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Building blocks for automated elucidation of metabolites: natural product-likeness for candidate ranking

机译:自动阐明代谢物的基础:候选者排名的天然产物相似性

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Background In metabolomics experiments, spectral fingerprints of metabolites with no known structural identity are detected routinely. Computer-assisted structure elucidation (CASE) has been used to determine the structural identities of unknown compounds. It is generally accepted that a single 1D NMR spectrum or mass spectrum is usually not sufficient to establish the identity of a hitherto unknown compound. When a suite of spectra from 1D and 2D NMR experiments supplemented with a molecular formula are available, the successful elucidation of the chemical structure for candidates with up to 30 heavy atoms has been reported previously by one of the authors. In high-throughput metabolomics, usually 1D NMR or mass spectrometry experiments alone are conducted for rapid analysis of samples. This method subsequently requires that the spectral patterns are analyzed automatically to quickly identify known and unknown structures. In this study, we investigated whether additional existing knowledge, such as the fact that the unknown compound is a natural product, can be used to improve the ranking of the correct structure in the result list after the structure elucidation process. Results To identify unknowns using as little spectroscopic information as possible, we implemented an evolutionary algorithm-based CASE mechanism to elucidate candidates in a fully automated fashion, with input of the molecular formula and 13C NMR spectrum of the isolated compound. We also tested how filters like natural product-likeness, a measure that calculates the similarity of the compounds to known natural product space, might enhance the performance and quality of the structure elucidation. The evolutionary algorithm is implemented within the SENECA package for CASE reported previously, and is available for free download under artistic license at http://sourceforge.net/projects/seneca/ webcite . The natural product-likeness calculator is incorporated as a plugin within SENECA and is available as a GUI client and command-line executable. Significant improvements in candidate ranking were demonstrated for 41 small test molecules when the CASE system was supplemented by a natural product-likeness filter. Conclusions In spectroscopically underdetermined structure elucidation problems, natural product-likeness can contribute to a better ranking of the correct structure in the results list.
机译:背景技术在代谢组学实验中,常规检测未知结构鉴定的代谢物的光谱指纹。计算机辅助结构解析(CASE)已用于确定未知化合物的结构身份。通常认为,单个1D NMR光谱或质谱图通常不足以建立迄今未知的化合物的身份。当从一维和二维核磁共振实验中获得的一套补充分子式的光谱可用时,其中一位作者先前已经成功地阐明了多达30个重原子的候选化合物的化学结构。在高通量代谢组学中,通常单独进行1D NMR或质谱实验以快速分析样品。此方法随后要求自动分析光谱图,以快速识别已知和未知结构。在这项研究中,我们调查了在结构阐明过程之后,是否可以使用其他现有知识(例如未知化合物是天然产物这一事实)来提高结果列表中正确结构的排名。结果为了使用尽可能少的光谱信息识别未知物,我们实施了基于进化算法的CASE机制,以全自动方式阐明候选物,并输入了分子式和 13 C NMR光谱。分离的化合物。我们还测试了类似天然产物的过滤器(一种可计算化合物与已知天然产物空间的相似性的度量)如何提高结构阐明的性能和质量。进化算法在SENECA软件包中针对CASE进行了实现,该案例先前已经报道过,并且可以在http://sourceforge.net/projects/seneca/ webcite的艺术许可下免费下载。产品相似度计算器是作为SENECA中的一个插件集成的,可以作为GUI客户端和命令行可执行文件使用。当在CASE系统中添加天然产物相似性过滤器后,对41个小测试分子的候选者排名得到了显着改善。结论在光谱学上无法确定的结构阐明问题中,天然产物相似性可有助于在结果列表中更好地排列正确的结构。

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