| Literature DB >> 34163213 |
Zuoxiang Wang1,2, Mingyang Zhang1,2, Yinan Xu1,2, Yiyu Gu1,2, Yumeng Song1,2, Tingbo Jiang1.
Abstract
BACKGROUND: Heart failure (HF) is a rapidly growing public health problem, and its two main etiological types are non-ischemic heart failure (NIHF) and ischemic heart failure (IHF). However, the independent and common mechanisms of NIHF and IHF have not been fully elucidated. Here, bioinformatic analysis was used to characterize the difference and independent pathways for IHF and NIHF, and more importantly, to unearth the common potential markers and therapeutic targets in IHF and NIHF.Entities:
Keywords: bioinformatical analysis; differentially expressed genes; heart failure; hub genes; ischemic heart failure; non-ischemic heart failure
Year: 2021 PMID: 34163213 PMCID: PMC8214211 DOI: 10.2147/PGPM.S313621
Source DB: PubMed Journal: Pharmgenomics Pers Med ISSN: 1178-7066
Figure 1Flow diagram of the study design.
Figure 2Identification of gene expression profiles in the two datasets. (A) Volcano plot of NIHF microarray data. (B) Volcano plot of IHF microarray data. (C) Venn diagram of the 93 communal upregulated DEGs between NIHF and IHF. (D) Venn diagram of the 92 communal downregulated DEGs between NIHF and IHF.
The GO Enrichment Analysis of DEGs2 and DEGs3 (Top 4 Terms According to p.adjust)
| DEGs | Ontology | ID | Description | Counts | P-value |
|---|---|---|---|---|---|
| DEGs2 | BP | GO:1902895 | Positive regulation of pri-miRNA | 9 | 1.00E-05 |
| GO:0006865 | Transcription from RNA polymerase II promoter amino acid transport | 11 | 2.46E-05 | ||
| GO:0008360 | Regulation of cell shape | 22 | 7.99E-05 | ||
| GO:0050900 | Leukocyte migration | 20 | 0.000103362 | ||
| CC | GO:0070062 | Extracellular exosome | 221 | 5.37E-07 | |
| GO:0031012 | Extracellular matrix | 38 | 7.68E-06 | ||
| GO:0005925 | Focal adhesion | 44 | 3.64E-05 | ||
| GO:0005829 | Cytosol | 237 | 1.72E-04 | ||
| MF | GO:0030169 | Low-density lipoprotein particle binding | 6 | 0.001280536 | |
| GO:0015171 | Amino acid transmembrane transporter activity | 10 | 0.001473392 | ||
| GO:0050786 | RAGE receptor binding | 5 | 0.002823533 | ||
| GO:0001948 | Glycoprotein binding | 10 | 0.013472827 | ||
| DEGs3 | BP | GO:0006955 | Immune response | 113 | 6.15E-19 |
| GO:0002250 | Adaptive immune response | 53 | 1.50E-14 | ||
| GO:0050776 | Regulation of immune response | 55 | 4.16E-12 | ||
| GO:0045087 | Innate immune response | 93 | 7.36E-10 | ||
| CC | GO:0009897 | External side of plasma membrane | 64 | 1.01E-13 | |
| GO:0042101 | T cell receptor complex | 15 | 7.68E-11 | ||
| GO:0005887 | Integral component of plasma membrane | 221 | 4.77E-08 | ||
| GO:0005886 | Plasma membrane | 545 | 4.96E-07 | ||
| MF | GO:0004872 | Receptor activity | 56 | 2.57E-09 | |
| GO:0004715 | Non-membrane spanning protein | 18 | 4.02E-06 | ||
| GO:0005515 | Tyrosine kinase activity protein binding | 1057 | 3.21E-05 | ||
| GO:0005102 | Receptor binding | 64 | 8.95E-05 |
Figure 3Based on database STRING and Cytoscape software, PPI networks of the DEGs were constructed. The pink point represents upregulated genes, and purple point represents downregulated genes.
Figure 4(A) Top modules from the protein–protein interaction network. (B) The biological process in functional enrichment of the DEGs in Modules was performed using the online biological tool DAVID between HF and T2DM with P-value and (C) gene count. (D) The pathway analysis of the DEGs in Modules by KOBAS 3.0. The abscissa represents the P-value, and the ordinate represents the terms. The size of the circle represents the number of genes involved, and the color represents the frequency of the genes involved in the term total genes.
The Top 15 Hub Genes Rank in cytoHubba
| BottleNeck | Closeness | DMNC | EPC | Stress |
|---|---|---|---|---|
| LRRK2 | LRRK2 | NOC2L | LRRK2 | LRRK2 |
| PARD3 | TLR3 | P2RY13 | CCL5 | RHOBTB1 |
| BCAR1 | CCL5 | P2RY14 | TLR3 | PARD3 |
| RHOBTB1 | RHOBTB1 | C5 | P2RY14 | BCAR1 |
| RRAD | TUBB4B | NOP16 | IFIT2 | NF2 |
| TLR3 | TUBB2A | RRP12 | C5 | TLR3 |
| NF2 | RRAD | BYSL | TUBB4B | WWC1 |
| CCL5 | CFL2 | PES1 | TUBB2A | NOP16 |
| WWC1 | IFIT2 | TUBB2A | P2RY13 | RRAD |
| NOP16 | BCAR1 | TUBB4B | CASP1 | CCL5 |
| C5 | DYNC2H1 | TLR3 | RRAD | PES1 |
| CFL2 | C5 | CCL5 | DYNC2H1 | RPL27A |
| CD59 | CASP1 | SLC5A6 | SAMD9L | C5 |
| TUBB4B | P2RY14 | SLC16A9 | RHOBTB1 | DYNC2H1 |
| BYSL | CTSK | XAF1 | CFL2 | CD59 |
Abbreviations: HF, heart failure; NIHF, non-ischemic heart failure; IHF, ischemic heart failure; DEGs, differentially expressed genes; GEO, Gene Expression Omnibus; PPI, protein–protein interaction; BP, biological processes; CC, cell component; MF, molecular function.
Figure 5Three hub genes were identified by overlapping the first 15 genes in the five classification methods of cytoHubba.
Figure 6Hub genes and their co-expression genes were analyzed using GeneMANIA.
Figure 7Based on the DGIdb predictions of the module genes, we obtained 14 drug–gene interaction pairs, including two hub genes (C5, TLR3) and 14 drugs. Yellow circle indicates the differentially expressed gene and blank square indicates the drug.
Figure 8mRNA-miRNA regulation network of hub genes was constructed by MiRwalk.