Plasma Metabolomic Signatures of Chronic Obstructive Pulmonary Disease and the Impact of Genetic Variants on Phenotype-Driven Modules.

Network and systems medicine Pub Date : 2020-12-01 Epub Date: 2020-12-31 DOI:10.1089/nsm.2020.0009
Lucas A Gillenwater, Katherine A Pratte, Brian D Hobbs, Michael H Cho, Yonghua Zhuang, Eitan Halper-Stromberg, Charmion Cruickshank-Quinn, Nichole Reisdorph, Irina Petrache, Wassim W Labaki, Wanda K O'Neal, Victor E Ortega, Dean P Jones, Karan Uppal, Sean Jacobson, Gregory Michelotti, Christine H Wendt, Katerina J Kechris, Russell P Bowler
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Abstract

Background: Small studies have recently suggested that there are specific plasma metabolic signatures in chronic obstructive pulmonary disease (COPD), but there have been no large comprehensive study of metabolomic signatures in COPD that also integrate genetic variants. Materials and Methods: Fresh frozen plasma from 957 non-Hispanic white subjects in COPDGene was used to quantify 995 metabolites with Metabolon's global metabolomics platform. Metabolite associations with five COPD phenotypes (chronic bronchitis, exacerbation frequency, percent emphysema, post-bronchodilator forced expiratory volume at one second [FEV1]/forced vital capacity [FVC], and FEV1 percent predicted) were assessed. A metabolome-wide association study was performed to find genetic associations with metabolite levels. Significantly associated single-nucleotide polymorphisms were tested for replication with independent metabolomic platforms and independent cohorts. COPD phenotype-driven modules were identified in network analysis integrated with genetic associations to assess gene-metabolite-phenotype interactions. Results: Of metabolites tested, 147 (14.8%) were significantly associated with at least 1 COPD phenotype. Associations with airflow obstruction were enriched for diacylglycerols and branched chain amino acids. Genetic associations were observed with 109 (11%) metabolites, 72 (66%) of which replicated in an independent cohort. For 20 metabolites, more than 20% of variance was explained by genetics. A sparse network of COPD phenotype-driven modules was identified, often containing metabolites missed in previous testing. Of the 26 COPD phenotype-driven modules, 6 contained metabolites with significant met-QTLs, although little module variance was explained by genetics. Conclusion: A dysregulation of systemic metabolism was predominantly found in COPD phenotypes characterized by airflow obstruction, where we identified robust heritable effects on individual metabolite abundances. However, network analysis, which increased the statistical power to detect associations missed previously in classic regression analyses, revealed that the genetic influence on COPD phenotype-driven metabolomic modules was modest when compared with clinical and environmental factors.

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慢性阻塞性肺病的血浆代谢组特征以及基因变异对表型驱动模块的影响。
背景:最近的一些小规模研究表明,慢性阻塞性肺病(COPD)存在特定的血浆代谢特征,但目前还没有对慢性阻塞性肺病的代谢组特征进行大规模的综合研究,也没有整合基因变异。材料与方法:使用 Metabolon 全球代谢组学平台对 COPDGene 中 957 名非西班牙裔白人受试者的新鲜冷冻血浆中的 995 种代谢物进行量化。评估了代谢物与五种慢性阻塞性肺病表型(慢性支气管炎、恶化频率、肺气肿百分比、支气管扩张剂后1秒用力呼气容积[FEV1]/用力生命容量[FVC]和FEV1预测百分比)的关联。为了找到与代谢物水平相关的基因,进行了一项全代谢组关联研究。通过独立的代谢组学平台和独立的队列对显著相关的单核苷酸多态性进行了重复性测试。在网络分析中确定了慢性阻塞性肺病表型驱动的模块,并将其与遗传关联整合在一起,以评估基因-代谢组-表型之间的相互作用。结果:在检测的代谢物中,有 147 个代谢物(14.8%)与至少一种慢性阻塞性肺病表型有显著关联。二酰甘油和支链氨基酸与气流阻塞的相关性较高。109种(11%)代谢物存在遗传关联,其中72种(66%)在独立队列中重复。在 20 种代谢物中,遗传学解释了 20% 以上的变异。研究发现了一个由慢性阻塞性肺病表型驱动的稀疏模块网络,其中往往包含之前检测中遗漏的代谢物。在 26 个慢性阻塞性肺病表型驱动的模块中,有 6 个模块包含了具有显著元-QTLs 的代谢物,但遗传学几乎不能解释模块的变异。结论在以气流阻塞为特征的慢性阻塞性肺病表型中主要发现了全身代谢失调,我们在这些表型中发现了对单个代谢物丰度的强大遗传效应。然而,通过网络分析,我们发现与临床和环境因素相比,遗传对慢性阻塞性肺病表型驱动的代谢组学模块的影响不大。
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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