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Biologically Consistent Annotation of Metabolomics Data

机译:生物学上一致的代谢组数据注释

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Annotation of metabolites remains a major challenge in liquid chromatography mass spectrometry (LC-MS) based untargeted metabolomics. The current gold standard for metabolite identification is to match the detected feature with an authentic standard analyzed on the Same equipment and using the same method as the experimental samples. However, there are substantial practical challenges in applying this approach to large data sets. One widely used annotation approach is to search: spectral libraries in reference databases for matching metabolites; however, this approach is limited by the incomplete coverage of these libraries. An alternative computational approach is to match the detected features to candidate chemical structures based on their mass and predicted fragmentation pattern. Unfortunately, both of these approaches can match multiple identities with a single feature. Another issue is that annotations from different tools often disagree. This paper presents a novel LC-MS data annotation method, termed Biologically Consistent Annotation (BioCAn), that combines the results from database searches and in silico fragmentation analyses and places these results into a relevant biological context for the sample as captured by a metabolic model. We demonstrate the utility of this approach through an analysis of CHO cell samples. The performance of BioCAn is evaluated against several currently available annotation tools, and the accuracy of BioCAn annotations is verified using high-purity analytical standards.
机译:代谢物的注释仍然是基于液相色谱质谱(LC-MS)的未标准化代谢物中的主要挑战。当前的代谢物鉴定金标准是将检测到的特征与在同一设备上分析的真实标准匹配,并使用与实验样品相同的方法。但是,在将这种方法应用于大数据集时存在具有实际实际挑战。一个广泛使用的注释方法是搜索:参考数据库中的光谱库,用于匹配代谢物;然而,这种方法受到这些库的不完整覆盖范围的限制。替代的计算方法是基于其质量和预测的碎片模式将检测到的特征与候选化学结构匹配。遗憾的是,这两种方法都可以将多个身份与单个功能匹配。另一个问题是来自不同工具的注释往往不同意。本文提出了一种新的LC-MS数据注释方法,称为生物一致的注释(Biocan),其将来自数据库搜索和硅碎片分析的结果组合并将这些结果放置在由代谢模型捕获的样本的相关生物学背景中。我们通过分析CHO细胞样本来证明这种方法的效用。脂肪酸的性能是针对几种目前可用的注释工具评估的,并且使用高纯度分析标准验证了生物合组注释的准确性。

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