Channing Division of Network Medicine, Department of Medicine, Brigham and Women's Hospital and Harvard Medical School, Boston, MA.
Channing Division of Network Medicine, Department of Medicine, Brigham and Women's Hospital and Harvard Medical School, Boston, MA; COPSAC, Copenhagen Prospective Studies on Asthma in Childhood, Herlev and Gentofte Hospital, University of Copenhagen, Copenhagen, Denmark.
Chest. 2018 Aug;154(2):335-348. doi: 10.1016/j.chest.2018.05.038. Epub 2018 Jun 13.
Single omic analyses have provided some insight into the basis of lung function in children with asthma, but the underlying biologic pathways are still poorly understood.
Weighted gene coexpression network analysis (WGCNA) was used to identify modules of coregulated gene transcripts and metabolites in blood among 325 children with asthma from the Genetic Epidemiology of Asthma in Costa Rica study. The biology of modules associated with lung function as measured by FEV, the FEV/FVC ratio, bronchodilator response, and airway responsiveness to methacholine was explored. Significantly correlated gene-metabolite module pairs were then identified, and their constituent features were analyzed for biologic pathway enrichments.
WGCNA clustered 25,060 gene probes and 8,185 metabolite features into eight gene modules and eight metabolite modules, where four and six, respectively, were associated with lung function (P ≤ .05). The gene modules were enriched for immune, mitotic, and metabolic processes and asthma-associated microRNA targets. The metabolite modules were enriched for lipid and amino acid metabolism. Integration of correlated gene-metabolite modules expanded the single omic findings, linking the FEV/FVC ratio with ORMDL3 and dysregulated lipid metabolism. This finding was replicated in an independent population.
The results of this hypothesis-generating study suggest a mechanistic basis for multiple asthma genes, including ORMDL3, and a role for lipid metabolism. They demonstrate that integrating multiple omic technologies may provide a more informative picture of asthmatic lung function biology than single omic analyses.
单项分析已经为儿童哮喘的肺功能基础提供了一些见解,但潜在的生物学途径仍知之甚少。
加权基因共表达网络分析(WGCNA)用于鉴定哥斯达黎加哮喘遗传流行病学研究中 325 名哮喘儿童血液中核心调控基因转录物和代谢物的模块。探索与 FEV、FEV/FVC 比、支气管扩张剂反应和气道对乙酰甲胆碱反应性等肺功能相关的模块的生物学。然后鉴定出显著相关的基因-代谢物模块对,并分析其组成特征的生物学途径富集。
WGCNA 将 25060 个基因探针和 8185 个代谢物特征聚类为 8 个基因模块和 8 个代谢物模块,其中分别有 4 个和 6 个与肺功能相关(P ≤.05)。基因模块富含免疫、有丝分裂和代谢过程以及与哮喘相关的 microRNA 靶标。代谢物模块富含脂质和氨基酸代谢。相关基因-代谢物模块的整合扩展了单一组学的发现,将 FEV/FVC 比与 ORMDL3 和失调的脂质代谢联系起来。这一发现在一个独立的人群中得到了复制。
这项假设生成研究的结果表明了包括 ORMDL3 在内的多个哮喘基因的机制基础,以及脂质代谢的作用。它们表明,整合多个组学技术可能比单一组学分析提供更全面的哮喘肺功能生物学信息。