Department of Chemistry, Michigan State University, East Lansing, Michigan 48824, United States.
Department of Biochemistry and Molecular Biology, Michigan State University, East Lansing, Michigan 48824, United States.
J Chem Inf Model. 2024 Oct 28;64(20):7864-7872. doi: 10.1021/acs.jcim.4c01051. Epub 2024 Oct 8.
Accurate elucidation of gas-phase chemical structures using collision cross section (CCS) values obtained from ion-mobility mass spectrometry benefits from a synergism between experimental and results. We have shown in recent work that for a molecule of modest size with a proscribed conformational space we can successfully capture a conformation(s) that can match experimental CCS values. However, for flexible systems such as fatty acids that have many rotatable bonds and multiple intramolecular London dispersion interactions, it becomes necessary to sample a much greater conformational space. Sampling more conformers, however, accrues significant computational cost downstream in optimization steps involving quantum mechanics. To reduce this computational expense for lipids, we have developed a novel machine learning (ML) model to facilitate conformer filtering according to the estimated gas-phase CCS values. Herein we report that the implementation of our CCS knowledge-based approach for conformational sampling resulted in improved structure prediction agreement with experiment by achieving favorable average CCS prediction errors of ∼2% for lipid systems in both the validation set and the test set. Moreover, most of the gas-phase candidate conformations obtained by using CCS focusing achieved lower energy-minimum geometries than the candidate conformations without focusing. Altogether, the implementation of this ML model into our modeling workflow has proven to be beneficial for both the quality of the results and the turnaround time. Finally, while our approach is limited to lipids, it can be readily extended to other molecules of interest.
利用离子迁移质谱获得的碰撞截面 (CCS) 值准确阐明气相化学结构得益于实验和计算结果的协同作用。我们在最近的工作中表明,对于具有规定构象空间的中等大小的分子,我们可以成功捕获与其实验 CCS 值匹配的构象。然而,对于具有许多可旋转键和多个分子内伦敦色散相互作用的灵活系统,如脂肪酸,需要对更大的构象空间进行采样。然而,采样更多的构象会在涉及量子力学的优化步骤中产生大量的计算成本。为了降低脂质的这种计算成本,我们开发了一种新的机器学习 (ML) 模型,根据估计的气相 CCS 值进行构象过滤。在此,我们报告说,通过实施我们的基于 CCS 的构象采样知识方法,通过实现脂质系统在验证集和测试集中平均 CCS 预测误差约为 2%的有利结果,从而改善了与实验的结构预测一致性。此外,使用 CCS 聚焦获得的大多数气相候选构象的能量最小几何形状都低于没有聚焦的候选构象。总的来说,将这个 ML 模型实施到我们的建模工作流程中,已被证明对结果的质量和周转时间都有益。最后,虽然我们的方法仅限于脂质,但它可以很容易地扩展到其他感兴趣的分子。