Pathway Enrichment Analysis for Untargeted Metabolomics

V. Porokhin, Xinmeng Li, S. Hassoun
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Abstract

Metabolomics-based studies have provided critical insights across many applications and now offer researchers an opportunity to collect information about thousands of small molecules in-bulk through untargeted metabolomics. However, taking advantage of this new development requires accurate identification of metabolites and their biological significance in a given sample, which unfortunately remains difficult. Pathway enrichment is a powerful method that can aid in addressing those tasks, but existing techniques intended for gene enrichment analysis are not directly applicable to untargeted metabolomics. In this poster we address the following problem: given a network model of the biological sample and a likelihood score of observing metabolites (nodes) within the network, compute the enrichment of pathways within the network model. We approach this challenge as an optimization problem, where a solution is defined as a particular assignment of mass features to candidate metabolites. The method generates possible assignments of features to compounds using in silico fragmentation tools (e.g., MetFrag [1], CFM-ID [2], and CSI:FingerID [3]) and spectral database (e.g., MassBank [4]) and then attempts to iteratively improve a possible solution. By developing this method, we enable the use of pathway enrichment as an effective way of metabolite identification in untargeted metabolomics.
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非靶向代谢组学的途径富集分析
基于代谢组学的研究为许多应用提供了关键的见解,现在为研究人员提供了一个通过非靶向代谢组学收集成千上万小分子散装信息的机会。然而,利用这一新发展需要在给定样品中准确鉴定代谢物及其生物学意义,不幸的是,这仍然很困难。途径富集是一种强大的方法,可以帮助解决这些任务,但现有的基因富集分析技术并不直接适用于非靶向代谢组学。在这张海报中,我们解决了以下问题:给定生物样本的网络模型和观察网络中代谢物(节点)的可能性评分,计算网络模型中通路的富集程度。我们将这一挑战视为一个优化问题,其中解决方案被定义为候选代谢物的质量特征的特定分配。该方法使用计算机碎片化工具(例如MetFrag[1]、CFM-ID[2]和CSI:FingerID[3])和光谱数据库(例如MassBank[4])生成化合物特征的可能分配,然后尝试迭代改进可能的解决方案。通过开发这种方法,我们可以使用途径富集作为非靶向代谢组学中代谢物鉴定的有效方法。
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