| Literature DB >> 34233597 |
Yu Zeng1, Nanhong Li2, Zhenzhen Zheng1, Riken Chen3, Wang Liu1, Junfen Cheng1, Jinru Zhu1, Mingqing Zeng4, Min Peng1, Cheng Hong3.
Abstract
This study aimed to screen key biomarkers and investigate immune infiltration in pulmonary arterial hypertension (PAH) based on integrated bioinformatics analysis. The Gene Expression Omnibus (GEO) database was used to download three mRNA expression profiles comprising 91 PAH lung specimens and 49 normal lung specimens. Three mRNA expression datasets were combined, and differentially expressed genes (DEGs) were obtained. Gene ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) analyses and the protein-protein interaction (PPI) network of DEGs were performed using the STRING and DAVID databases, respectively. The diagnostic value of hub gene expression in PAH was also analyzed. Finally, the infiltration of immune cells in PAH was analyzed using the CIBERSORT algorithm. Total 182 DEGs (117 upregulated and 65 downregulated) were identified, and 15 hub genes were screened. These 15 hub genes were significantly associated with immune system functions such as myeloid leukocyte migration, neutrophil migration, cell chemotaxis, Toll-like receptor signaling pathway, and NF-κB signaling pathway. A 7-gene-based model was constructed and had a better diagnostic value in identifying PAH tissues compared with normal controls. The immune infiltration profiles of the PAH and normal control samples were significantly different. High proportions of resting NK cells, activated mast cells, monocytes, and neutrophils were found in PAH samples, while high proportions of resting T cells CD4 memory and Macrophages M1 cell were found in normal control samples. Functional enrichment of DEGs and immune infiltration analysis between PAH and normal control samples might help to understand the pathogenesis of PAH.Entities:
Keywords: Bioinformatics analysis; differentially expressed genes (degs); immune infiltration; immune system function; pulmonary arterial hypertension (pah)
Mesh:
Substances:
Year: 2021 PMID: 34233597 PMCID: PMC8806790 DOI: 10.1080/21655979.2021.1936816
Source DB: PubMed Journal: Bioengineered ISSN: 2165-5979 Impact factor: 3.269
Figure 1.The workflow of this study
Details of three GEO datasets
| Dataset | Tissue | Platform | PAH | Normal | Reference (PMID) |
|---|---|---|---|---|---|
| GSE15197 | lung | GPL6480 | 18 | 13 | 20,081,107 |
| GSE113439 | lung | GPL6244 | 15 | 11 | 30,963,672 |
| GSE117261 | lung | GPL6244 | 58 | 25 | 30,562,042 |
Note: GEO, Gene Expression Omnibus; PAH, Pulmonary arterial hypertension
Screening DEGs in PAH by integrated analysis of microarray
| DEGs | Gene names |
|---|---|
| Up-regulated | LTBP1, HBB, ACE2, SECISBP2L, PDE4D, ABCC9, PDE3A, TSHZ2, WIF1, DLG2, ITGB6, PDE7B, FREM1, EPHA4, MACC1, MALL, POSTN, IGF1, HIVEP2, N4BP2, ZFX, PLCB1, SFRP2, PI15, KLHL4, MACF1, PDE1A, PDE8B, ABCG2, ACADL, PREX2, CA1, PLCB4, IQGAP2, XAF1, ANKRD36B, FGFR2, INHBA, RGS5, TXLNG, ECM2, NT5E, ETV5, RASEF, LRRC36, VPS13A, FGD4, GEM, ANKRD36, MXRA5, CFH, ZNF521, CA2, C5, PAMR1, BMP6, GFRA1, RSPO3, THY1, PIEZO2, CCL21, DCLK1, ANKRD50, ALAS2, GBP5, SLC4A7, OGN, SULF1, NR1D2, SYNPO2, RGS1, ASPN, EML4, TFPI2, VCAM1, KIT, WEE1, ABCB1, HLTF, ANGPT2, RASGRP1, ITGB3, PSD3, CCL5, HMCN1, ITGA2, CCDC80, IL13 RA2, EPHA3, FABP4, HBD, CD5L, LRRC17, PHEX, GZMK, ENPP2, ESM1, PDGFD, TTN, MME, TFCP2L1, CD69, EYA4, NCKAP5, CXCL9, EDN1, SEMA3D, PKP2, IDO1, FAP, CPB2, ANKRD22, FMO5, SFRP4, PPBP, AREG, IGHA1 |
| Down-regulated | RNASE2, CSF3R, GIMAP6, ADRA1A, LILRA2, GLT1D1, ITGAM, MGAM, NKD1, TBX3, S100A9, S100A8, LILRB2, SOSTDC1, CD14, SAA2, NQO1, QPCT, TLR8, SLC9A3R2, KRT4, CXCR1, AQP9, AGTR1, GALNT13, SLCO4A1, RNF182, VNN2, S100A12, S100A3, BPIFA1, SULT1B1, USP9Y, ZFY, IL1R2, SLCO2A1, LRRC32, SAA1, BTNL9, TXNRD1, MNDA, UTY, MS4A15, CR1, EIF1AY, CDH13, LRRN4, CXCR2, PROK2, KDM5D, VIPR1, BPIFB1, CHL1, CA4, SERPINA3, CHIT1, LCN2, MMP8, FAM107A, DDX3Y, OLFM4, FCN3, RPS4Y1, PLA2G7, HMOX1 |
DEGs, differentially expressed genes; PAH, Pulmonary arterial hypertension.
