Identification of key candidate biomarkers for severe influenza infection by integrated bioinformatical analysis and initial clinical validation.
Shuai LiuZhisheng HuangXiaoyan DengXiaohui ZouHui LiShengrui MuBin CaoPublished in: Journal of cellular and molecular medicine (2021)
One of the key barriers for early identification and intervention of severe influenza cases is a lack of reliable immunologic indicators. In this study, we utilized differentially expressed genes screening incorporating weighted gene co-expression network analysis in one eligible influenza GEO data set (GSE111368) to identify hub genes associated with clinical severity. A total of 10 genes (PBI, MMP8, TCN1, RETN, OLFM4, ELANE, LTF, LCN2, DEFA4 and HP) were identified. Gene set enrichment analysis (GSEA) for single hub gene revealed that these genes had a close association with antimicrobial response and neutrophils activity. To further evaluate these genes' ability for diagnosis/prognosis of disease developments, we adopted double validation with (a) another new independent data set (GSE101702); and (b) plasma samples collected from hospitalized influenza patients. We found that 10 hub genes presented highly correlation with disease severity. In particular, BPI and MMP8 encoding proteins in plasma achieved higher expression in severe and dead cases, which indicated an adverse disease development and suggested a frustrating prognosis. These findings provide new insight into severe influenza pathogenesis and identify two significant candidate genes that were superior to the conventional clinical indicators. These candidate genes or encoding proteins could be biomarker for clinical diagnosis and therapeutic targets for severe influenza infection.
Keyphrases
- bioinformatics analysis
- network analysis
- genome wide
- genome wide identification
- early onset
- genome wide analysis
- end stage renal disease
- copy number
- transcription factor
- staphylococcus aureus
- emergency department
- electronic health record
- chronic kidney disease
- machine learning
- ejection fraction
- prognostic factors
- magnetic resonance
- artificial intelligence
- single cell
- data analysis
- computed tomography
- long non coding rna
- clinical evaluation