Litcius/Paper detail

Identification of novel biomarkers in septic cardiomyopathy via integrated bioinformatics analysis and experimental validation

Feng Lü, Feng Hu, Bai‐Quan Qiu, Hong-Peng Zou, Jianjun Xu

2022Frontiers in Genetics19 citationsDOIOpen Access PDF

Abstract

Purpose: Septic cardiomyopathy (SCM) is an important world public health problem with high morbidity and mortality. It is necessary to identify SCM biomarkers at the genetic level to identify new therapeutic targets and strategies. Method: DEGs in SCM were identified by comprehensive bioinformatics analysis of microarray datasets (GSE53007 and GSE79962) downloaded from the GEO database. Subsequently, bioinformatics analysis was used to conduct an in-depth exploration of DEGs, including GO and KEGG pathway enrichment analysis, PPI network construction, and key gene identification. The top ten Hub genes were identified, and then the SCM model was constructed by treating HL-1 cells and AC16 cells with LPS, and these top ten Hub genes were examined using qPCR. Result: STAT3, SOCS3, CCL2, IL1R2, JUNB, S100A9, OSMR, ZFP36, and HAMP were significantly elevated in the established SCM cells model. Conclusion: After bioinformatics analysis and experimental verification, it was demonstrated that STAT3, SOCS3, CCL2, IL1R2, JUNB, S100A9, OSMR, ZFP36, and HAMP might play important roles in SCM.

Topics & Concepts

Computational biologyJUNBKEGGRELBMicroarray analysis techniquesIdentification (biology)BiologyGeneBioinformaticsTranscriptomeGene expressionGeneticsTranscription factorNFKB1BotanySignaling Pathways in DiseaseHeat shock proteins researchATP Synthase and ATPases Research