PLX298760

GSE96962: Analysis of Combined Transcriptomes Identifies Gene Modules Differentially Responding to Pathogenic Stimulation in Vascular Smooth Muscle and Endothelial Cells

  • Organsim human
  • Type RNASEQ
  • Target gene
  • Project ARCHS4

Smooth muscle cells (SMCs) and endothelial cells (ECs) constitute vasculature media and endothelium, respectively. Current treatments for cardiovascular disease inhibit SMC hyperplasia but also damage the protective endothelial lining, predisposing patients to thrombosis. Therapeutics targeting SMCs without collateral damage to ECs are highly desirable. However, differential (SMCs versus ECs) disease-associated regulations remain poorly defined. We conducted RNA-seq experiments to investigate SMC-versus-EC differential transcriptomic dynamics, following treatment of human primary SMCs and ECs with TNF or IL-1, both established inducers of SMC hyperplasia and EC dysfunction. To analyze combined SMC/EC transcriptomes we developed customized algorithms. Induced by TNF or IL-1, 212 and 263 genes respectively showed greater up-regulation in SMCs than in ECs (SMC-enriched), while 140 and 204 genes showed greater up-regulation in ECs over SMCs (EC-enriched). Analysis of gene interaction networks identified 5 common hubs and 4 common bottlenecks in the two SMC-enriched gene sets, and 8 hubs and 3 bottlenecks shared in the EC-enriched gene sets. Significantly, four gene modules were formed with these hubs and bottlenecks. While the JUN module (including JUN, KLF5, HIF1A, CXCL8, FOSL1) and FYN module (FYN, JAK2, MAP2, PIK3R3, DAB2, ASAP2) were SMC-enriched, the SMAD3 (SMAD3, CDKN1A, TRAF1, BCL6, CEBPD, TRIB3, ANK3) and XPO1 (XPO1, ETS2, SSH2, NDRG1, GFPT2?) modules were EC-enriched. As these core subnetworks respond to pathogenic stimulation in a SMC-versus-EC differential manner, they may inform potential intervention targets for selective mitigation of SMC hyperplasia without endothelial damage. SOURCE: Lianwang Guo (guo@surgery.wisc.edu) - GUO University of Wisconsin at Madison

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