| Literature DB >> 29164149 |
Guan Zhang1,2, Ping Yang1.
Abstract
It is well known spinal cord injury (SCI) can cause chronic neuropathic pain (NP); however its underlying molecular mechanisms remain elusive. This study aimed to disclose differentially expressed genes (DEGs) and activated signaling pathways in association with SCI induced chronic NP, in order to identify its diagnostic and therapeutic targets. Microarray dataset GSE5296 has been downloaded from Gene Expression Omnibus (GEO) database. Significant analysis of microarray (SAM), Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment analysis, and pathway network analysis have been used to compare changes of DEGs and signaling pathways between the SCI and sham-injury group. As a result, DEGs analysis showed there were 592 DEGs with significantly altered expression; among them Ccl3 expression showed the highest upregulation which implicated its association with SCI induced chronic NP. Moreover, KEGG analysis found 209 pathways changed significantly; among them the most significantly activated one is MAPK signaling pathway, which is in line with KEGG analysis results. Our results show Ccl3 is highly associated with SCI induced chronic NP; as the exosomes with Ccl3 can be easily and efficiently detected in peripheral blood, Ccl3 may serve as a potential prognostic target for the diagnosis and treatment of SCI induced chronic NP.Entities:
Mesh:
Year: 2017 PMID: 29164149 PMCID: PMC5661087 DOI: 10.1155/2017/6423021
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
Figure 1The background and signal value for each sample. Red represents the average of the values of the sample signals for each sample. Blue represents the average of the background values for each sample. It demonstrated that, after excluding the influence of background, the signal values of the samples are still high (a). The horizontal axis represents the name of samples, while the vertical axis represents the expression value after log conversion. The black lines stand for median, which can be used to identify the degree of standardization after normalization of all samples by the package of R/Bioconductor. It can be seen that the black lines were almost on the same line (b). Sample correlation calculated by injury associated genes expression. Both the horizontal axis and the vertical axis represent the name of samples. The gene expression level from different sample was calculated with Pearson correlation. The closer the point is to the blue color, the greater the correlation is between the two samples. It shows that the correlations of all samples are basically very strong (c).
Top 10 significantly enriched up- and downregulated DEGs. The P values associated with each term are calculated by the Fisher Exact Test which represents the “degree of enrichment.” Q-value is the correction for multiple comparison by Benjamini and Hochberg [33]. The rank was according to the difference determined by d Score, fold change, and P value. The top ten largest differences in DEGs were screen with fold change > 2 and P < 0.05, and the maximum change of gene expression profile was upregulation of Ccl3.
| DEGs | Accession number | Signal of control | Signal of experimental |
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| Expression change | Rank |
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| Atf3 | NM_007498 | 6.12 | 9.18 | 10.10 | 8.37 | 2.20 | 0 | Up | 2 |
| Plek | NM_019549 | 6.67 | 9.20 | 8.10 | 5.77 | 2.20 | 0 | Up | 3 |
| Ctla2b | NM_001145801 | 5.45 | 7.90 | 8.08 | 5.45 | 2.20 | 0 | Up | 4 |
| Bcl2a1a | NM_007534 | 7.23 | 9.59 | 8.37 | 5.14 | 2.20 | 0 | Up | 5 |
| Ch25h | NM_009890 | 6.82 | 9.13 | 8.27 | 4.95 | 2.20 | 0 | Up | 6 |
| Plek | NM_019549 | 5.87 | 8.12 | 7.58 | 4.76 | 2.20 | 0 | Up | 7 |
| Tnfaip3 | NM_001166402 | 5.75 | 7.45 | 8.12 | 3.24 | 2.20 | 0 | Up | 8 |
| Tgif1 | NM_001164074 | 6.05 | 7.59 | 8.52 | 2.91 | 2.20 | 0 | Up | 9 |
| Gpr84 | NM_030720 | 6.31 | 7.83 | 7.92 | 2.86 | 2.20 | 0 | Up | 10 |
Figure 2Heatmap of gene expression differences by gene coexpression network analysis. Red dot indicates a differentially expressed gene with statistical significance. Red dots on the right indicate upregulation of gene expression, whereas red dots on the left indicate downregulation of gene expression. Blue indicates that there is no statistically significant difference in gene expression. The greater the ordinate value corresponding to the point is, the greater the difference in gene expression corresponding to that point is. Similarly, the greater the absolute value of the abscissa corresponding to the point is, the greater the difference in gene expression corresponding to that point is. Note that there are 592 statistically significant DEGs. The abscissa value of Ccl3 is 3.45, which means Ccl3 is the maximum change among all DEGs (a). Hierarchical clustering dendrogram of gene expression: the horizontal axis at the bottom represents the name of samples and the vertical axis on the left side represents the degree of gene clustering. The vertical axis on the right side represents the name of genes and the horizontal axis at the top represents the degree of clustering of samples. The red color stands for upregulated while the green color stands for downregulated. The darker red indicates a stronger upregulation in expression and the darker green indicates a stronger downregulation in expression. It can be concluded that the samples can be divided into clusters generally: the control group of sham-injury and the experimental group of injury (b). Moreover, the maximum change of gene expression profile was upregulation of Ccl3 (fold change = 10.91, P = 2.20E − 05) (b).
