| Literature DB >> 27510991 |
Marpe Bam1, Xiaoming Yang1,2, Elizabeth E Zumbrun1, Yin Zhong1, Juhua Zhou1, Jay P Ginsberg2, Quinne Leyden2, Jiajia Zhang3, Prakash S Nagarkatti1, Mitzi Nagarkatti1,2.
Abstract
Post-traumatic stress disorder patients experience chronic systemic inflammation. However, the molecular pathways involved and mechanisms regulating the expression of genes involved in inflammatory pathways in PTSD are reported inadequately. Through RNA sequencing and miRNA microarray, we identified 326 genes and 190 miRNAs that were significantly different in their expression levels in the PBMCs of PTSD patients. Expression pairing of the differentially expressed genes and miRNAs indicated an inverse relationship in their expression. Functional analysis of the differentially expressed genes indicated their involvement in the canonical pathways specific to immune system biology. DNA methylation analysis of differentially expressed genes also showed a gradual trend towards differences between control and PTSD patients, again indicating a possible role of this epigenetic mechanism in PTSD inflammation. Overall, combining data from the three techniques provided a holistic view of several pathways in which the differentially expressed genes were impacted through epigenetic mechanisms, in PTSD. Thus, analysis combining data from RNA-Seq, miRNA array and DNA methylation, can provide key evidence about dysregulated pathways and the controlling mechanism in PTSD. Most importantly, the present study provides further evidence that inflammation in PTSD could be epigenetically regulated.Entities:
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Year: 2016 PMID: 27510991 PMCID: PMC4980621 DOI: 10.1038/srep31209
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Demographics and clinical history of the PTSD patients included for the microarray and RNA-Seq analysis.
| For miRNA microarray analysis | |||
|---|---|---|---|
| Parameters | Control (n = 4) | Patient (n = 8) | P-value |
| Age | 40.5 (4.8) | 37.2 (5.3) | 0.323 |
| Race | |||
| AA | 2 (0.167) | 3 (0.250) | |
| CA | 2 (0.167) | 4 (0.333) | |
| Hisp | 0 (0.000) | 1 (0.083) | 0.571 |
| Depression score | 17 (4.3) | 30.4 (9.6) | 0.008 |
| Anxiety score | 14.8 (12.2) | 29 (11.6) | 0.102 |
| PTSD score | 43.5 (2.1) | 62.9 (12.1) | 0.002 |
| Age | 42.6 (6.3) | 38.4 (8.8) | 0.414 |
| Race | |||
| AA | 2 (0.2) | 4 (0.4) | |
| CA | 3 (0.3) | 1 (0.1) | 0.221 |
| Depression score | 14.4 (6.9) | 38.6 (11.5) | 0.006 |
| Anxiety score | 11.8 (12.4) | 41.2 (13.5) | 0.007 |
| PTSD score | 42.6 (2.7) | 70.8 (13) | 0.007 |
The mean (standard deviation) was used for continuous variable and the number (proportion) was used for categorical variable. Based on t test and Kruskal Wallis test, the age and race were comparable. Gender is not listed since all participants were males. The values indicate mean and the values in parentheses for age, depression, anxiety and PTSD score indicates standard deviation. Depression, anxiety and PTSD scores were determined as per PCL, CAPS and DSM criteria45051.
*African American; **Caucasian; ***Hispanic.
Figure 1RNA-seq and miRNA microarray reveal differentially expressed genes and miRNAs in PTSD.
(a) Heat map showing the expression level of genes after RNA-Seq analysis (C: Control and P: PTSD patient). Five individuals each in control and PTSD groups were included for RNA-Seq analysis. (b) Volcano plot showing genes with log2 fold change of at least 1 and p value of at least 0.005. We obtained 326 protein coding Ids and 40 non-coding RNA Ids with this criteria. (c) Heat map showing miRNA expression levels after microarray performed with total RNA from 4 controls and 8 PTSD patients. (d) The graph shows 190 miRNAs that were differentially expressed (p ≤ 0.05 and at least 1.5 linear fold change, 7 up- and 183 down-regulated). The positioning of the miRNAs on the graph is on the basis of their linear fold changes of the expression values.
Figure 2Expression of immune system related pathway genes are altered in PTSD.
