MS2Lipid:利用机器学习和经整理的串联质谱数据进行脂质亚类预测的程序。

IF 3.4 3区 生物学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY Metabolites Pub Date : 2024-11-07 DOI:10.3390/metabo14110602
Nami Sakamoto, Takaki Oka, Yuki Matsuzawa, Kozo Nishida, Jayashankar Jayaprakash, Aya Hori, Makoto Arita, Hiroshi Tsugawa
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引用次数: 0

摘要

背景:使用基于碰撞诱导解离的串联质谱(CID-MS/MS)进行非靶向脂质组学分析对于生物和临床应用至关重要。然而,尽管已开发出各种基于规则片段注释的自动光谱处理软件工具,但注释的可信度仍依赖于分析化学家的人工整理。方法:在本研究中,我们提出了一种新型机器学习模型 MS2Lipid,用于从 MS/MS 查询中预测已知的脂质亚类,为现有的脂质组学软件程序提供了一种确定离子特征的脂质亚类的正交方法。我们设计了一种新的描述符 MCH(碳和氢模式),以提高名义质量分辨率 MS 数据中脂质亚类预测的特异性。结果:该模型分别用 6760 条和 6862 条人工编辑的正离子和负离子模式 MS/MS 图谱进行了训练,将查询归类为 97 个脂质亚类中的一个或多个,测试集的准确率达到 97.4%。该程序使用来自不同仪器和策展人的各种数据集进行了进一步验证,平均准确率超过 87.2%。在一项人类队列研究中,肥胖患者粪便样本中酯化胆汁酸的丰度显著增加。这表明机器学习模型为脂质亚类分类提供了一个独立的标准,增强了对已知脂质类别中脂质代谢物的注释。结论MS2Lipid 是一种高度准确的机器学习模型,它能增强 MS/MS 数据中脂质亚类的注释,并提供一种独立的标准。
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MS2Lipid: A Lipid Subclass Prediction Program Using Machine Learning and Curated Tandem Mass Spectral Data.

Background: Untargeted lipidomics using collision-induced dissociation-based tandem mass spectrometry (CID-MS/MS) is essential for biological and clinical applications. However, annotation confidence still relies on manual curation by analytical chemists, despite the development of various software tools for automatic spectral processing based on rule-based fragment annotations. Methods: In this study, we present a novel machine learning model, MS2Lipid, for the prediction of known lipid subclasses from MS/MS queries, providing an orthogonal approach to existing lipidomics software programs in determining the lipid subclass of ion features. We designed a new descriptor, MCH (mode of carbon and hydrogen), to increase the specificity of lipid subclass prediction in nominal mass resolution MS data. Results: The model, trained with 6760 and 6862 manually curated MS/MS spectra for the positive and negative ion modes, respectively, classified queries into one or several of 97 lipid subclasses, achieving an accuracy of 97.4% in the test set. The program was further validated using various datasets from different instruments and curators, with the average accuracy exceeding 87.2%. Using an integrated approach with molecular spectral networking, we demonstrated the utility of MS2Lipid by annotating microbiota-derived esterified bile acids, whose abundance was significantly increased in fecal samples of obese patients in a human cohort study. This suggests that the machine learning model provides an independent criterion for lipid subclass classification, enhancing the annotation of lipid metabolites within known lipid classes. Conclusions: MS2Lipid is a highly accurate machine learning model that enhances lipid subclass annotation from MS/MS data and provides an independent criterion.

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来源期刊
Metabolites
Metabolites Biochemistry, Genetics and Molecular Biology-Molecular Biology
CiteScore
5.70
自引率
7.30%
发文量
1070
审稿时长
17.17 days
期刊介绍: Metabolites (ISSN 2218-1989) is an international, peer-reviewed open access journal of metabolism and metabolomics. Metabolites publishes original research articles and review articles in all molecular aspects of metabolism relevant to the fields of metabolomics, metabolic biochemistry, computational and systems biology, biotechnology and medicine, with a particular focus on the biological roles of metabolites and small molecule biomarkers. Metabolites encourages scientists to publish their experimental and theoretical results in as much detail as possible. Therefore, there is no restriction on article length. Sufficient experimental details must be provided to enable the results to be accurately reproduced. Electronic material representing additional figures, materials and methods explanation, or supporting results and evidence can be submitted with the main manuscript as supplementary material.
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