Integrated transcriptomic correlation network analysis identifies COPD molecular determinants
Academic Article
Publication Date:
2020
abstract:
Chronic obstructive pulmonary disease (COPD) is a complex and heterogeneous syndrome. Network-based
analysis implemented by SWIM software can be exploited to identify key molecular switches
- called "switch genes" - for the disease. Genes contributing to common biological processes or defining
given cell types are usually co-regulated and co-expressed, forming expression network modules.
Consistently, we found that the COPD correlation network built by SWIM consists of three wellcharacterized
modules: one populated by switch genes, all up-regulated in COPD cases and related
to the regulation of immune response, inflammatory response, and hypoxia (like TIMP1, HIF1A, SYK,
LY96, BLNK and PRDX4); one populated by well-recognized immune signature genes, all up-regulated
in COPD cases; one where the GWAS genes AGER and CAVIN1 are the most representative module
genes, both down-regulated in COPD cases. Interestingly, 70% of AGER negative interactors are switch
genes including PRDX4, whose activation strongly correlates with the activation of known COPD GWAS
interactors SERPINE2, CD79A, and POUF2AF1. These results suggest that SWIM analysis can identify
key network modules related to complex diseases like COPD.
Iris type:
01.01 Articolo in rivista
Keywords:
COMPUTATIONAL AND SYSTEMS BIOLOGY
List of contributors:
Fiscon, Giulia; Conte, Federica; Paci, Paola
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