(a) The top 20 canonical pathways selected for finding the genes common in more than one canonical pathway (overlap). Many of the differentially expressed genes are present in multiple pathways related to immune system biology. Table 2 has the list of genes from our dataset that are present in all the canonical pathways in the list. (b) T helper cell differentiation canonical pathway with genes differentially expressed in PTSD. Red and green colors indicate up- and downregulated genes, respectively, in PTSD. The pathway was generated by analyzing all the differentially expressed genes in IPA. (c) The differentially expressed genes were analyzed on Panther pathways analysis tool. The Panther pathway with highest number of genes (10) from the dataset was “inflammation mediated by chemokine and cytokine signaling pathway” (P00031).
The top 20 canonical pathways and the distribution of the differentially expressed genes obtained after analysis in IPA with the 326 genes.
| Canonical pathways | No. of genes | Gene symbol |
|---|---|---|
| Agranulocyte Adhesion and Diapedesis | 16 | |
| Granulocyte Adhesion and Diapedesis | 15 | |
| Dendritic Cell Maturation | 12 | |
| Role of Macrophages, Fibroblasts and Endothelial Cells in Rheumatoid Arthritis | 12 | |
| Communication between Innate and Adaptive Immune Cells | 10 | |
| Graft-versus-Host Disease Signaling | 7 | |
| Allograft Rejection Signaling | 7 | |
| Role of Pattern Recognition Receptors in Recognition of Bacteria and Viruses | 7 | |
| Autoimmune Thyroid Disease Signaling | 6 | |
| Role of IL-17A in Arthritis | 6 | |
| Crosstalk between Dendritic Cells and Natural Killer Cells | 6 | |
| Complement System | 5 | |
| Antigen Presentation Pathway | 5 | |
| Role of IL-17F in Allergic Inflammatory Airway Diseases | 5 | |
| OX40 Signaling Pathway | 5 | |
| Role of IL-17A in Psoriasis | 4 | |
| Airway Pathology in Chronic Obstructive Pulmonary Disease | 3 | |
| Granzyme A Signaling | 3 | |
| Differential Regulation of Cytokine Production in Macrophages and T Helper Cells by IL-17A and IL-17F | 3 | |
| α-tocopherol Degradation | 2 |
The ranking is based on the number of genes present in a pathway from our dataset. (In the gene list, italicized bold are up-regulated and rest downregulated).
The top gene ontologies obtained from DAVID after analysis with the 326 differentially expressed genes.
| Term | Genes (#) | Genes | Fold enrichment | |
|---|---|---|---|---|
| Immune system process | 40 | 3.80E-07 | CXCL1, AQP9, MMP9, CXCL3, HLA-DRB3, CXCL2, PGLYRP1, KLRK1, CXCR2, CXCL6, TLR6, CCL5, CCL4, HLA-DMA, HRH2, RASGRP4, HLA-DRB5, CLEC4D, NFIL3, FCGR3B, CR1, POU2AF1, C5AR1, JARID2, GZMA, NCF1, NCF4, IL1RN, CD1C, HLA-C, C4BPA, HLA-DQA1, OSM, C1QA, C1QB, JMJD6, AHSP, TREML2, PTAFR, HLA-DRA | 2.42 |
