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Metabolite Structure Assignment Using In Silico NMR Techniques

机译:代谢物结构分配在Silico NMR技术中使用

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A major challenge for metabolomic analysis is to obtain an unambiguous identification of the metabolites detected in a sample. Among metabolomics techniques, NMR spectroscopy is a sophisticated, powerful, and generally applicable spectroscopic tool that can be used to ascertain the correct structure of newly isolated biogenic molecules. However, accurate structure prediction using computational NMR techniques depends on how much of the relevant conformational space of a particular compound is considered. It is intrinsically challenging to calculate NMR chemical shifts using high-level DFT when the conformational space of a metabolite is extensive. In this work, we developed NMR chemical shift calculation protocols using a machine learning model in conjunction with standard DFT methods. The pipeline encompasses the following steps: (1) conformation generation using a force field (FF)-based method, (2) filtering the FF generated conformations using the ASE-ANI machine learning model, (3) clustering of the optimized conformations based on structural similarity to identify chemically unique conformations, (4) DFT structural optimization of the unique conformations, and (5) DFT NMR chemical shift calculation. This protocol can calculate the NMR chemical shifts of a set of molecules using any available combination of DFT theory, solvent model, and NMR-active nuclei, using both user-selected reference compounds and/or linear regression methods. Our protocol reduces the overall computational time by 2 orders of magnitude over methods that optimize the conformations using fully ab initio methods, while still producing good agreement with experimental observations. The complete protocol is designed in such a manner that makes the computation of chemical shifts tractable for a large number of conformationally flexible metabolites.
机译:代谢组分析的主要挑战是获得在样品中检测到的代谢物的明确鉴定。在代谢组科技术中,NMR光谱是一种复杂,强大,通常适用的光谱工具,可用于确定新分离的生物分子的正确结构。然而,使用计算NMR技术的精确结构预测取决于考虑特定化合物的相关构象空间。当代谢物的构象空间广泛时,计算使用高水平DFT计算NMR化学位移是本质上的。在这项工作中,我们使用机器学习模型与标准DFT方法一起开发了NMR化学换档计算协议。管道包含以下步骤:(1)使用力字段(FF)的方法(2)使用ASE-ANI机器学习模型(3)基于的ASE-ANI机器学习模型来筛选FF生成的构象的组合生成结构相似度以鉴定化学独特的构象,(4)DFT结构优化独特构象,(5)DFT NMR化学换档计算。该方案可以使用用户选择的参考化合物和/或线性回归方法使用DFT理论,溶剂模型和NMR-活性核的任何可用组合来计算一组分子的NMR化学位移。我们的协议通过使用完全AB Initio方法优化构象的方法将整体计算时间减少了2次级别,同时仍然与实验观察结果良好。完整的方案以这样的方式设计,使得化学变化的计算易于用于大量构象柔性的代谢物。

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