Introducing Molecular Hypernetworks for Discovery in Multidimensional Metabolomics Data

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2024-10-22 DOI:10.1021/acs.jproteome.3c0063410.1021/acs.jproteome.3c00634
Sean M. Colby, Madelyn R. Shapiro, Andy Lin, Aivett Bilbao, Corey D. Broeckling, Emilie Purvine and Cliff A. Joslyn*, 
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Abstract

Orthogonal separations of data from high-resolution mass spectrometry can provide insight into sample composition and address challenges of complete annotation of molecules in untargeted metabolomics. “Molecular networks” (MNs), as used in the Global Natural Products Social Molecular Networking platform, are a prominent strategy for exploring and visualizing molecular relationships and improving annotation. MNs are mathematical graphs showing the relationships between measured multidimensional data features. MNs also show promise for using network science algorithms to automatically identify targets for annotation candidates and to dereplicate features associated with a single molecular identity. This paper introduces “molecular hypernetworks” (MHNs) as more complex MN models able to natively represent multiway relationships among observations. Compared to MNs, MHNs can more parsimoniously represent the inherent complexity present among groups of observations, initially supporting improved exploratory data analysis and visualization. MHNs also promise to increase confidence in annotation propagation, for both human and analytical processing. We first illustrate MHNs with simple examples, and build them from liquid chromatography- and ion mobility spectrometry-separated MS data. We then describe a method to construct MHNs directly from existing MNs as their “clique reconstructions”, demonstrating their utility by comparing examples of previously published graph-based MNs to their respective MHNs.

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引入分子超网络以发现多维代谢组学数据
对来自高分辨率质谱的数据进行正交分离,可以深入了解样品组成,并解决在非靶向代谢组学中对分子进行完整注释所面临的挑战。全球天然产品社会分子网络平台中使用的 "分子网络"(MNs)是探索和可视化分子关系以及改进注释的一个重要策略。分子网络是显示测量的多维数据特征之间关系的数学图表。分子超网络还显示了利用网络科学算法自动识别注释候选目标和消除与单一分子特征相关的特征的前景。本文介绍了 "分子超网络"(MHN),它是一种更复杂的分子网络模型,能够原生表示观测数据之间的多向关系。与 MNs 相比,MHNs 可以更简洁地表示观察组之间存在的内在复杂性,初步支持改进的探索性数据分析和可视化。MHN 还有望提高注释传播的可信度,无论是对于人工处理还是分析处理都是如此。我们首先用简单的例子来说明 MHN,并从液相色谱和离子迁移谱分离的 MS 数据中构建 MHN。然后,我们介绍了一种直接从现有的 MNs(作为其 "clique reconstructions")构建 MHNs 的方法,并通过比较以前发表的基于图的 MNs 和它们各自的 MHNs 来证明它们的实用性。
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CiteScore
7.20
自引率
4.30%
发文量
567
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