首页> 美国卫生研究院文献>G3: GenesGenomesGenetics >The Utility of Resolving Asthma Molecular Signatures Using Tissue-Specific Transcriptome Data
【2h】

The Utility of Resolving Asthma Molecular Signatures Using Tissue-Specific Transcriptome Data

机译:使用组织特异性转录组数据解决哮喘分子签名的效用

代理获取
本网站仅为用户提供外文OA文献查询和代理获取服务,本网站没有原文。下单后我们将采用程序或人工为您竭诚获取高质量的原文,但由于OA文献来源多样且变更频繁,仍可能出现获取不到、文献不完整或与标题不符等情况,如果获取不到我们将提供退款服务。请知悉。

摘要

An integrative analysis focused on multi-tissue transcriptomics has not been done for asthma. Tissue-specific DEGs remain undetected in many multi-tissue analyses, which influences identification of disease-relevant pathways and potential drug candidates. Transcriptome data from 609 cases and 196 controls, generated using airway epithelium, bronchial, nasal, airway macrophages, distal lung fibroblasts, proximal lung fibroblasts, CD4+ lymphocytes, CD8+ lymphocytes from whole blood and induced sputum samples, were retrieved from Gene Expression Omnibus (GEO). Differentially regulated asthma-relevant genes identified from each sample type were used to identify (a) tissue-specific and tissue–shared asthma pathways, (b) their connection to GWAS-identified disease genes to identify candidate tissue for functional studies, (c) to select surrogate sample for invasive tissues, and finally (d) to identify potential drug candidates via connectivity map analysis. We found that inter-tissue similarity in gene expression was more pronounced at pathway/functional level than at gene level with highest similarity between bronchial epithelial cells and lung fibroblasts, and lowest between airway epithelium and whole blood samples. Although public-domain gene expression data are limited by inadequately annotated per-sample demographic and clinical information which limited the analysis, our tissue-resolved analysis clearly demonstrated relative importance of unique and shared asthma pathways, At the pathway level, IL-1b signaling and ERK signaling were significant in many tissue types, while Insulin-like growth factor and TGF-beta signaling were relevant in only airway epithelial tissue. IL-12 (in macrophages) and Immunoglobulin signaling (in lymphocytes) and chemokines (in nasal epithelium) were the highest expressed pathways. Overall, the IL-1 signaling genes (inflammatory) were relevant in the airway compartment, while pro-Th2 genes including IL-13 and STAT6 were more relevant in fibroblasts, lymphocytes, macrophages and bronchial biopsies. These genes were also associated with asthma in the GWAS catalog. Support Vector Machine showed that DEGs based on macrophages and epithelial cells have the highest and lowest discriminatory accuracy, respectively. Drug (entinostat, BMS-345541) and genetic perturbagens (KLF6, BCL10, INFB1 and BAMBI) negatively connected to disease at multi-tissue level could potentially repurposed for treating asthma. Collectively, our study indicates that the DEGs, perturbagens and disease are connected differentially depending on tissue/cell types. While most of the existing literature describes asthma transcriptome data from individual sample types, the present work demonstrates the utility of multi-tissue transcriptome data. Future studies should focus on collecting transcriptomic data from multiple tissues, age and race groups, genetic background, disease subtypes and on the availability of better-annotated data in the public domain.
机译:哮喘尚未对聚集在多组织转录组织上的一体化分析。在许多多组织分析中,组织特异性的DEG仍未被影响,这会影响疾病相关途径和潜在药物候选者的鉴定。从基因表达综合症中检索来自609例和196例对照的转录组数据和196例对照。从基因表达综合症(Geo)检索来自全血和诱导痰样品的CD4 +淋巴细胞,CD4 +淋巴细胞。 )。从每个样品类型中鉴定的差异调节的哮喘相关基因用于鉴定(a)组织特异性和组织共享的哮喘途径,(b)它们与GWAS鉴定的疾病基因的连接,以鉴定功能性研究的候选组织(c)选择侵入式组织的替代样品,最后(d)通过连接图分析来识别潜在的药物候选物。我们发现基因表达中的组织间相似性在途径/功能水平上更加明显,而不是在支气管上皮细胞和肺成纤维细胞之间的最高相似性,以及气道上皮细胞和全血样品之间的最低相似性。虽然公共结构域基因表达数据受到限制分析的每个样本人口统计和临床信息的限制,但是我们的组织分辨分析明确表明了独特和共同的哮喘途径,在路径水平,IL-1B信号传导和ERK信号传导在许多组织类型中是显着的,而胰岛素样生长因子和TGF-BETA信号在仅在气道上皮组织中相关。 IL-12(在巨噬细胞中)和免疫球蛋白信号传导(淋巴细胞)和趋化因子(在鼻咽癌中)是最高的表达途径。总的来说,IL-1信号基因(炎症)在气道隔间中相关,而在内的PRO-TH2基因包括IL-13和Stat6在成纤维细胞,淋巴细胞,巨噬细胞和支气管活组织检查中更相关。这些基因也与GWAS目录中的哮喘有关。支持向量机显示,基于巨噬细胞和上皮细胞的DEG分别具有最高和最低的鉴别性精度。在多组织水平下对疾病负连接的药物(Entinostat,BMS-345541)和遗传性蠕动(KLF6,BCL10,INFB1和Bambi)可能会重新抑制治疗哮喘。一致,我们的研究表明,根据组织/细胞类型,患有次数,蠕动和疾病与差异差异。虽然大多数现有文献描述了来自个体样品类型的哮喘转录组数据,但本作者证明了多组织转录组数据的效用。未来的研究应专注于收集来自多种组织,年龄和种族群体,遗传背景,疾病亚型以及公共领域更好地注释数据的转发组数据。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
代理获取

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号