Identification and Validation of Pathogenic Genes in Sepsis and Associated Diseases by Integrated Bioinformatics Approach.
Mohd Murshad AhmedAlmaz ZakiAlaa AlhazmiKhalaf F AlsharifHala Abubaker BagabirShafiul HaqueKailash MandaShaniya AhmadSyed Mansoor AliRomana IshratPublished in: Genes (2022)
Sepsis is a clinical syndrome with high mortality and morbidity rates. In sepsis, the abrupt release of cytokines by the innate immune system may cause multiorgan failure, leading to septic shock and associated complications. In the presence of a number of systemic disorders, such as sepsis, infections, diabetes, and systemic lupus erythematosus (SLE), cardiorenal syndrome (CRS) type 5 is defined by concomitant cardiac and renal dysfunctions Thus, our study suggests that certain mRNAs and unexplored pathways may pave a way to unravel critical therapeutic targets in three debilitating and interrelated illnesses, namely, sepsis, SLE, and CRS. Sepsis, SLE, and CRS are closely interrelated complex diseases likely sharing an overlapping pathogenesis caused by erroneous gene network activities. We sought to identify the shared gene networks and the key genes for sepsis, SLE, and CRS by completing an integrative analysis. Initially, 868 DEGs were identified in 16 GSE datasets. Based on degree centrality, 27 hub genes were revealed. The gProfiler webtool was used to perform functional annotations and enriched molecular pathway analyses. Finally, core hub genes ( EGR1, MMP9 , and CD44 ) were validated using RT-PCR analysis. Our comprehensive multiplex network approach to hub gene discovery is effective, as evidenced by the findings. This work provides a novel research path for a new research direction in multi-omics biological data analysis.
Keyphrases
- septic shock
- systemic lupus erythematosus
- bioinformatics analysis
- genome wide
- acute kidney injury
- genome wide identification
- intensive care unit
- disease activity
- data analysis
- genome wide analysis
- network analysis
- copy number
- immune response
- dna methylation
- type diabetes
- rheumatoid arthritis
- cardiovascular disease
- high throughput
- healthcare
- gene expression
- small molecule
- heart failure
- risk factors
- adipose tissue
- left ventricular
- metabolic syndrome
- case report
- social media
- skeletal muscle