使用带标记混合器的预训练图神经网络作为构象动力学的几何特征。

IF 3.1 2区 化学 Q3 CHEMISTRY, PHYSICAL Journal of Chemical Physics Pub Date : 2025-01-28 DOI:10.1063/5.0244453
Zihan Pengmei, Chatipat Lorpaiboon, Spencer C Guo, Jonathan Weare, Aaron R Dinner
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引用次数: 0

摘要

识别分子模拟中表征动力学的信息低维特征仍然是一个挑战,通常需要大量的手动调整和系统特定知识。本文介绍了利用预训练的图神经网络(gnn)作为通用几何特征器的geom2vec算法。通过在具有自监督去噪目标的大型分子构象数据集上预训练等变gnn,我们获得了可转移的结构表示,这对于无需进一步微调即可学习构象动力学非常有用。我们展示了学习到的GNN表示如何通过将结构单元(令牌)与表达令牌混合器相结合来捕获结构单元(令牌)之间的可解释关系。重要的是,从下游任务的训练中解耦训练gnn可以在有限的计算资源下分析更大的分子图(可以在全原子分辨率下表示小蛋白质)。通过这些方式,geom2vec消除了手动特征选择的需要,并增加了模拟分析的鲁棒性。
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Using pretrained graph neural networks with token mixers as geometric featurizers for conformational dynamics.

Identifying informative low-dimensional features that characterize dynamics in molecular simulations remains a challenge, often requiring extensive manual tuning and system-specific knowledge. Here, we introduce geom2vec, in which pretrained graph neural networks (GNNs) are used as universal geometric featurizers. By pretraining equivariant GNNs on a large dataset of molecular conformations with a self-supervised denoising objective, we obtain transferable structural representations that are useful for learning conformational dynamics without further fine-tuning. We show how the learned GNN representations can capture interpretable relationships between structural units (tokens) by combining them with expressive token mixers. Importantly, decoupling training the GNNs from training for downstream tasks enables analysis of larger molecular graphs (that can represent small proteins at all-atom resolution) with limited computational resources. In these ways, geom2vec eliminates the need for manual feature selection and increases the robustness of simulation analyses.

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来源期刊
Journal of Chemical Physics
Journal of Chemical Physics 物理-物理:原子、分子和化学物理
CiteScore
7.40
自引率
15.90%
发文量
1615
审稿时长
2 months
期刊介绍: The Journal of Chemical Physics publishes quantitative and rigorous science of long-lasting value in methods and applications of chemical physics. The Journal also publishes brief Communications of significant new findings, Perspectives on the latest advances in the field, and Special Topic issues. The Journal focuses on innovative research in experimental and theoretical areas of chemical physics, including spectroscopy, dynamics, kinetics, statistical mechanics, and quantum mechanics. In addition, topical areas such as polymers, soft matter, materials, surfaces/interfaces, and systems of biological relevance are of increasing importance. Topical coverage includes: Theoretical Methods and Algorithms Advanced Experimental Techniques Atoms, Molecules, and Clusters Liquids, Glasses, and Crystals Surfaces, Interfaces, and Materials Polymers and Soft Matter Biological Molecules and Networks.
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