Top 10 GO terms and KEGG pathways enrichment results of DEGs. Significantly enriched GO terms and KEGG pathways with FDR < 0.05 were screened out. KEGG biological pathway enrichment analysis found that MAPK signaling pathway (enrichment score = 5.68, P = 3.38E − 74, and FDR = 8.78E − 72) was the most important one among the 209 pathways according to the enrichment score.
| Pathway ID | Pathway name | Enrichment score |
| FDR | Rank |
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| 1100 | Metabolic pathways | 2.73 | 3.22 | 4.19 | 2 |
| 4151 | PI3K-Akt signaling pathway | 4.31 | 8.74 | 7.57 | 3 |
| 5200 | Pathways in cancer | 4.36 | 2.57 | 1.67 | 4 |
| 4380 | Osteoclast differentiation | 6.77 | 2.20 | 1.14 | 5 |
| 5166 | HTLV-I infection | 4.54 | 6.12 | 2.65 | 6 |
| 4810 | Regulation of actin cytoskeleton | 5.06 | 3.43 | 1.28 | 7 |
| 4062 | Chemokine signaling pathway | 5.26 | 6.63 | 2.15 | 8 |
| 4510 | Focal adhesion | 5.11 | 2.31 | 6.68 | 9 |
| 5205 | Proteoglycans in cancer | 4.73 | 3.22 | 8.36 | 10 |
The top 10 altered pathways of network analyses. The outdegree and indegree represent, respectively, the number of upstream and downstream signal pathways. The degree represents the sum of the outdegree and indegree. In the top 10 altered pathway interaction nets with 111 nodes and 404 relationships between each other, MAPK signaling pathway was the most important one with the largest degree (outdegree = 5, indegree = 39, and degree = 44).
| Pathway ID | Pathway name | Outdegree | Indegree | Degree | Rank |
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| 4210 | Apoptosis | 3 | 29 | 32 | 2 |
| 5200 | Pathways in cancer | 28 | 0 | 28 | 3 |
| 4110 | Cell cycle | 3 | 20 | 23 | 4 |
| 10 | Glycolysis/gluconeogenesis | 5 | 15 | 20 | 5 |
| 4020 | Calcium signaling pathway | 5 | 14 | 19 | 6 |
| 4115 | p53 signaling pathway | 2 | 17 | 19 | 7 |
| 4310 | Wnt signaling pathway | 8 | 9 | 17 | 8 |
| 4060 | Cytokine-cytokine receptor interaction | 0 | 16 | 16 | 9 |
| 620 | Pyruvate metabolism | 7 | 8 | 15 | 10 |
Figure 3Pathway network after spinal cord injury. The more important the signaling pathway is, the larger the ball is. The importance was ranked according to the degree. MAPK signaling pathway was in the centre of the altered pathways interaction net.
