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Overcoming Sample Matrix Effect in Quantitative Blood Metabolomics Using Chemical Isotope Labeling Liquid Chromatography Mass Spectrometry

机译:使用化学同位素标记液相色谱质谱法克服定量血液代谢组学中的样品基质效应

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摘要

Blood is widely used for discovery metabolomics to search for disease biomarkers. However, blood sample matrix can have a profound effect on metabolome analysis, which can impose an undesirable restriction on the type of blood collection tubes that can be used for blood metabolomics. We investigated the effect of blood sample matrix 'on metabolome analysis using a high-coverage and quantitative metabolome profiling technique based on differential chemical isotope labeling (CIL) LC-MS. We used C-12-/C-13-dansylation LC:MS to perform relative quantification of the amine/phenol submetabolomes of four types of samples (i.e., serum, EDTA plasma, heparin plasma, and citrate plasma) collected from healthy individuals and compare their metabolomic results. From the analysis of 80 plasma and serum samples in experimental triplicate, we detected a total of 3651 metabolites with an average of 1818 metabolites per run (n = 240). The number of metabolites detected and the precision and accuracy of relative quantification were found to be independent of the sample type. Within each sample type, the metabolome data set could reveal biological variation (e.g., sex separation). Although the relative concentrations of some individual metabolites might be different in the four types of samples, for sex separation, all 66 significant metabolites with larger fold-changes (FC >= 2 and p < 0.05) found in at least one sample type could be found in the other types of samples with similar or somewhat reduced, but still significant, fold-changes. Our results indicate that CIL LC-MS could overcome the sample matrix effect, thereby greatly broadening the scope of blood metabolomics; any blood samples properly collected in routine clinical settings, including those in biobanks originally used for other purposes, can potentially be used for discovery metabolomics.
机译:血液广泛用于发现代谢组科以寻找疾病生物标志物。然而,血样基质可以对代谢物分析产生深远的影响,这可能对可用于血液代谢的血液收集管类型施加不希望的限制。我们研究了使用基于差分化学同位素标记(CIL)LC-MS的高覆盖和定量代谢分析技术对血样基质对代谢分析的影响。我们使用C-12- / C-13-丹曲酰化LC:MS,以进行从健康个体和来自健康个体的四种类型样品(即,血清,EDTA血浆,肝素等离子体和柠檬酸血浆)的相对定量比较他们的代谢物结果。根据实验三份的80血浆和血清样品的分析,我们检测到总共3651种代谢物,平均每次运行1818代谢物(n = 240)。发现检测到的代谢物数量和相对定量的精度和准确性与样品类型无关。在每个样本类型中,代谢物数据集可以揭示生物变异(例如性别分离)。尽管某种单独代谢物的相对浓度在四种类型的样品中可能是不同的,但对于性分离,所有66个具有较大折叠变化的显着代谢物(Fc> = 2和P <0.05)可以是至少一种样品类型在其他类型的样本中发现,具有相似或有点减少,但仍然显着,折叠变化。我们的结果表明,CIL LC-MS可以克服样品矩阵效应,从而大大拓宽了血液代谢组学的范围;在常规临床环境中适当收集的任何血液样本,包括最初用于其他目的的生物汉,都可以用于发现代谢组科。

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  • 来源
    《Analytical chemistry》 |2017年第17期|共8页
  • 作者单位

    Zhejiang Univ State Key Lab Hangzhou 310003 Zhejiang Peoples R China;

    Univ Alberta Dept Chem Edmonton AB T6G 2G2 Canada;

    Zhejiang Univ State Key Lab Hangzhou 310003 Zhejiang Peoples R China;

    Zhejiang Univ State Key Lab Hangzhou 310003 Zhejiang Peoples R China;

    Zhejiang Univ State Key Lab Hangzhou 310003 Zhejiang Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 分析化学;
  • 关键词

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