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Building blocks for automated elucidation of metabolites: Machine learning methods for NMR prediction

机译:自动阐明代谢物的基本原理:用于NMR预测的机器学习方法

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Background Current efforts in Metabolomics, such as the Human Metabolome Project, collect structures of biological metabolites as well as data for their characterisation, such as spectra for identification of substances and measurements of their concentration. Still, only a fraction of existing metabolites and their spectral fingerprints are known. Computer-Assisted Structure Elucidation (CASE) of biological metabolites will be an important tool to leverage this lack of knowledge. Indispensable for CASE are modules to predict spectra for hypothetical structures. This paper evaluates different statistical and machine learning methods to perform predictions of proton NMR spectra based on data from our open database NMRShiftDB. Results A mean absolute error of 0.18 ppm was achieved for the prediction of proton NMR shifts ranging from 0 to 11 ppm. Random forest, J48 decision tree and support vector machines achieved similar overall errors. HOSE codes being a notably simple method achieved a comparatively good result of 0.17 ppm mean absolute error. Conclusion NMR prediction methods applied in the course of this work delivered precise predictions which can serve as a building block for Computer-Assisted Structure Elucidation for biological metabolites.
机译:背景技术当前在代谢组学方面的工作,例如人类代谢组计划,收集生物代谢物的结构以及其表征数据,例如用于物质鉴定和浓度测量的光谱。但是,仅已知的一部分代谢物及其光谱指纹图谱是已知的。生物代谢产物的计算机辅助结构解析(CASE)将成为利用这种知识不足的重要工具。对于CASE来说必不可少的是用于预测假设结构光谱的模块。本文评估了基于我们开放数据库NMRShiftDB的数据的不同统计和机器学习方法,以进行质子NMR谱的预测。结果预测质子NMR位移为0至11 ppm时,平均绝对误差为0.18 ppm。随机森林,J48决策树和支持向量机实现了相似的总体错误。 HOSE代码是一种非常简单的方法,相对平均绝对误差为0.17 ppm,效果比较好。结论在这项工作中应用的NMR预测方法提供了精确的预测,可作为计算机辅助生物代谢物结构阐明的基础。

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