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Automated workflows for accurate mass-based putative metabolite identification in LC/MS-derived metabolomic datasets.

机译:自动化工作流程,用于在LC / ms衍生的代谢组学数据集中进行准确的基于质量的推定代谢物鉴定。

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摘要

MOTIVATION: The study of metabolites (metabolomics) is increasingly being applied to investigate microbial, plant, environmental and mammalian systems. One of the limiting factors is that of chemically identifying metabolites from mass spectrometric signals present in complex datasets. RESULTS: Three workflows have been developed to allow for the rapid, automated and high-throughput annotation and putative metabolite identification of electrospray LC-MS-derived metabolomic datasets. The collection of workflows are defined as PUTMEDID_LCMS and perform feature annotation, matching of accurate m/z to the accurate mass of neutral molecules and associated molecular formula and matching of the molecular formulae to a reference file of metabolites. The software is independent of the instrument and data pre-processing applied. The number of false positives is reduced by eliminating the inaccurate matching of many artifact, isotope, multiply charged and complex adduct peaks through complex interrogation of experimental data. AVAILABILITY: The workflows, standard operating procedure and further information are publicly available at http://www.mcisb.org/resources/putmedid.html. CONTACT: warwick.dunn@manchester.ac.uk.
机译:动机:代谢物(代谢组学)的研究正越来越多地用于研究微生物,植物,环境和哺乳动物系统。限制因素之一是从复杂数据集中存在的质谱信号中化学鉴定代谢物的限制因素。结果:已经开发了三种工作流程,以实现电喷雾LC-MS衍生的代谢组学数据集的快速,自动化和高通量注释和假定的代谢物鉴定。工作流的集合定义为PUTMEDID_LCMS并执行特征注释,将准确的m / z与中性分子和相关分子式的准确质量进行匹配,以及将分子式与代谢物的参考文件进行匹配。该软件独立于仪器和所应用的数据预处理。通过消除复杂的实验数据询问,消除了许多伪影,同位素,多电荷峰和复杂的加合物峰的不准确匹配,从而减少了误报的数量。可用性:工作流程,标准操作程序和更多信息可在http://www.mcisb.org/resources/putmedid.html上公开获得。联系人:warwick.dunn@manchester.ac.uk。

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