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利用带有序列掩码和浅子采样的AlphaFold2适应性比较分析预测蛋白激酶中状态转换变构突变体的构象集合和结构效应

Prediction of Conformational Ensembles and Structural Effects of State-Switching Allosteric Mutants in the Protein Kinases Using Comparative Analysis of AlphaFold2 Adaptations with Sequence Masking and Shallow Subsampling.

作者信息

Raisinghani Nishank, Alshahrani Mohammed, Gupta Grace, Tian Hao, Xiao Sian, Tao Peng, Verkhivker Gennady

出版信息

bioRxiv. 2024 May 18:2024.05.17.594786. doi: 10.1101/2024.05.17.594786.

DOI:10.1101/2024.05.17.594786
PMID:38798650
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11118581/
Abstract

Despite the success of AlphaFold2 approaches in predicting single protein structures, these methods showed intrinsic limitations in predicting multiple functional conformations of allosteric proteins and have been challenged to accurately capture of the effects of single point mutations that induced significant structural changes. We systematically examined several implementations of AlphaFold2 methods to predict conformational ensembles for state-switching mutants of the ABL kinase. The results revealed that a combination of randomized alanine sequence masking with shallow multiple sequence alignment subsampling can significantly expand the conformational diversity of the predicted structural ensembles and capture shifts in populations of the active and inactive ABL states. Consistent with the NMR experiments, the predicted conformational ensembles for M309L/L320I and M309L/H415P ABL mutants that perturb the regulatory spine networks featured the increased population of the fully closed inactive state. On the other hand, the predicted conformational ensembles for the G269E/M309L/T334I and M309L/L320I/T334I triple ABL mutants that share activating T334I gate-keeper substitution are dominated by the active ABL form. The proposed adaptation of AlphaFold can reproduce the experimentally observed mutation-induced redistributions in the relative populations of the active and inactive ABL states and capture the effects of regulatory mutations on allosteric structural rearrangements of the kinase domain. The ensemble-based network analysis complemented AlphaFold predictions by revealing allosteric mediating centers that often directly correspond to state-switching mutational sites or reside in their immediate local structural proximity, which may explain the global effect of regulatory mutations on structural changes between the ABL states. This study suggested that attention-based learning of long-range dependencies between sequence positions in homologous folds and deciphering patterns of allosteric interactions may further augment the predictive abilities of AlphaFold methods for modeling of alternative protein sates, conformational ensembles and mutation-induced structural transformations.

摘要

尽管AlphaFold2方法在预测单个蛋白质结构方面取得了成功,但这些方法在预测变构蛋白的多种功能构象时显示出内在局限性,并且在准确捕捉诱导显著结构变化的单点突变的影响方面面临挑战。我们系统地研究了AlphaFold2方法的几种实现方式,以预测ABL激酶状态转换突变体的构象集合。结果表明,随机丙氨酸序列掩蔽与浅度多序列比对二次采样相结合,可以显著扩展预测结构集合的构象多样性,并捕捉活性和非活性ABL状态群体的变化。与核磁共振实验一致,扰乱调节脊柱网络的M309L/L320I和M309L/H415P ABL突变体的预测构象集合显示完全关闭的非活性状态群体增加。另一方面,共享激活T334I守门人替代的G269E/M309L/T334I和M309L/L320I/T334I三重ABL突变体的预测构象集合以活性ABL形式为主。所提出的AlphaFold改编方法可以重现实验观察到的突变诱导的活性和非活性ABL状态相对群体的重新分布,并捕捉调节突变对激酶结构域变构结构重排的影响。基于集合的网络分析通过揭示变构介导中心补充了AlphaFold预测,这些中心通常直接对应于状态转换突变位点或位于其直接的局部结构附近,这可能解释了调节突变对ABL状态之间结构变化的全局影响。这项研究表明,基于注意力学习同源折叠中序列位置之间的长程依赖性以及解读变构相互作用模式,可能会进一步增强AlphaFold方法对替代蛋白质状态、构象集合和突变诱导的结构转变建模的预测能力。