| Literature DB >> 35326437 |
Morteza Abyadeh1,2, Nahid Tofigh2, Saeedeh Hosseinian3, Mafruha Hasan4, Ardeshir Amirkhani5, Matthew J Fitzhenry5, Veer Gupta6, Nitin Chitranshi7, Ghasem H Salekdeh8, Paul A Haynes8,9, Vivek Gupta7, Koorosh Shahpasand2, Mehdi Mirzaei7.
Abstract
Alzheimer's disease (AD) is one of the most complicated progressive neurodegenerative brain disorders, affecting millions of people around the world. Ageing remains one of the strongest risk factors associated with the disease and the increasing trend of the ageing population globally has significantly increased the pressure on healthcare systems worldwide. The pathogenesis of AD is being extensively investigated, yet several unknown key components remain. Therefore, we aimed to extract new knowledge from existing data. Ten gene expression datasets from different brain regions including the hippocampus, cerebellum, entorhinal, frontal and temporal cortices of 820 AD cases and 626 healthy controls were analyzed using the robust rank aggregation (RRA) method. Our results returned 1713 robust differentially expressed genes (DEGs) between five brain regions of AD cases and healthy controls. Subsequent analysis revealed pathways that were altered in each brain region, of which the GABAergic synapse pathway and the retrograde endocannabinoid signaling pathway were shared between all AD affected brain regions except the cerebellum, which is relatively less sensitive to the effects of AD. Furthermore, we obtained common robust DEGs between these two pathways and predicted three miRNAs as potential candidates targeting these genes; hsa-mir-17-5p, hsa-mir-106a-5p and hsa-mir-373-3p. Three transcription factors (TFs) were also identified as the potential upstream regulators of the robust DEGs; ELK-1, GATA1 and GATA2. Our results provide the foundation for further research investigating the role of these pathways in AD pathogenesis, and potential application of these miRNAs and TFs as therapeutic and diagnostic targets.Entities:
Keywords: Alzheimer’s disease; GABAergic synapse pathway; differentially expressed genes; retrograde endocannabinoid signaling
Mesh:
Substances:
Year: 2022 PMID: 35326437 PMCID: PMC8946735 DOI: 10.3390/cells11060987
Source DB: PubMed Journal: Cells ISSN: 2073-4409 Impact factor: 6.600
Characteristics of the selected datasets based on the criteria of this study.
| Datasets | Country | Number of AD/CTR | Age (years) AD/CTR | Postmortem Interval (h) AD/CTR | Brain Region (s) | Reference |
|---|---|---|---|---|---|---|
| GSE118553 | UK | 52/27 | 82.9 ± 8.7/70.6 ± 15.9 | 39.9 ± 21.3/ | Cerebellum/Entorhinal/Frontal/Temporal | [ |
| GSE44768 | USA | 129/101 | - | - | Cerebellum | [ |
| GSE48350 | USA | 15/39 | 85.7 ± 6.3/64.8 ± 9.5 | - | Entorhinal/Frontal/Hippocampus | [ |
| GSE5281 | USA | 33/14 | 79.9 ± 6.9/79.8 ± 9.1 | 2.5/2.5 | Entorhinal/Frontal/Temporal/Hippocampus | [ |
| GSE33000 | USA | 310/157 | 80.6 ± 9.0/63.5 ± 9.9 | 13.7 ± 7.4/22.4 ± 5.8 | Frontal | [ |
| GSE44770 | USA | 129/101 | - | - | Frontal | [ |
| GSE36980 | Japan | 26/62 | 83.0 ± 5.7 | - | Frontal/Temporal/Hippocampus | [ |
| GSE122063 | USA | 12/11 | 80.9 ± 7.4/78.6 ± 8.5 | 8.0 ± 4.0/ | Frontal/Temporal | [ |
| GSE132903 | USA | 97/98 | 85.02 ± 6.75/84.98 ± 6.90 | - | Temporal | [ |
| GSE29378 | USA | 17/16 | 77.3 ± 9.1/81.7 ± 6.9 | 11.2 ± 6.3/10.8 ± 6.8 | Hippocampus | [ |
Figure 1(A) Number of down and up-regulated robust genes in each brain region; (B) upset plot indicates the overlap of robust differentially expressed genes with either increased or decreased abundance in different brain regions; DEGs, differentially expressed genes; CB, cerebellum; FC, frontal cortex; HPC, hippocampus; EC, entorhinal cortex; TC, temporal cortex.
