Department of Statistics, University of Oxford, Oxford OX1 3LB, United Kingdom.
Structural and Biophysical Sciences, GlaxoSmithKline R&D, Stevenage SG1 2NY, United Kingdom.
J Proteome Res. 2023 Sep 1;22(9):2959-2972. doi: 10.1021/acs.jproteome.3c00297. Epub 2023 Aug 15.
Proteins often undergo structural perturbations upon binding to other proteins or ligands or when they are subjected to environmental changes. Hydrogen-deuterium exchange mass spectrometry (HDX-MS) can be used to explore conformational changes in proteins by examining differences in the rate of deuterium incorporation in different contexts. To determine deuterium incorporation rates, HDX-MS measurements are typically made over a time course. Recently introduced methods show that incorporating the temporal dimension into the statistical analysis improves power and interpretation. However, these approaches have technical assumptions that hinder their flexibility. Here, we propose a more flexible methodology by reframing these methods in a Bayesian framework. Our proposed framework has improved algorithmic stability, allows us to perform uncertainty quantification, and can calculate statistical quantities that are inaccessible to other approaches. We demonstrate the general applicability of the method by showing it can perform rigorous model selection on a spike-in HDX-MS experiment, improved interpretation in an epitope mapping experiment, and increased sensitivity in a small molecule case-study. Bayesian analysis of an HDX experiment with an antibody dimer bound to an E3 ubiquitin ligase identifies at least two interaction interfaces where previous methods obtained confounding results due to the complexities of conformational changes on binding. Our findings are consistent with the cocrystal structure of these proteins, demonstrating a bayesian approach can identify important binding epitopes from HDX data. We also generate HDX-MS data of the bromodomain-containing protein BRD4 in complex with GSK1210151A to demonstrate the increased sensitivity of adopting a Bayesian approach.
蛋白质在与其他蛋白质或配体结合时,或在受到环境变化影响时,通常会发生结构上的变化。氢氘交换质谱(HDX-MS)可用于通过检查不同环境下氘掺入率的差异来探索蛋白质的构象变化。为了确定氘掺入率,HDX-MS 测量通常在时间过程中进行。最近引入的方法表明,将时间维度纳入统计分析可以提高功率和解释力。然而,这些方法有技术假设,限制了它们的灵活性。在这里,我们通过在贝叶斯框架中重新构建这些方法,提出了一种更灵活的方法。我们提出的框架具有改进的算法稳定性,允许我们进行不确定性量化,并可以计算其他方法无法计算的统计量。我们通过在掺入 HDX-MS 实验中进行严格的模型选择、在表位作图实验中进行改进的解释以及在小分子案例研究中提高灵敏度,展示了该方法的普遍适用性。对与 E3 泛素连接酶结合的抗体二聚体进行的 HDX 实验进行贝叶斯分析,确定了至少两个相互作用界面,而先前的方法由于结合时构象变化的复杂性而得到了混淆的结果。我们的发现与这些蛋白质的共晶结构一致,表明贝叶斯方法可以从 HDX 数据中识别重要的结合表位。我们还生成了 BRD4 蛋白与 GSK1210151A 复合物的 HDX-MS 数据,以证明采用贝叶斯方法的灵敏度提高。