| Locomotion | 16 | 0.005325 | CXCL1, CMTM2, C5AR1, S100P, CXCL3, CXCL2, CXCR1, CXCR2, CXCL6, FPR2, CCL5, CCL4, PROK2, GAB2, PTAFR, MYH10 | 2.24 |
| Response to stimulus | 70 | 0.053086 | AQP9, PTGS2, F2RL1, PGLYRP1, CXCR1, CXCR2, TLR6, HLA-DMA, MMP25, DYSF, MAP1LC3A, CLEC4D, FAM129A, NFIL3, FCGR3B, POU2AF1, IRS2, C5AR1, GZMA, NCF1, NCF4, HLA-C, HLA-DQA1, EEPD1, OSM, C1QA, RETN, PROK2, C1QB, TNFAIP6, THBD, ADM, F5, GADD45G, CA4, PPP1R15B, PTAFR, KDM6B, HLA-DRA, ALPL, CXCL1, PRF1, HLA-DRB3, CXCL3, CXCL2, NINJ1, FPR2, CXCL6, CCL5, CCL4, TRIB1, MEFV, RASGRP4, HRH2, ENO2, HLA-DRB5, TAS2R40, COL18A1, MAFF, HIST1H2BC, CR1, CMTM2, S100P, IL1RN, CD1C, C4BPA, NFKBIL1, S100A12, ORM1, MYH10 | 1.21 |
| Multi-organism process | 18 | 0.058821 | MAFF, PRF1, HIST1H2BC, PTGS2, PGLYRP1, ANPEP, HLA-C, TEAD3, CCL5, TLR6, CCL4, UBN1, S100A12, TRIB1, THBD, ADM, PI3, PTAFR | 1.60 |
| Developmental process | 63 | 0.067362 | IER3, STEAP4, HKR1, PDLIM7, PTGS2, TUBB2A, MMP9, TBX21, ANPEP, HLA-DMA, WNT3, S1PR5, FRAT2, IFRD1, PHC2, IRS2, WNT10B, STX3, STMN3, DHRS9, MXD1, OSM, C1QB, PROK2, RETN, THBD, ADM, GADD45G, AHSP, RPS4Y1, CA4, ADAMTS1, NAIP, ALPL, CXCL1, MYL4, PLXNC1, ABHD5, NINJ1, CCL5, CCL4, EPHB1, B3GNT5, LRG1, RASGRP4, CRISPLD2, PPL, TGM3, NKX3-1, HIP1, COL18A1, MAFF, NFE2, JARID2, NTNG2, MICALCL, ISL2, SEMA6B, JMJD6, SVIL, CSRNP1, IGFBP3, MYH10 | 1.21 |
| Death | 18 | 0.09132 | PRF1, IER3, GZMA, BCL2A1, CXCR2, GZMB, GZMH, DAPK2, NFKBIL1, OSM, TNFRSF10C, JMJD6, CSRNP1, GADD45G, NAIP, NEK6, AATK, HIP1 | 1.50 |
The rankings are based on the p-values, starting with the lowest. All the names of the genes present in our dataset are provided.
Figure 3Expression pairing of the differentially expressed genes and miRNAs in PTSD.
On IPA, both the miRNA microarray and RNA-Seq datasets were uploaded for Target Filter and performed expression pairing. (a) Expression paired molecules were used to generate a gene-miRNA interactive network (Green molecules indicate down- and red indicate up-regulation. Solid lines indicate direct interaction between a miRNA and a gene; green- experimentally proven; brown- highly predicted; and blue- moderately predicted interaction). (b) After expression pairing, the resulting genes that were inversely expressed with respect to miRNA expression were extracted (64 molecules) and uploaded in IPA for Core analysis. The figure shows top 40 overlapping canonical pathways obtained for genes after expression pairing.
The top canonical pathways and the genes from our dataset after functional enrichment of the genes obtained from expression pairing in IPA.
| Canonical pathways | ↓Down | ↑Up | −log(p-value) | Genes | miR:RNA-seq Target Molecules (total # of significant mRNAs in pathway from RNA-seq) |
|---|---|---|---|---|---|
| α-tocopherol Degradation | 2/4 (50%) | 0/4 (0%) | 4.22E00 | 2 | CYP4F3, CYP4F2 |