The top three enriched pathways by robust DEGs in each brain region, determined using Enrichr and KEGG.
| Brain Region | Pathway | Alteration | Adjusted | Odd Ratio | Combined Score | Genes | |
|---|---|---|---|---|---|---|---|
| Cerebellum | Mineral absorption | Up-regulated | 0.000005926 | 0.0007467 | 22.29 | 268.27 |
|
| IL-17 signaling pathway | Up-regulated | 0.00005312 | 0.003347 | 13.75 | 135.34 |
| |
| NF-kappa B signaling pathway | Up-regulated | 0.01023 | 0.3936 | 7.09 | 32.49 |
| |
| Frontal cortex | Neuroactive ligand-receptor interaction | Down-regulated | 0.000001048 | 0.0002148 | 3.50 | 48.19 |
|
| GABAergic synapse | Down-regulated | 0.000002641 | 0.0002252 | 6.71 | 86.16 |
| |
| Complement and coagulation cascades | Up-regulated | 8.435 × 10−15 | 1.839 × 10−12 | 17.28 | 560.01 |
| |
| Hippocampus | Bacterial invasion of epithelial cells | Down-regulated | 0.0003395 | 0.01724 | 13.26 | 105.91 |
|
| Synaptic vesicle cycle | Down-regulated | 0.0003567 | 0.01724 | 13.08 | 103.83 |
| |
| Morphine addiction | Down-regulated | 0.0006406 | 0.01724 | 11.12 | 81.74 |
| |
| Entorhinal cortex | Morphine addiction | Down-regulated | 0.00008088 | 0.009868 | 12.52 | 118.00 |
|
| Gap junction | Down-regulated | 0.0008877 | 0.02926 | 10.15 | 71.31 |
| |
| GABAergic synapse | Down-regulated | 0.0009261 | 0.02926 | 10.03 | 70.04 |
| |
| Temporal cortex | GABAergic synapse | Down-regulated | 4.244 × 10−10 | 9.295 × 10−8 | 12.30 | 265.54 |
|
| Nicotine addiction | Down-regulated | 4.089 × 10−9 | 4.478 × 10−7 | 20.63 | 398.46 |
| |
| Retrograde endocannabinoid signaling | Down-regulated | 0.000001505 | 0.00007431 | 6.30 | 84.53 |
|
Figure 2Venn diagram of KEGG pathway enrichment analysis on (A) Up-regulated and (B) Down-regulated pathways based on adjusted p-value. TC, temporal cortex; FC, frontal cortex; EC, entorhinal cortex; HPC, hippocampus; CB, cerebellum.
Figure 3Functional interaction networks analyzed by the String Cytoscape plug-in. (A) PPI network of genes related to GABAergic synapse pathway (red), retrograde endocannabinoid signaling (green), morphine (blue) and nicotine (orange). (B) In addiction, PRKACB (red), PRKCB (orange) and GABRA1 (yellow) found the top hub genes based on the MCC algorithm.
Figure 4Transcription factors and miRNAs analyses. (A,B) results represent Venn diagram analysis for the top five miRNAs and the three TFs that interact with the robust DEGs of the GABAergic synapse pathway. (C,D) show Venn diagram analysis and the top five miRNAs and the TFs interacting with the robust DEGs involved in retrograde endocannabinoid signaling.
The top three shared miRNAs and TFs between the GABAergic synapse pathway and the retrograde endocannabinoid signaling pathway; data were extracted from miRTarBase and JASPAR databases.
| Name | Pathway | Degree | Betweenness |
|---|---|---|---|
| miRNA | |||
| hsa-mir-17-5p | GABAergic synapse pathway | 2 | 887.4 |
| Retrograde endocannabinoid signaling | 3 | 1135.6 | |
| hsa-mir-106a-5p | GABAergic synapse pathway | 2 | 887.4 |
| Retrograde endocannabinoid signaling | 3 | 1135.96 | |
| hsa-mir-373-3p | GABAergic synapse pathway | 1 | 0 |
| Retrograde endocannabinoid signaling | 1 | 0 | |
| Transcription Factors | |||
| ELK1 | GABAergic synapse pathway | 2 | 7.35 |
| Retrograde endocannabinoid signaling | 2 | 8.13 | |
| GATA1 | GABAergic synapse pathway | 1 | 0 |
| Retrograde endocannabinoid signaling | 1 | 0 | |
| GATA2 | GABAergic synapse pathway | 10 | 245.61 |
| Retrograde endocannabinoid signaling | 10 | 261.51 | |