Transcription Factor Co-expression Networks of Adipose RNA-Seq Data Reveal Regulatory Mechanisms of Obesity

被引:9
|
作者
Skinkyte-Juskiene, Ruta [1 ]
Kogelman, Lisette J. A. [1 ,2 ]
Kadarmideen, Haja N. [1 ,3 ]
机构
[1] Univ Copenhagen, Fac Hlth & Med Sci, Dept Vet & Anim Sci, Gronnegardsvej 7, DK-1870 Frederiksberg C, Denmark
[2] Rigshosp Glostrup, Glostrup Res Inst, Dept Neurol, Danish Headache Ctr, Nordre Ringvej 69, DK-2600 Glostrup, Denmark
[3] Tech Univ Denmark, Sect Syst Genom, Dept Bio & Hlth Informat, Bldg 208, DK-2800 Lyngby, Denmark
基金
欧盟第七框架计划;
关键词
Obesity; Transcription factors; WGCNA; Transcriptomics; RNA-Seq; Gene networks; VITAMIN-D-RECEPTOR; GENE POLYMORPHISMS; PROVIDES INSIGHTS; TISSUE; ASSOCIATION; DISEASE; BONE; MACROPHAGES; DYSFUNCTION; PROTEINS;
D O I
10.2174/1389202918666171005095059
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
Background: Transcription Factors (TFs) control actuation of genes in the genome and are key mediators of complex processes such as obesity. Master Regulators (MRs) are the genes at the top of a regulation hierarchy which regulate other genes. Objective: To elucidate clusters of highly co-expressed TFs (modules), involved pathways, highly interconnected TFs (hub-TFs) and MRs leading to obesity and leanness, using porcine model for human obesity. Methods: We identified 817 expressed TFs in RNA-Sequencing dataset representing extreme degrees of obesity (DO; lean, obese). We built a single Weighted Transcription Factor Co-expression Network (WTFCN) and TF sub-networks (based on the DO). Hub-TFs and MRs (using iRegulon) were identified in biologically relevant WTFCNs modules. Results: Single WTFCN detected the Red module significantly associated with DO (P < 0.03). This module was enriched for regulation processes in the immune system, e.g.: Immune system process (Padj = 2.50E-06) and metabolic lifestyle disorders, e.g. Circadian rhythm - mammal pathway (Padj = 2.33E-11). Detected MR, hub-TF SPII was involved in obesity, immunity and osteoporosis. Within the obese sub-network, the Red module suggested possible associations with immunity, e.g. TGF-beta signaling pathway (Padj = 1.73E-02) and osteoporosis, e.g. Osteoclast differentiation (Padj = 1.94E02). Within the lean sub-network, the Magenta module displayed associations with type 2 diabetes, obesity and osteoporosis e.g. Notch signaling pathway (Padj = 2.40E-03), osteoporosis e.g. hub-TF VDR (a prime candidate gene for osteoporosis). Conclusion: Our results provide insights into the regulatory network of TFs and biologically relevant hub TFs in obesity.
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页码:289 / 299
页数:11
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