| Allograft Rejection Signaling | 0/73 (0%) | 4/73 (5%) | 4.06E00 | 4 | HLA-DQA1, HLA-DRB3, PRF1, GZMB |
| Dendritic Cell Maturation | 0/176 0% | 5/176 (3%) | 3.61E00 | 5 | STAT4, HLA-DQA1, HLA-DRB3, PLCH2, CD1C |
| Graft-versus-Host Disease Signaling | 0/46 (0%) | 3/46 (7%) | 3.37E00 | 3 | HLA-DQA1, PRF1, GZMB |
| Autoimmune Thyroid Disease Signaling | 0/47 (0%) | 3/47 (6%) | 3.34E00 | 3 | HLA-DQA1, PRF1,GZMB |
| Granzyme B Signaling | 0/16 (0%) | 2/16 (13%) | 2.93E00 | 2 | PRF1, GZMB |
| T Helper Cell Differentiation | 0/69 (0%) | 3/69 (4%) | 2.86E00 | 3 | STAT4, HLA-DQA1, TBX21 |
| Basal Cell Carcinoma Signaling | 0/72 (0%) | 3/72 (4%) | 2.8E00 | 3 | WNT3, HKR1, WNT10B |
| Axonal Guidance Signaling | 0/432 (0% | 6/432 (1%) | 2.6E00 | 6 | WNT3, SEMA6B, PLCH2, HKR1, ADAMTS1, WNT10B |
| Role of MΦ, Fibroblasts and Endothelial Cells in RA | 1/297 (0%) | 4/297 (1%) | 2.59E00 | 5 | WNT3, F2RL1, CCL5, PLCH2, WNT10B |
| Tumoricidal Function of Hepatic Natural Killer Cells | 0/24 (0%) | 2/24 (8%) | 2.58E00 | 2 | PRF1, GZMB |
| Communication between Innate and Adaptive Immune Cells | 0/91 (0%) | 3/91 (3%) | 2.51E00 | 3 | CD8A, CCL5, HLA-DRB3 |
| Cytotoxic T Lymphocyte-mediated Apoptosis of Target Cells | 0/32 (0%) | 2/32 (6%) | 2.33E00 | 2 | PRF1, GZMB |
| Type I Diabetes Mellitus Signaling | 0/108 0% | 3/108 (3%) | 2.3E00 | 3 | HLA-DQA1, PRF1, GZMB |
| Antigen Presentation Pathway | 0/37 (0%) | 2/37 (5%) | 2.21E00 | 2 | HLA-DQA1, HLA-DRB3 |
| Complement System | 0/37 (0%) | 2/37 (5%) | 2.21E00 | 2 | C1QB, C1QA |
| Choline Degradation I | 0/2 (0%) | 1/2 (50%) | 2.2E00 | 1 | CHDH |
| Role of Pattern Recognition Receptors in Recognition of Bacteria and Viruses | 0/125 (0%) | 3/125 (2%) | 2.13E00 | 3 | CCL5, C1QB, C1QA |
| Human Embryonic Stem Cell Pluripotency | 0/133 (0% | 3/133 (2%) | 2.06E00 | 3 | WNT3, WNT10B, S1PR5 |
| Glioblastoma Multiforme Signaling | 0/146 0% | 3/146 (2%) | 1.95E00 | 3 | WNT3, PLCH2, WNT10B |
| Role of IL-17A in Arthritis | 0/54 (0%) | 2/54 (4%) | 1.89E00 | 2 | CCL5, CXCL3 (of 6) |
| Dopamine-DARPP32 Feedback in cAMP Signaling | 1/161 (1%) | 2/161 (1%) | 1.83E00 | 3 | KCNJ2, PPP1R14A, PLCH2 |
| Protein Citrullination | 1/5 (20%) | 0/5 (0%) | 1.8E00 | 1 | PADI2 |
| PCP pathway | 0/63 (0%) | 2/63 (3%) | 1.76E00 | 2 | WNT3, WNT10B |
| Granulocyte Adhesion and Diapedesis | 0/177 (0% | 3/177 (2%) | 1.72E00 | 3 | CCL5, CXCL3, CXCL2 |
| Agranulocyte Adhesion and Diapedesis | 0/189 (0% | 3/189 (2%) | 1.65E00 | 3 | CCL5, CXCL3, CXCL2 |
| OX40 Signaling Pathway | 0/76 (0%) | 2/76 (3%) | 1.61E00 | 2 | HLA-DQA1, HLA-DRB3 |
The rankings are based on the p values, starting with the lowest.
List of the top 10 up- and downregulated genes and the miRNAs from our dataset which are predicted or known to interact based on http://www.targetscan.org analysis.
