| Literature DB >> 28098893 |
Abstract
In order to investigate commonly disturbed genes and pathways in various brain regions of patients with Parkinson's disease (PD), microarray datasets from previous studies were collected and systematically analyzed. Different normalization methods were applied to microarray datasets from different platforms. A strategy combining gene co‑expression networks and clinical information was adopted, using weighted gene co‑expression network analysis (WGCNA) to screen for commonly disturbed genes in different brain regions of patients with PD. Functional enrichment analysis of commonly disturbed genes was performed using the Database for Annotation, Visualization, and Integrated Discovery (DAVID). Co‑pathway relationships were identified with Pearson's correlation coefficient tests and a hypergeometric distribution‑based test. Common genes in pathway pairs were selected out and regarded as risk genes. A total of 17 microarray datasets from 7 platforms were retained for further analysis. Five gene coexpression modules were identified, containing 9,745, 736, 233, 101 and 93 genes, respectively. One module was significantly correlated with PD samples and thus the 736 genes it contained were considered to be candidate PD‑associated genes. Functional enrichment analysis demonstrated that these genes were implicated in oxidative phosphorylation and PD. A total of 44 pathway pairs and 52 risk genes were revealed, and a risk gene pathway relationship network was constructed. Eight modules were identified and were revealed to be associated with PD, cancers and metabolism. A number of disturbed pathways and risk genes were unveiled in PD, and these findings may help advance understanding of PD pathogenesis.Entities:
Mesh:
Year: 2017 PMID: 28098893 PMCID: PMC5367356 DOI: 10.3892/mmr.2017.6124
Source DB: PubMed Journal: Mol Med Rep ISSN: 1791-2997 Impact factor: 2.952
Summary of the 19 included microarray datasets.
| ArrayExpress ID | Number of samples | Submission date | Microarray platform | (Refs.) |
|---|---|---|---|---|
| E-GEOD-20163 | 17 | 2011/1/20 | AFFY-33 | ( |
| E-GEOD-20164 | 11 | 2011/1/20 | AFFY-33 | ( |
| E-GEOD-20168 | 30 | 2010/2/22 | AFFY-33 | ( |
| E-GEOD-20291 | 30 | 2010/3/23 | AFFY-33 | ( |
| E-GEOD-20292 | 26 | 2010/3/23 | AFFY-33 | ( |
| E-GEOD-20314 | 8 | 2011/1/20 | AFFY-33 | ( |
| E-GEOD-8397 | 94 | 2008/6/16 | AFFY-33 | ( |
| AFFY-34 | ||||
| E-GEOD-19587[ | 22 | 2010/8/19 | AFFY-37 | |
| E-GEOD-20333[ | 12 | 2010/3/23 | AFFY-41 | |
| E-GEOD-20141 | 18 | 2010/2/22 | AFFY-44 | ( |
| E-GEOD-20146 | 20 | 2010/2/22 | AFFY-44 | ( |
| E-GEOD-7621 | 25 | 2008/11/6 | AFFY-44 | ( |
| E-GEOD-24378 | 17 | 2011/1/20 | AFFY-54 | ( |
| E-MEXP-1416 | 16 | 2008/1/19 | AFFY-54 | ( |
| E-GEOD-28894[ | 114 | 2011/7/21 | MEXP-1174 | |
| E-GEOD-43490 | 41 | 2015/1/11 | AGIL-28 | ( |
| E-MTAB-812 | 53 | 2012/9/19 | AGIL-28 | ( |
| E-GEOD-54282 | 33 | 2014/9/1 | GEOD-17047 | ( |
| E-MTAB-1194 | 18 | 2013/6/2 | AFFY-168 | ( |
Dataset obtained from www.ebi.ac.uk/arrayexpress/experiments/E-GEOD-19587/
Data set obtained from www.ebi.ac.uk/arrayexpress/experiments/E-GEOD-20333/
Dataset obtained from www.ebi.ac.uk/arrayexpress/experiments/E-GEOD-28894/.
Number of overlapping genes between platforms.
| Microarray platform | AFFY-33 | AFFY-34 | AFFY-37 | AFFY-41 | AFFY-44 | AFFY-54 | AGIL-28 | GEOD-17047 | AFFY-168 | MEXP-1174 |
|---|---|---|---|---|---|---|---|---|---|---|
| AFFY-33 | 12504 | |||||||||
| AFFY-34 | 4321 | 9659 | ||||||||
| AFFY-37 | 12504 | 4231 | 12504 | |||||||
| AFFY-41 | 8166 | 2508 | 8166 | 8166 | ||||||
| AFFY-44 | 12504 | 9659 | 12504 | 8166 | 20150 | |||||
| AFFY-54 | 12431 | 9626 | 12431 | 8132 | 20027 | 20084 | ||||
| AGIL-28 | 11119 | 7127 | 11119 | 7747 | 15173 | 15123 | 27277 | |||
| GEOD-17047 | 12146 | 8497 | 12146 | 8078 | 17486 | 17438 | 17438 | 19594 | ||
| AFFY-168 | 12087 | 8461 | 12087 | 8044 | 17397 | 17347 | 17347 | 19430 | 19430 | |
| MEXP-1174 | 6813 | 4049 | 6813 | 4075 | 8487 | 8464 | 8464 | 8604 | 8564 | 10742 |
Clinical information for the 17 selected microarray datasets.