Figure 2.Identification of DEGs from three mRNA expression datasets. (a) Volcano plot of three mRNA expression datasets after integrated as one via R software. log FC, log2 Fold Change. (b) Heatmap of differentially expressed gene expression. The heatmap was generated using pheatmap package in R. The expression profiles greater than the mean are colored in red and those below the mean are colored in green. PAH, Pulmonary arterial hypertension
GO analysis of DEGs in PAH
| Category | Term | Count | FDR | |
|---|---|---|---|---|
| BP | neutrophil chemotaxis | 10 | 1.94E-08 | 2.62E-05 |
| BP | inflammatory response | 19 | 5.34E-08 | 3.61E-05 |
| BP | positive regulation of smooth muscle cell proliferation | 8 | 2.28E-06 | 1.03E-03 |
| BP | cell chemotaxis | 8 | 3.94E-06 | 1.33E-03 |
| BP | positive regulation of inflammatory response | 8 | 8.61E-06 | 2.33E-03 |
| CC | extracellular space | 47 | 1.54E-14 | 2.73E-12 |
| CC | extracellular region | 48 | 2.31E-12 | 2.04E-10 |
| CC | cell surface | 19 | 4.97E-06 | 2.93E-04 |
| CC | extracellular exosome | 48 | 6.73E-05 | 2.98E-03 |
| CC | extracellular matrix | 11 | 5.97E-04 | 2.11E-02 |
| MF | integrin binding | 9 | 1.04E-05 | 2.26E-03 |
| MF | 3ʹ,5ʹ-cyclic-AMP phosphodiesterase activity | 5 | 1.21E-05 | 2.26E-03 |
| MF | calcium ion binding | 20 | 1.05E-04 | 1.31E-02 |
| MF | heparin binding | 8 | 1.15E-03 | 8.01E-02 |
| MF | growth factor activity | 8 | 1.24E-03 | 8.01E-02 |
Note: GO, Gene Ontology; DEGs, differentially expressed genes; PAH, Pulmonary arterial hypertension; BP, biological process; CC, cellular component; MF, molecule function; FDR, false discovery rate
Figure 3.Top 10 enriched GO terms and top 10 KEGG pathways of differentially expressed genes. (A‑C) GO term enrichment analysis for (a) biological process, (b) molecular function, (c) cellular component. (d) KEGG pathway analysis. Node size represents gene ratio; node color represents P-value. GO, gene ontology; KEGG, Kyoto Encyclopedia of Genes and Genomes
KEGG enrichment analysis of DEGs in PAH
| Category | Term | Count | FDR | |
|---|---|---|---|---|
| hsa04640 | Hematopoietic cell lineage | 9 | 1.33E-05 | 1.83E-03 |
| hsa04060 | African trypanosomiasis | 5 | 7.71E-04 | 5.28E-02 |
| hsa05418 | Rap1 signaling pathway | 9 | 5.22E-03 | 2.39E-01 |
| hsa04061 | Renin secretion | 5 | 8.86E-03 | 2.60E-01 |
| hsa05144 | Chemokine signaling pathway | 8 | 9.48E-03 | 2.60E-01 |
| hsa04614 | Cytokine-cytokine receptor interaction | 9 | 1.22E-02 | 2.78E-01 |
| hsa04657 | Hypertrophic cardiomyopathy | 5 | 1.74E-02 | 3.33E-01 |
| hsa04062 | Nitrogen metabolism | 3 | 1.94E-02 | 3.33E-01 |
| hsa04064 | Dilated cardiomyopathy | 5 | 2.22E-02 | 3.38E-01 |
| hsa05143 | Morphine addiction | 5 | 2.88E-02 | 3.91E-01 |
Note: KEGG, Kyoto Encyclopedia of Genes and Genomes; DEGs, differentially expressed genes; PAH, Pulmonary arterial hypertension; FDR, false discovery rate
Figure 4.Construction of the PPI network. (a) The nodes represent proteins, and the edges represent the interaction of proteins, while blue and red circles indicate downregulated and upregulated DEGs, respectively. (b) The only one module in the PPI network. The nodes represent proteins, and the edges represent the interaction of proteins, while blue and red circles indicate downregulated and upregulated DEGs, respectively
Figure 5.GO and KEGG analyses of module genes. (a) GO term enrichment analysis of module genes. (b) KEGG pathway analysis of module genes. Node size represents gene ratio; node color represents P-value. GO, gene ontology; KEGG, Kyoto Encyclopedia of Genes and Genomes
Figure 6.A model for predicting PAH. (a) LASSO model. (b) ROC curves analysis of training set. (c) ROC curves analysis of test set. AUC, area under the curve. PAH, Pulmonary arterial hypertension
Figure 7.The bar plot visualizing the relative percent of 22 immune cell in each sample. Different colors represent different types of immune cells
Figure 8.The difference of immune infiltration between PAH samples and normal control samples. Blue, normal controls group; Red, PAH group. PAH, Pulmonary arterial hypertension