[Development of a widely-targeted metabolomics method based on gas chromatography-mass spectrometry].

IF 1.2 4区 化学 Q4 CHEMISTRY, ANALYTICAL
Ya-Ting Wang, Yang Yang, Xiu-Lan Sun, Jian Ji
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引用次数: 0

Abstract

Gas chromatography-mass spectrometry (GC-MS) detectors are widely used detection instruments owing to their distinct advantages over other analytical techniques, including lower sample consumption, higher sensitivity, faster analysis speed, and simultaneous separation and analysis. Metabolomics is an important component of system physiology that concerns systematic studies of the metabolite spectrum in one or more biological systems, such as cells, tissues, organs, body fluids, and organisms. Unfortunately, conventional GC-MS detectors also feature low scan rates, high ion loss rates, and a narrow concentration detection range, which limit their applications in the field of metabolomics. Therefore, establishing a GC-MS-based metabolomic analysis method with wide coverage is of great importance. In this research, a widely-targeted metabolomics method based on GC-MS is proposed. This method combines the universality of untargeted metabolomics with the accuracy of targeted metabolomics to realize the qualitative and semi-quantitative detection of numerous metabolites. It does not require a self-built database and exhibits high sensitivity, good repeatability, and strong support for a wide range of metabolic substances. The proposed method was used to establish the relationship between the retention time of straight-chain fatty acid methyl esters (FAMEs) and their retention index (RI) in the FiehnLib database based on the metabolite information stored in this database. We obtained a linear relationship that could be described by the equation y=40878x-47530, r2=0.9999. We then calculated the retention times of metabolites in the FiehnLib database under the experimental conditions based on their RI. In this way, the effects of significant variations in peak retention times owing to differences in the chromatographic column, temperature, carrier gas flow rate, and so on can be avoided. The retention time of a substance fluctuates within a certain threshold because of variations in instrument performance, matrix interference, and other factors. As such, the retention time threshold of the substance must be determined. In this paper, the retention time threshold was set to 0.15 min to avoid instrument fluctuations. The optimal scan interval was optimized to 0.20 s (possible values=0.10, 0.15, 0.20, 0.25, and 0.30 s) because longer sampling periods can lead to spectral data loss and reductions in the resolution of adjacent chromatographic peaks, whereas shorter sampling periods can result in deterioration of the signal-to-noise ratio of the collected signals. The metabolite quantification ions were optimized to avoid the interference of quantification ion peak accumulation in the case of similar peak times, and a selected ion monitoring (SIM) method table was constructed for 611 metabolites, covering 65% of the metabolic pathways in the KEGG (Kyoto Encyclopedia of Genes and Genomes). The developed method covered 39 pathways, including glycolysis, the tricarboxylic acid cycle, purine metabolism, pyrimidine metabolism, amino acid metabolism, and biosynthesis. Compared with the full-scan untargeted GC-MS method, the widely-targeted GC-MS method demonstrated a 20%-30% increase in the number of metabolites detected, as well as a 15%-20% increase in signal-to-noise ratio. The results of stability tests showed that 84% of the intraday relative standard deviations (RSDs) of metabolite retention times were less than 2% and 91% of that were less than 3%; moreover, 54% of the interday RSDs of metabolite retention times were less than 2% and 76% of that were less than 3%. The detection and analysis results of common biological samples confirmed that the proposed method greatly improved the quantity and signal-to-noise ratio of the detected metabolites and is applicable to substances that are thermally stable, volatile, or volatile after derivation and have relative molecular masses lower than 600. Thus, the widely-targeted GC-MS method can expand the application scope of GC-MS in metabolomics.

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[基于气相色谱-质谱的广泛靶向代谢组学方法的发展]。
气相色谱-质谱(GC-MS)检测器由于其比其他分析技术具有更低的样品消耗、更高的灵敏度、更快的分析速度和同时分离分析等明显的优势而被广泛应用于检测仪器。代谢组学是系统生理学的一个重要组成部分,涉及对一个或多个生物系统(如细胞、组织、器官、体液和生物体)中代谢物谱的系统研究。遗憾的是,传统的GC-MS检测器还具有扫描速率低、离子损失率高、浓度检测范围窄等特点,限制了其在代谢组学领域的应用。因此,建立一种覆盖范围广、基于gc - ms的代谢组学分析方法具有重要意义。本研究提出了一种基于GC-MS的广泛靶向代谢组学方法。该方法结合了非靶向代谢组学的普适性和靶向代谢组学的准确性,实现了多种代谢物的定性和半定量检测。它不需要自建数据库,灵敏度高,重复性好,对广泛的代谢物质有很强的支持。基于FiehnLib数据库中存储的代谢物信息,采用该方法建立了直链脂肪酸甲酯(FAMEs)在FiehnLib数据库中的保留时间与其保留指数(RI)之间的关系。我们得到了一个线性关系,可以用方程y=40878x-47530, r2=0.9999来描述。然后,我们根据它们的RI计算了实验条件下代谢物在FiehnLib数据库中的保留时间。这样,就可以避免由于色谱柱、温度、载气流速等因素的不同而导致的峰保留时间的显著变化的影响。由于仪器性能、基质干扰和其他因素的变化,物质的保留时间在一定阈值内波动。因此,必须确定该物质的保留时间阈值。为了避免仪器波动,本文将保留时间阈值设置为0.15 min。优化的扫描间隔为0.20 s(可能值为0.10、0.15、0.20、0.25和0.30 s),因为较长的采样周期会导致光谱数据丢失和相邻色谱峰的分辨率降低,而较短的采样周期会导致采集信号的信噪比恶化。对代谢物定量离子进行优化,避免峰值时间相似时定量离子峰积累的干扰,构建611种代谢物的选择性离子监测(SIM)方法表,覆盖KEGG (Kyoto Encyclopedia of Genes and Genomes)中65%的代谢途径。所开发的方法涵盖了39个途径,包括糖酵解、三羧酸循环、嘌呤代谢、嘧啶代谢、氨基酸代谢和生物合成。与全扫描非靶向GC-MS方法相比,广泛靶向GC-MS方法检测到的代谢物数量增加了20%-30%,信噪比提高了15%-20%。稳定性试验结果表明,代谢物滞留时间的日内相对标准偏差(rsd) < 2%的占84%,< 3%的占91%;代谢物滞留时间的日间rsd < 2%的占54%,< 3%的占76%。普通生物样品的检测分析结果证实,所提方法大大提高了检测代谢物的数量和信噪比,适用于热稳定、易挥发或衍生后易挥发、相对分子质量低于600的物质。因此,广泛靶向的GC-MS方法可以扩大GC-MS在代谢组学中的应用范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
色谱
色谱 CHEMISTRY, ANALYTICAL-
CiteScore
1.30
自引率
42.90%
发文量
7198
期刊介绍: "Chinese Journal of Chromatography" mainly reports the basic research results of chromatography, important application results of chromatography and its interdisciplinary subjects and their progress, including the application of new methods, new technologies, and new instruments in various fields, the research and development of chromatography instruments and components, instrument analysis teaching research, etc. It is suitable for researchers engaged in chromatography basic and application technology research in scientific research institutes, master and doctoral students in chromatography and related disciplines, grassroots researchers in the field of analysis and testing, and relevant personnel in chromatography instrument development and operation units. The journal has columns such as special planning, focus, perspective, research express, research paper, monograph and review, micro review, technology and application, and teaching research.
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