| Target | log 2 fold change | miRs |
|---|---|---|
| FAM154B | 3.94 | hsa-miRs-150-5p, -92a-1-5p, 15b-5p, -223-3p, -151-3p |
| WNT3 | 2.83 | hsa-miRs-145-5p, -15b-5p, -149-3p, -23b-3p, -30c-2-3p, -30c-1-3p, -342-3p |
| SCGB3A1 | 2.54 | hsa-miRs-423-5p, -663a, -625-5p, -30e-3p |
| CXCL3 | 2.3 | hsa-mirs-425-5p, let-7c-3p, -532-3p, -584-5p, -1207-5p, -132-3p, -181-a-5p, -181b-5p, -181c-5p, -181d-5p, -150-5p, -194-5p |
| USP9Y | 2 | hsa-miRs-132-3p, -130b-3p, -130a-3p, -140-5p, -28-3p, -92b-3p, -92a-3p, -181a-5p, -181b-5p, -181c-5p, -181d-5p, -23a-3p |
| CHDH | 2 | hsa-miRs-455-3p, -342-5p, -1231, -140-3p, -28-5p, -29b-2-5p, -324-3p, -505-5p |
| NUAK1 | 1.96 | hsa-miRs-455-3p, -28-5p, -107, -145-5p, -182-5p, -192-5p, -339-5p, -345-5p, -505-5p, -532-5p, -625-5p, -629-3p, -744-5p, -940 |
| RPS4Y1 | 1.86 | hsa-miRs-140-3p, -150-5p, -324-3p |
| PPP1R14A | 1.83 | hsa-miRs-1207-5p, let-7a-3p, -let-7b-3p, let-7f, -1228-5p |
| IGLL5 | 1.78 | hsa-miRs-494-5p, -486-5p, --638, -143-3p, -193b-3p, -29b-1-5p, -331-3p, -486-5p |
*log 2 fold change after RNA-Seq analysis.
The top ten up- or downregulated genes from our dataset and the DNA methylation percentage of their corresponding CpG sites obtained from GSE21282 GEO datasets.
| Gene id | Gene | log 2FC, RNA-Seq | Control (%) | PTSD (%) |
|---|---|---|---|---|
| NM_015714 | G0S2 | −3.77249 | 10.7 | 11.5 |
| NM_033655 | CNTNAP3 | −3.45161 | 10.8 | 11.0 |
| NM_005581 | BCAM | −3.22104 | 4.0 | 5.7 |
| NM_000478 | ALPL | −3.15304 | 4.6 | 8.0 |
| NM_001124 | ADM | −2.71289 | 2.9 | 4.6 |
| NM_006018 | HCAR3 | −2.41909 | 87.8 | 89.4 |
| NM_005306 | FFAR2 | −2.41673 | 89.7 | 93.1 |
| NM_002155 | HSP70B | −2.38861 | 62.4 | 65.9 |
| NM_002993 | CXCL6 | −2.37093 | 8.3 | 11.1 |
| NM_002514 | NOV | −2.26268 | 2.5 | 3.0 |
| NM_003394 | WNT10B | 1.15246 | 3.6 | 2.8 |
| NM_001975 | ENO2 | 1.1608 | 25.6 | 23.0 |
| NM_004669 | CLIC3 | 1.18195 | 7.9 | 7.1 |
| NM_030760 | S1PR5 | 1.20954 | 6.4 | 5.8 |
| NM_006988 | ADAMTS1 | 1.46005 | 3.6 | 2.7 |
| NM_000598 | IGFBP3 | 1.68741 | 8.7 | 7.9 |
| NM_014840 | NUAK1 | 1.96002 | 15.5 | 12.1 |
| NM_018397 | CHDH | 2.00633 | 22.4 | 18.5 |
| NM_052863 | SCGB3A1 | 2.54427 | 56.1 | 52.2 |
| NM_030753 | WNT3 | 2.83619 | 3.3 | 2.1 |
*log2 fold change after RNA-Seq analysis.
Figure 4DNA methylation level has a trend that corroborates gene expression.
There is a clear trend showing higher DNA methylation and lowered mRNA levels and vice-versa for the corresponding gene. (a) DNA methylation levels of the select genes presented as box plot. On x-axis, the names of gene are provided and y-axis provides the average β- values of DNA methylation. The two bars corresponding to each gene represent the DNA methylation level for control followed by PTSD patient in a left to right direction. (b) Transcript levels (y-axis: log 2 fold change values) of genes, after RNA-Seq analysis, listed in Fig. 4a. (c) Real time PCR validation of differentially expressed genes. To validate the RNA-Seq results, qRT-PCR was performed for seven representative genes with cDNA prepared from total RNA obtained from PBMCs of 24 control and 24 PTSD patients. The values are relative abundance (RA) values after qRT-PCR. The table inside the figure provides log 2 fold change values of the respective genes after RNA-Seq analysis. The error bars indicate standard error.