| Gender | ||||
|---|---|---|---|---|
| Male | Female | All | Age range | |
| Brain region | ||||
| Cerebellum | ||||
| PD | NA | NA | 4 | 74–85 |
| Control | NA | NA | 4 | 81–86 |
| Cortex | ||||
| PD | 4 | 1 | 5 | 64–84 |
| Control | 2 | 3 | 5 | 64–91 |
| Dopamine neurons | ||||
| PD | 4 | 4 | 16 | 66–94 |
| Control | 4 | 4 | 17 | 61–89 |
| Dorsal motor nucleus of the vagus | ||||
| PD | 8 | 6 | 14 | 64–90 |
| Control | 7 | 4 | 11 | 58–90 |
| Frontal lobe | ||||
| PD | 6 | 5 | 11 | 54–79 |
| Control | 3 | 4 | 7 | 49–82 |
| Globus pallidus interna | ||||
| PD | 7 | 4 | 11 | NA |
| Control | 5 | 4 | 9 | NA |
| Inferior olivary nucleus | ||||
| PD | 3 | 3 | 6 | 74–81 |
| Control | 3 | 1 | 4 | 73–84 |
| Locus coeruleus | ||||
| PD | 5 | 2 | 7 | 64–90 |
| Control | 5 | 2 | 7 | 58–90 |
| Prefrontal cortex BA9 | ||||
| PD | 35 | 6 | 41 | 64–94 |
| Control | 37 | 5 | 42 | 54–97 |
| Putamen | ||||
| PD | 9 | 6 | 15 | 67–89 |
| Control | 10 | 5 | 15 | (54, 94) |
| Striatum | ||||
| PD | 4 | 2 | 6 | (60, 84) |
| Control | 2 | 4 | 6 | (64, 91) |
| Substantia nigra | ||||
| PD | 30 | 14 | 86 | (64, 90) |
| Control | 19 | 18 | 69 | (64, 94) |
| Superior frontal gyrus | ||||
| PD | NA | NA | 5 | NA |
| Control | NA | NA | 3 | NA |
| Total | ||||
| PD | 114 | 54 | 227 | (54, 94) |
| Control | 97 | 55 | 200 | (49, 97) |
PD, Parkinson's disease.
Figure 1.Box plots for microarray data from 7 platforms. (A) AFFY-168. (B) AFFY-33. (C) AFFY-37. (D) AFFY-44. (E) AFFY-54. (F) AGIL-28. (G) GEOD-1704. (H) integrated microarray data.
Figure 2.Cluster analysis result for (A) all samples and (B) following removal of 3 outliers.
Figure 3.Topological property of the network under a range of soft-thresholding powers. Left: X-axis is a scale-free fit index and Y-axis is the soft-thresholding power. The red line marks scale-free fit as 0.9. Right: X-axis is the mean connectivity and Y-axis is the soft-thresholding power.
Figure 4.Hierarchical clustering result for the genes from the 5 modules.
Figure 5.Correlation analysis result for the 5 modules and clinical features. Clinical features are on the X-axis while genes from 5 modules are on the Y-axis. P-values for correlation coefficients are given in brackets.
Figure 6.Functional enrichment analysis results for the candidate genes. (A) GO biological process terms. (B) GO cellular components terms. (C) GO molecular function terms. (D) Kyoto Encyclopedia of Genes and Genomes pathways. GO, gene ontology.
Figure 7.The constructed network, including 49 pathway pairs (red circles) and 52 risk genes (green circles).
Pathways and risk genes in the 8 modules.
| Module | Pathways | Risk genes |
|---|---|---|
| 1 | Oxidative phosphorylation, Alzheimer's disease, Parkinson's disease and Huntington's disease | NDUFA5, VDAC3, NDUFA2, ATP5C1, ATP5G3, NDUFAB1, ATP5J, SLC25A5, SLC25A4, NDUFA4, COX5A, UQCRC2, NDUFS3, NDUFB6, VDAC1, VDAC2, ATP5A1, SNCA, ATP5F1, NDUFB5, UQCRFS1, NDUFC1, SDHA, NDUFV2, NDUFA1, NDUFA10, COX7A2L, ATP5B, NDUFS2, NDUFA6, NDUFB3, SDHB |
| 2 | Glioma, non-small cell lung cancer, melanoma, signaling pathways regulating pluripotency of stem cells, mineral absorption, gastric acid secretion, carbohydrate digestion and absorption, proximal tubule bicarbonate reclamation, aldosterone-regulated sodium reabsorption, acute myeloid leukemia, salivary secretion, dorso-ventral axis formation, bladder cancer, thyroid hormone synthesis, T cell receptor signaling pathway, VEGF signaling pathway, B cell receptor signaling pathway, natural killer cell mediated cytotoxicity, protein digestion and absorption, melanogenesis, toll-like receptor signaling pathway, Fc epsilon RI signaling pathway, chronic myeloid leukemia and prostate cancer | MAPK10, ATP1B1, ATP1A1, MAP2K4, PPP3CB, MAP2K1, CDKN1B, CDC42, PIK3CB |
| 3 | Drug metabolism -cytochrome P450, metabolism of xenobiotics by cytochrome P450, chemical carcinogenesis, metabolism of xenobiotics by cytochrome P450 | GSTO1, GSTA4, ADH5 |
| 4 | Hypertrophic cardiomyopathy (HCM), Dilated cardiomyopathy, Arrhythmogenic right ventricular cardiomyopathy (ARVC) | SGCB, ATP2A2 |
| 5 | Lysine degradation, Tryptophan metabolism | ACAT1, HADH |
| 6 | Phenylalanine metabolism, isoleucinePhenylalanine, tyrosine and tryptophan biosynthesisisoleucine | GOT1, GOT2 |
| 7 | Starch and sucrose metabolism, Pentose and glucuronate interconversions | UGP2 |
| 8 | Other glycan degradation, Glycosaminoglycan degradation | HEXB |