Top 10 DEGs and pathways between sham-injury and injury in lesion centre at different time points. At different time points, top 10 DEGs and pathways between sham-injury and injury in lesion centre are showed, respectively.
| Time point | Top 10 DEGs between sham-injury and injury in lesion centre | Top 10 pathways between sham-injury and injury in lesion centre |
|---|---|---|
| 0.5 h | Npas4, Gm2083, Socs3, Socs3, Fosb, Ccl3, II6, Cyr61, Ptgs2, Myh1 | Pathways in cancer, MAPK signaling pathway, Transcriptional misregulation in cancer, focal adhesion, proteoglycans in cancer, PI3K-Akt signaling pathway, hippo signaling pathway, HTLV-I infection, regulation of actin cytoskeleton, metabolic pathways |
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| 4 h | Ucn2, Gm2083, Atf3, Hspa1b, Hspa1b, Ccl3, C330006P03Rik, Hspa1a, Hspa1b, Egr3 | Metabolic pathways, MAPK signaling pathway, pathways in cancer, PI3K-Akt signaling pathway, HTLV-I infection, focal adhesion, proteoglycans in cancer, osteoclast differentiation, transcriptional misregulation in cancer, olfactory transduction |
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| 24 h | Gm2083, Socs3, Chi3l3, Adam8, Gp49a, Hmox1, Serpine1, Tgm1, A130040M12Rik, Tnc | Metabolic pathways, MAPK signaling pathway, pathways in cancer, HTLV-I infection, PI3K-Akt signaling pathway, focal adhesion, protein processing in endoplasmic reticulum, regulation of actin cytoskeleton, Epstein-Barr virus infection, proteoglycans in cancer |
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| 3 d | Gpnmb, Cd36, Abca1, Cd5l, Cd36, Ccnb1, Thbs1, Rrm2, Rrm2, Sprr1a | Metabolic pathways, HTLV-I infection, pathways in cancer, focal adhesion, regulation of actin cytoskeleton, PI3K-Akt signaling pathway, proteoglycans in cancer, MAPK signaling pathway, lysosome, osteoclast differentiation |
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| 7 d | Gpnmb, Gp49a, Cd36, Cd36, Ms4a7, Cd5l, C3ar1, Clec7a, Cd68, Atp6v0d2 | Focal adhesion, PI3K-Akt signaling pathway, metabolic pathways, pathways in cancer, proteoglycans in cancer, MAPK signaling pathway, regulation of actin cytoskeleton, osteoclast differentiation, HTLV-I infection, tuberculosis |
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| 28 d | Gpnmb, Clec7a, Cst7, Gp49a, Lgals3, Cd68, C3ar1, Ms4a7, Sprr1a, Cd48 | Metabolic pathways, MAPK signaling pathway, pathways in cancer, HTLV-I infection, focal adhesion, proteoglycans in cancer, PI3K-Akt signaling pathway, regulation of actin cytoskeleton, chemokine signaling pathway, phagosome |
Top 10 DEGs and pathways between sham-injury and injury in different sections. By processing data from all time points in each section, top 10 DEGs and pathways between sham-injury and injury are showed, respectively.
| Section | Top 10 DEGs between sham-injury and injury | Top 10 pathways between sham-injury and injury |
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| rostral regions | Ccl3, Plek, Slc15a3, Bcl2a1a, Plek, Tlr2, Ccl4, Clec7a, Plek, Palld | Osteoclast differentiation, cytokine-cytokine receptor interaction, PI3K-Akt signaling pathway, phagosome, Chagas disease (American trypanosomiasis), leishmaniasis, toll-like receptor signaling pathway, chemokine signaling pathway, tuberculosis, transcriptional misregulation in cancer |
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| lesion centre | Ccl3, Atf3, Plek, Ctla2b, Bcl2a1a, Ch25h, Plek, Tnfaip3, Tgif1, Gpr84 | MAPK signaling pathway, metabolic pathways, PI3K-Akt signaling pathway, pathways in cancer, osteoclast differentiation, HTLV-I infection, regulation of actin cytoskeleton, chemokine signaling pathway, Focal adhesion, proteoglycans in cancer |
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| caudal regions | Atf3, Tlr2, Irgm1, Trim30d, S1pr3, Bcl2a1a, Slc45a3, Plek, Trim30a, Zfp36l1 | Tuberculosis, phagosome, |