通过核磁共振评估可重复的靶向代谢组学方案

IF 3.6 3区 化学 Q2 CHEMISTRY, ANALYTICAL
Analyst Pub Date : 2024-10-02 DOI:10.1039/D4AN01015A
Darcy Cochran, Panteleimon G. Takis, James L. Alexander, Benjamin H. Mullish, Nick Powell, Julian R. Marchesi and Robert Powers
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引用次数: 0

摘要

代谢组学旨在研究饮食、环境或疾病等变量对特定生物系统的下游影响。然而,样品制备、数据采集/处理方案的不一致导致了可重复性和准确性方面的问题。为了评估样品制备方法和数据分析平台对代谢物易感性的影响,我们开展了一项系统性研究。对 69 份临床代谢组学样本中的 25 种目标代谢物进行了评估,这些样本按照三种不同的方案制备:原样、超滤和蛋白沉淀。通过一维 1H 核磁共振 (NMR) 光谱对所得到的代谢谱进行了表征,并使用 Chenomx v8.3 和 SMolESY 软件包进行了分析。与过滤相比,蛋白质沉淀法提取代谢物的效率要高出 90%,这与之前报道的结果一致。此外,对数据处理软件的分析表明,Chenomx 批次拟合法高估了代谢物的浓度,该方法似乎只能确定相对折叠变化而非绝对定量。不过,辅助拟合方法提供了足够的指导,可以获得准确的结果,同时避免了耗时的全手工拟合方法。通过将我们的结果与之前的研究相结合,我们现在可以提供一份 5 种常见代谢物(2-羟丁酸(2-HB)、胆碱、二甲胺(DMA)、谷氨酸、乳酸盐)的清单,这些代谢物在报告的折叠变化和标准偏差方面存在很大差异,在将其注释为潜在生物标记物之前需要仔细考虑。我们的研究结果表明,样本制备和数据处理包对临床代谢组学研究的成功有着至关重要的影响。代谢组学界显然需要提高方法的标准化和统一化程度,以确保研究结果的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Evaluating protocols for reproducible targeted metabolomics by NMR†

Evaluating protocols for reproducible targeted metabolomics by NMR†

Metabolomics aims to study the downstream effects of variables like diet, environment, or disease on a given biological system. However, inconsistencies in sample preparation, data acquisition/processing protocols lead to reproducibility and accuracy concerns. A systematic study was conducted to assess how sample preparation methods and data analysis platforms affect metabolite susceptibility. A targeted panel of 25 metabolites was evaluated in 69 clinical metabolomics samples prepared following three different protocols: intact, ultrafiltration, and protein precipitation. The resulting metabolic profiles were characterized by 1D 1H nuclear magnetic resonance (NMR) spectroscopy and analyzed with Chenomx v8.3 and SMolESY software packages. Greater than 90% of the metabolites were extracted more efficiently using protein precipitation than filtration, which aligns with previously reported results. Additionally, analysis of data processing software suggests that metabolite concentrations were overestimated by Chenomx batch-fitting, which only appears reliable for determining relative fold changes rather than absolute quantification. However, an assisted-fit method provided sufficient guidance to achieve accurate results while avoiding a time-consuming fully manual-fitting approach. By combining our results with previous studies, we can now provide a list of 5 common metabolites [2-hydroxybutyrate (2-HB), choline, dimethylamine (DMA), glutamate, lactate] with a high degree of variability in reported fold changes and standard deviations that need careful consideration before being annotated as potential biomarkers. Our results show that sample preparation and data processing package critically impact clinical metabolomics study success. There is a clear need for an increased degree of standardization and harmonization of methods across the metabolomics community to ensure reliable outcomes.

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来源期刊
Analyst
Analyst 化学-分析化学
CiteScore
7.80
自引率
4.80%
发文量
636
审稿时长
1.9 months
期刊介绍: The home of premier fundamental discoveries, inventions and applications in the analytical and bioanalytical sciences
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