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评估固相微萃取作为一种样品制备工具,用于使用液相色谱-质谱法对脑组织进行非靶向分析。

Assessment of solid phase microextraction as a sample preparation tool for untargeted analysis of brain tissue using liquid chromatography-mass spectrometry.

机构信息

Department of Chemistry, University of Waterloo, ON N2L 3G1, Canada.

Department of Chemistry and Biochemistry, Concordia University, Montreal QC H4B 1R6, Canada.

出版信息

J Chromatogr A. 2021 Feb 8;1638:461862. doi: 10.1016/j.chroma.2020.461862. Epub 2021 Jan 2.

Abstract

This work presents an evaluation of solid-phase microextraction (SPME) SPME in combination with liquid chromatography-high resolution mass spectrometry (LC-HRMS) as an analytical approach for untargeted brain analysis. The study included a characterization of the metabolite coverage provided by C18, mixed-mode (MM, with benzene sulfonic acid and C18 functionalities), and hydrophilic lipophilic balanced (HLB) particles as sorbents in SPME coatings after extraction from cow brain homogenate at static conditions. The effects of desorption solvent, extraction time, and chromatographic modes on the metabolite features detected were investigated. Method precision and absolute matrix effects were also assessed. Among the main findings of this work, it was observed that all three tested coating chemistries were able to provide comparable brain tissue information. HLB provided higher responses for polar metabolites; however, as these fibers were prepared in-house, higher inter-fiber relative standard deviations were also observed. C18 and HLB coatings offered similar responses with respect to lipid-related features, whereas MM and C18 provided the best results in terms of method precision. Our results also showed that the use of methanol is essential for effective desorption of non-polar metabolites. Using a reversed-phase chromatographic method, an average of 800 and 1200 brain metabolite features detected in positive and negative modes, respectively, met inter-fibre RSD values below 30% (n=4) after removal of fibre and solvent artefacts from the associated datasets. For features detected using a lipidomics method, a total of 900 and 1800 features detected using C18 fibers in positive and negative mode, respectively, met the same criteria. In terms of absolute matrix effects, the majority of the model metabolites tested showed values between 80 and 120%, which are within the acceptable range. Overall, the findings of this work lay the foundation for further optimization of parameters for SPME-LC-HRMS methods suitable for in vivo and ex vivo brain (and other tissue) untargeted studies, and support the applicability of this approach for non-destructive tissue metabolomics.

摘要

本研究评估了固相微萃取(SPME)与液相色谱-高分辨质谱(LC-HRMS)联用作为一种非靶向性脑分析的方法。研究包括在静态条件下从牛脑匀浆中提取后,对 C18、混合模式(MM,含苯磺酸和 C18 官能团)和亲水亲脂平衡(HLB)粒子作为 SPME 涂层中的吸附剂提供的代谢物覆盖范围进行了表征。考察了脱附溶剂、萃取时间和色谱模式对检测到的代谢物特征的影响。还评估了方法的精密度和绝对基质效应。本研究的主要发现之一是,所有三种测试的涂层化学物质都能够提供可比的脑组织信息。HLB 对极性代谢物的响应较高;然而,由于这些纤维是内部制备的,也观察到更高的纤维间相对标准偏差。C18 和 HLB 涂层在脂质相关特征方面提供了相似的响应,而 MM 和 C18 在方法精密度方面提供了最佳结果。我们的结果还表明,使用甲醇对于有效解吸非极性代谢物至关重要。使用反相色谱方法,在正、负离子模式下分别检测到 800 和 1200 个左右的脑代谢物特征,在从相关数据集去除纤维和溶剂伪影后,纤维间 RSD 值低于 30%(n=4)。对于使用脂质组学方法检测到的特征,在正、负离子模式下分别使用 C18 纤维检测到的总共有 900 和 1800 个特征符合相同的标准。就绝对基质效应而言,测试的大多数模型代谢物显示出 80%至 120%之间的值,这在可接受范围内。总的来说,本研究的结果为进一步优化适合体内和体外脑(和其他组织)非靶向性研究的 SPME-LC-HRMS 方法的参数奠定了基础,并支持该方法在无损组织代谢组学中的适用性。

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