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代谢物水平的遗传影响:跨代谢组学平台的比较

Genetic Influences on Metabolite Levels: A Comparison across Metabolomic Platforms.

作者信息

Yet Idil, Menni Cristina, Shin So-Youn, Mangino Massimo, Soranzo Nicole, Adamski Jerzy, Suhre Karsten, Spector Tim D, Kastenmüller Gabi, Bell Jordana T

机构信息

Department of Twin Research and Genetic Epidemiology, King's College London, London, United Kingdom.

Department of Human Genetics, Wellcome Trust Sanger Institute, Hinxton, United Kingdom.

出版信息

PLoS One. 2016 Apr 13;11(4):e0153672. doi: 10.1371/journal.pone.0153672. eCollection 2016.

Abstract

Metabolomic profiling is a powerful approach to characterize human metabolism and help understand common disease risk. Although multiple high-throughput technologies have been developed to assay the human metabolome, no technique is capable of capturing the entire human metabolism. Large-scale metabolomics data are being generated in multiple cohorts, but the datasets are typically profiled using different metabolomics platforms. Here, we compared analyses across two of the most frequently used metabolomic platforms, Biocrates and Metabolon, with the aim of assessing how complimentary metabolite profiles are across platforms. We profiled serum samples from 1,001 twins using both targeted (Biocrates, n = 160 metabolites) and non-targeted (Metabolon, n = 488 metabolites) mass spectrometry platforms. We compared metabolite distributions and performed genome-wide association analyses to identify shared genetic influences on metabolites across platforms. Comparison of 43 metabolites named for the same compound on both platforms indicated strong positive correlations, with few exceptions. Genome-wide association scans with high-throughput metabolic profiles were performed for each dataset and identified genetic variants at 7 loci associated with 16 unique metabolites on both platforms. The 16 metabolites showed consistent genetic associations and appear to be robustly measured across platforms. These included both metabolites named for the same compound across platforms as well as unique metabolites, of which 2 (nonanoylcarnitine (C9) [Biocrates]/Unknown metabolite X-13431 [Metabolon] and PC aa C28:1 [Biocrates]/1-stearoylglycerol [Metabolon]) are likely to represent the same or related biochemical entities. The results demonstrate the complementary nature of both platforms, and can be informative for future studies of comparative and integrative metabolomics analyses in samples profiled on different platforms.

摘要

代谢组学分析是一种用于表征人类代谢并有助于理解常见疾病风险的强大方法。尽管已经开发了多种高通量技术来检测人类代谢组,但没有一种技术能够捕捉到整个人类代谢过程。多个队列正在生成大规模代谢组学数据,但这些数据集通常使用不同的代谢组学平台进行分析。在此,我们比较了两种最常用的代谢组学平台Biocrates和Metabolon的分析结果,目的是评估不同平台间代谢物谱的互补程度。我们使用靶向(Biocrates,检测160种代谢物)和非靶向(Metabolon,检测488种代谢物)质谱平台对1001对双胞胎的血清样本进行了分析。我们比较了代谢物分布,并进行了全基因组关联分析,以确定不同平台上代谢物的共同遗传影响。对两个平台上以相同化合物命名的43种代谢物进行比较,结果显示出强正相关性,仅有少数例外。对每个数据集进行了高通量代谢谱的全基因组关联扫描,在7个位点鉴定出与两个平台上16种独特代谢物相关的遗传变异。这16种代谢物显示出一致的遗传关联,并且似乎在不同平台上都能得到可靠的测量。这些代谢物包括在不同平台上以相同化合物命名的代谢物以及独特的代谢物,其中2种(壬酰肉碱(C9)[Biocrates]/未知代谢物X-13431[Metabolon]和PC aa C28:1[Biocrates]/1-硬脂酰甘油[Metabolon])可能代表相同或相关的生化实体。结果证明了两个平台的互补性,对于未来在不同平台上分析的样本进行比较和整合代谢组学研究具有参考价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cca3/4830611/bd0194b1191e/pone.0153672.g001.jpg

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