对临床样本进行代谢组学和蛋白质组学联合分析的单样本工作流程。

IF 2.8 3区 医学 Q2 BIOCHEMICAL RESEARCH METHODS
Hagen M Gegner, Thomas Naake, Karim Aljakouch, Aurelien Dugourd, Georg Kliewer, Torsten Müller, Dustin Schilling, Marc A Schneider, Nina Kunze-Rohrbach, Thomas G P Grünewald, Rüdiger Hell, Julio Saez-Rodriguez, Wolfgang Huber, Gernot Poschet, Jeroen Krijgsveld
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引用次数: 0

摘要

了解蛋白质组和代谢组的相互作用有助于了解细胞调控和反应。为了能够从此类多组学分析中得出可靠的推论,我们引入并评估了一种从单一样本开始进行蛋白质组和代谢组联合分析的工作流程。具体来说,我们将已建立并分别优化的代谢组和蛋白质组分析方案(分别为 EtOH/MTBE 和 autoSP3)整合到一个统一的工作流程(称为 MTBE-SP3)中,并利用代谢组样品的蛋白质残留物可作为蛋白质组分析的直接输入这一事实。我们特别评估了在 MTBE-SP3 中进行蛋白质组分析的性能,结果表明无论事先提取了多少代谢物,蛋白质组图谱都是相同的。此外,MTBE-SP3 还结合了 EtOH/MTBE 和 autoSP3 的优点,分别用于半自动代谢物提取和全自动蛋白质组样品制备,从而提高了大规模研究的标准化和可扩展性。我们的研究表明,MTBE-SP3 可应用于各种生物基质(FFPE 组织、新鲜冷冻组织、血浆、血清和细胞),从而可在各种临床环境中实施。为了证明其适用性,我们将 MTBE-SP3 和 autoSP3 应用于肺腺癌队列,结果显示肿瘤和非肿瘤邻近组织的蛋白质组变化一致,与所用方法无关。与从相同样本中获得的代谢组学数据整合后发现,肿瘤组织中的线粒体功能障碍是由 OGDH、SDH 家族酶和 PKM 的失调引起的。总之,MTBE-SP3 可以方便可靠地平行测定同一样本中的蛋白质和代谢物,减少了样本变化和输入量。该工作流程尤其适用于样本有限的研究,并有可能加强代谢组和蛋白质组数据集的整合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A single-sample workflow for joint metabolomic and proteomic analysis of clinical specimens.

Understanding the interplay of the proteome and the metabolome helps to understand cellular regulation and response. To enable robust inferences from such multi-omics analyses, we introduced and evaluated a workflow for combined proteome and metabolome analysis starting from a single sample. Specifically, we integrated established and individually optimized protocols for metabolomic and proteomic profiling (EtOH/MTBE and autoSP3, respectively) into a unified workflow (termed MTBE-SP3), and took advantage of the fact that the protein residue of the metabolomic sample can be used as a direct input for proteome analysis. We particularly evaluated the performance of proteome analysis in MTBE-SP3, and demonstrated equivalence of proteome profiles irrespective of prior metabolite extraction. In addition, MTBE-SP3 combines the advantages of EtOH/MTBE and autoSP3 for semi-automated metabolite extraction and fully automated proteome sample preparation, respectively, thus advancing standardization and scalability for large-scale studies. We showed that MTBE-SP3 can be applied to various biological matrices (FFPE tissue, fresh-frozen tissue, plasma, serum and cells) to enable implementation in a variety of clinical settings. To demonstrate applicability, we applied MTBE-SP3 and autoSP3 to a lung adenocarcinoma cohort showing consistent proteomic alterations between tumour and non-tumour adjacent tissue independent of the method used. Integration with metabolomic data obtained from the same samples revealed mitochondrial dysfunction in tumour tissue through deregulation of OGDH, SDH family enzymes and PKM. In summary, MTBE-SP3 enables the facile and reliable parallel measurement of proteins and metabolites obtained from the same sample, benefiting from reduced sample variation and input amount. This workflow is particularly applicable for studies with limited sample availability and offers the potential to enhance the integration of metabolomic and proteomic datasets.

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来源期刊
Clinical proteomics
Clinical proteomics BIOCHEMICAL RESEARCH METHODS-
CiteScore
5.80
自引率
2.60%
发文量
37
审稿时长
17 weeks
期刊介绍: Clinical Proteomics encompasses all aspects of translational proteomics. Special emphasis will be placed on the application of proteomic technology to all aspects of clinical research and molecular medicine. The journal is committed to rapid scientific review and timely publication of submitted manuscripts.
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