose one of the largest fractions of the human proteome, and their misfunction is implicated in many diseases, in particular, cancers. The ubiquitousness and structural similarities of kinases make specific and effective drug design difficult. In particular, conformational variability due to the evolutionarily conserved Asp-Phe-Gly (DFG) motif adopting in and out conformations and the relative stabilities thereof are key in structure-based drug design for ATP competitive drugs. These relative conformational stabilities are extremely sensitive to small changes in sequence and provide an important problem for sampling method development. Since the invention of AlphaFold2, the world of structure-based drug design has noticeably changed. In spite of it being limited to crystal-like structure prediction, several methods have also leveraged its underlying architecture to improve dynamics and enhanced sampling of conformational ensembles, including AlphaFold2-RAVE. Here, we extend AlphaFold2-RAVE and apply it to a set of kinases: the wild type DDR1 sequence and three mutants with single point mutations that are known to behave drastically differently. We show that AlphaFold2-RAVE is able to efficiently recover the changes in relative stability using transferable learned order parameters and potentials, thereby supplementing AlphaFold2 as a tool for exploration of Boltzmann-weighted protein conformations (Meller, A.; Bhakat, S.; Solieva, S.; Bowman, G. R. Accelerating Cryptic Pocket Discovery Using AlphaFold. , , 4355-4363).
激酶构成人类蛋白质组的最大部分之一,它们的功能失调与许多疾病有关,特别是癌症。激酶的普遍性和结构相似性使得特异性和有效的药物设计变得困难。特别是,由于进化上保守的 Asp-Phe-Gly (DFG) 基序采用进出构象及其相对稳定性,构象变异性是基于结构的 ATP 竞争药物设计的关键。这些相对构象稳定性对序列的微小变化非常敏感,为采样方法的发展提供了一个重要的问题。自从 AlphaFold2 的发明以来,基于结构的药物设计领域发生了显著的变化。尽管它仅限于类似晶体的结构预测,但也有几种方法利用其基础架构来提高动力学并增强构象集合的增强采样,包括 AlphaFold2-RAVE。在这里,我们扩展了 AlphaFold2-RAVE 并将其应用于一组激酶:野生型 DDR1 序列和三个单点突变的突变体,这些突变体的行为明显不同。我们表明,AlphaFold2-RAVE 能够使用可转移的学习有序参数和势能有效地恢复相对稳定性的变化,从而补充 AlphaFold2 作为探索玻尔兹曼加权蛋白质构象的工具(Meller、A.;Bhakat、S.;Solieva、S.;Bowman、G.R. 使用 AlphaFold 加速隐窝口袋发现, , ,4355-4363)。