ConfRank:利用成对训练改进 GFN-FF 对像排序。

IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL Journal of Chemical Information and Modeling Pub Date : 2024-11-20 DOI:10.1021/acs.jcim.4c01524
Christian Hölzer, Rick Oerder, Stefan Grimme, Jan Hamaekers
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引用次数: 0

摘要

构象排序是药物发现的一项关键任务,生成构象的方法通常基于分子(元)动力学或复杂的采样技术。这些方法在运行时间和能量排序准确性方面受到底层力计算的限制,从而限制了它们在大规模筛选应用中的有效性。为了解决这些排序限制,我们引入了 ConfRank,这是一种基于机器学习的方法,可通过成对训练来增强构象排序。我们使用 GFN-FF 生成的构象体集合,利用 DimeNet++ 架构,对来自 GEOM 数据集的 159 760 种不带电荷的有机化合物进行成对训练,并采用 r2SCAN-3c 参考水平,展示了该方法的性能。这种方法不仅能预测单个分子,还能捕捉构象间的相对能量差异,从而显著改善整体构象排序,优于 GFN-FF 和 GFN2-xTB。因此,在测试数据集上,两个构象间相对能量差的成对 RMSD 可从 5.65 kcal mol-1 降至 0.71 kcal mol-1,从而正确识别出高达 81% 的最低构象(GFN-FF:10%,GFN2-xTB:47%)。ConfRank 方法具有很高的成本效益,可以在 CPU 和 GPU 上进行扩展部署,与 GFN2-xTB 相比,其运行速度最多可提高 2 个数量级。对来自 QM9 数据集的 CREST 生成的构象体集合和来自扩展的 GMTKN55 数据集的构象体进行的样本外研究表明,这种方法的鲁棒性很好。因此,Spearman 等排序相关系数可以提高到 0.90(GFN-FF:0.39,GFN2-xTB:0.84),将成对能量比较中错误符号翻转的概率从 32% 降低到 7%。在扩展的 GMTKN55 子集中,几乎所有子集的成对 MAD(RMSD)都能降低 62% (58%),平均提高 30% (29%)。此外,对万古霉素的典型案例研究也显示了类似的性能,这表明该方法适用于较大的(生物)分子结构。此外,我们还从理论角度解释了配对训练方法的使用动机,强调配对训练虽然会导致 ML 模型单样本绝对能量预测的下降,但却能显著提高构象排序性能。本研究使用的数据和模型可在 https://github.com/grimme-lab/confrank 上获取。
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ConfRank: Improving GFN-FF Conformer Ranking with Pairwise Training.

Conformer ranking is a crucial task for drug discovery, with methods for generating conformers often based on molecular (meta)dynamics or sophisticated sampling techniques. These methods are constrained by the underlying force computation regarding runtime and energy ranking accuracy, limiting their effectiveness for large-scale screening applications. To address these ranking limitations, we introduce ConfRank, a machine learning-based approach that enhances conformer ranking using pairwise training. We demonstrate its performance using GFN-FF-generated conformer ensembles, leveraging the DimeNet++ architecture trained on pairs of 159 760 uncharged organic compounds from the GEOM data set with r2SCAN-3c reference level. Instead of predicting only on single molecules, this approach captures relative energy differences between conformers, leading to a significant improvement of the overall conformational ranking, outperforming GFN-FF and GFN2-xTB. Thereby, the pairwise RMSD of the relative energy difference of two conformers can be reduced from 5.65 to 0.71 kcal mol-1 on the test data set, allowing to correctly identify up to 81% of all lowest lying conformers correctly (GFN-FF: 10%, GFN2-xTB: 47%). The ConfRank approach is cost-effective, allowing for scalable deployment on both CPU and GPU, achieving runtime accelerations by up to 2 orders of magnitude compared to GFN2-xTB. Out-of-sample investigations on CREST-generated conformer ensembles from the QM9 data set and conformers taken from an extended GMTKN55 data set show promising results for the robustness of this approach. Thereby, ranking correlation coefficient such as Spearman can be improved to 0.90 (GFN-FF: 0.39, GFN2-xTB: 0.84) reducing the probability of an incorrect sign flip in pairwise energy comparison from 32 to 7%. On the extended GMTKN55 subsets the pairwise MAD (RMSD) could be reduced on almost all subsets by up to 62% (58%) with an average improvement of 30% (29%). Moreover, an exemplary case study on vancomycin shows similar performance, indicating applicability to larger (bio)molecular structures. Furthermore, we motivate the usage of the pairwise training approach from a theoretical perspective, highlighting that while pairwise training can lead to a decline in single sample prediction of absolute energies for ML models, it significantly enhances conformer ranking performance. The data and models used in this study are available at https://github.com/grimme-lab/confrank.

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来源期刊
CiteScore
9.80
自引率
10.70%
发文量
529
审稿时长
1.4 months
期刊介绍: The Journal of Chemical Information and Modeling publishes papers reporting new methodology and/or important applications in the fields of chemical informatics and molecular modeling. Specific topics include the representation and computer-based searching of chemical databases, molecular modeling, computer-aided molecular design of new materials, catalysts, or ligands, development of new computational methods or efficient algorithms for chemical software, and biopharmaceutical chemistry including analyses of biological activity and other issues related to drug discovery. Astute chemists, computer scientists, and information specialists look to this monthly’s insightful research studies, programming innovations, and software reviews to keep current with advances in this integral, multidisciplinary field. As a subscriber you’ll stay abreast of database search systems, use of graph theory in chemical problems, substructure search systems, pattern recognition and clustering, analysis of chemical and physical data, molecular modeling, graphics and natural language interfaces, bibliometric and citation analysis, and synthesis design and reactions databases.
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