质谱迷宫导航:O-糖分析中识别诊断离子的机器学习指南。

IF 3.8 2区 化学 Q1 BIOCHEMICAL RESEARCH METHODS
James Urban, Roman Joeres, Luc Thomès, Kristina A Thomsson, Daniel Bojar
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引用次数: 0

摘要

低聚糖或聚糖的结构细节通常具有生物学意义,因此通常使用串联质谱法来阐明。区分异构体的常见方法依赖于用于注释拓扑或连接的诊断性聚糖片段。诊断片段往往只是从业人员之间的非正式了解,或源自个别研究,其有效性或可推广性并不明确,从而导致注释的异质性,阻碍了新分析人员的工作。我们在此介绍一种基于规则的机器学习工作流程,该流程借鉴了 237,000 个 O-糖组图谱的编辑集,以发现可量化的有效和可推广的诊断片段。这就产生了碎片规则,能在负离子模式下稳健地区分还原糖的常见 O-聚糖异构体。我们希望这一资源能提高聚糖注释的准确性,同时使不同分析师的注释更加透明和一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Navigating the maze of mass spectra: a machine-learning guide to identifying diagnostic ions in O-glycan analysis.

Navigating the maze of mass spectra: a machine-learning guide to identifying diagnostic ions in O-glycan analysis.

Structural details of oligosaccharides, or glycans, often carry biological relevance, which is why they are typically elucidated using tandem mass spectrometry. Common approaches to distinguish isomers rely on diagnostic glycan fragments for annotating topologies or linkages. Diagnostic fragments are often only known informally among practitioners or stem from individual studies, with unclear validity or generalizability, causing annotation heterogeneity and hampering new analysts. Drawing on a curated set of 237,000 O-glycomics spectra, we here present a rule-based machine learning workflow to uncover quantifiably valid and generalizable diagnostic fragments. This results in fragmentation rules to robustly distinguish common O-glycan isomers for reduced glycans in negative ion mode. We envision this resource to improve glycan annotation accuracy and concomitantly make annotations more transparent and homogeneous across analysts.

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来源期刊
CiteScore
8.00
自引率
4.70%
发文量
638
审稿时长
2.1 months
期刊介绍: Analytical and Bioanalytical Chemistry’s mission is the rapid publication of excellent and high-impact research articles on fundamental and applied topics of analytical and bioanalytical measurement science. Its scope is broad, and ranges from novel measurement platforms and their characterization to multidisciplinary approaches that effectively address important scientific problems. The Editors encourage submissions presenting innovative analytical research in concept, instrumentation, methods, and/or applications, including: mass spectrometry, spectroscopy, and electroanalysis; advanced separations; analytical strategies in “-omics” and imaging, bioanalysis, and sampling; miniaturized devices, medical diagnostics, sensors; analytical characterization of nano- and biomaterials; chemometrics and advanced data analysis.
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