Suppr超能文献

一种使用非靶向和基于目标列表方法相结合的方式来分析复杂生物样本的代谢组学工作流程。

A Metabolomics Workflow for Analyzing Complex Biological Samples Using a Combined Method of Untargeted and Target-List Based Approaches.

作者信息

Züllig Thomas, Zandl-Lang Martina, Trötzmüller Martin, Hartler Jürgen, Plecko Barbara, Köfeler Harald C

机构信息

Core Facility Mass Spectrometry, Medical University of Graz, 8036 Graz, Austria.

Department of Paediatrics and Adolescent Medicine, Division of General Paediatrics, University Childrens' Hospital Graz, Medical University of Graz, 8036 Graz, Austria.

出版信息

Metabolites. 2020 Aug 25;10(9):342. doi: 10.3390/metabo10090342.

Abstract

In the highly dynamic field of metabolomics, we have developed a method for the analysis of hydrophilic metabolites in various biological samples. Therefore, we used hydrophilic interaction chromatography (HILIC) for separation, combined with a high-resolution mass spectrometer (MS) with the aim of separating and analyzing a wide range of compounds. We used 41 reference standards with different chemical properties to develop an optimal chromatographic separation. MS analysis was performed with a set of pooled biological samples human cerebrospinal fluid (CSF), and human plasma. The raw data was processed in a first step with Compound Discoverer 3.1 (CD), a software tool for untargeted metabolomics with the aim to create a list of unknown compounds. In a second step, we combined the results obtained with our internally analyzed reference standard list to process the data along with the Lipid Data Analyzer 2.6 (LDA), a software tool for a targeted approach. In order to demonstrate the advantages of this combined target-list based and untargeted approach, we not only compared the relative standard deviation (%RSD) of the technical replicas of pooled plasma samples ( = 5) and pooled CSF samples ( = 3) with the results from CD, but also with XCMS Online, a well-known software tool for untargeted metabolomics studies. As a result of this study we could demonstrate with our HILIC-MS method that all standards could be either separated by chromatography, including isobaric leucine and isoleucine or with MS by different mass. We also showed that this combined approach benefits from improved precision compared to well-known metabolomics software tools such as CD and XCMS online. Within the pooled plasma samples processed by LDA 68% of the detected compounds had a %RSD of less than 25%, compared to CD and XCMS online (57% and 55%). The improvements of precision in the pooled CSF samples were even more pronounced, 83% had a %RSD of less than 25% compared to CD and XCMS online (28% and 8% compounds detected). Particularly for low concentration samples, this method showed a more precise peak area integration with its 3D algorithm and with the benefits of the LDAs graphical user interface for fast and easy manual curation of peak integration. The here-described method has the advantage that manual curation for larger batch measurements remains minimal due to the target list containing the information obtained by an untargeted approach.

摘要

在代谢组学这个高度动态的领域,我们开发了一种用于分析各种生物样品中亲水性代谢物的方法。因此,我们采用亲水相互作用色谱法(HILIC)进行分离,并结合高分辨率质谱仪(MS),旨在分离和分析多种化合物。我们使用了41种具有不同化学性质的参考标准品来开发最佳的色谱分离方法。质谱分析是用一组混合的生物样品进行的,包括人脑脊液(CSF)和人血浆。原始数据首先用Compound Discoverer 3.1(CD)进行处理,CD是一种用于非靶向代谢组学的软件工具,目的是创建一份未知化合物列表。第二步,我们将获得的结果与我们内部分析得到的参考标准品列表相结合,使用脂质数据分析器2.6(LDA)这一用于靶向方法的软件工具来处理数据。为了证明这种基于目标列表的非靶向方法的优势,我们不仅将混合血浆样品(n = 5)和混合脑脊液样品(n = 3)的技术重复样品的相对标准偏差(%RSD)与CD的结果进行比较,还与XCMS Online(一种用于非靶向代谢组学研究的知名软件工具)的结果进行比较。作为这项研究的结果,我们用我们的HILIC-MS方法证明了所有标准品都可以通过色谱法分离,包括等压的亮氨酸和异亮氨酸,或者通过质谱根据不同质量进行分离。我们还表明,与CD和XCMS Online等知名代谢组学软件工具相比,这种联合方法在精度上有所提高。在由LDA处理的混合血浆样品中,68%的检测化合物的%RSD小于25%,而CD和XCMS Online的这一比例分别为57%和55%。在混合脑脊液样品中精度的提高更为显著,与CD和XCMS Online(分别检测到28%和8%的化合物)相比,83%的化合物的%RSD小于25%。特别是对于低浓度样品,该方法凭借其3D算法以及LDA图形用户界面在快速简便地手动校正峰积分方面的优势,显示出更精确的峰面积积分。本文所述方法的优点是,由于目标列表包含了通过非靶向方法获得的信息,因此对于大量批次测量的手动校正仍然最少。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f61a/7570008/ae59e6ce1840/metabolites-10-00342-g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验