| Literature DB >> 29607312 |
Heng Lu1, Yi Chen1, Linlin Li2.
Abstract
Coronary artery disease (CAD) is one of the leading threats to global health. Previous research has proven that metabolic pathway disorders, such as high blood lipids and diabetes, are one of the risk factors that mostly cause CAD. However, the crosstalk between metabolic pathways and CAD was mostly studied on physiology processes by analyzing a single gene function. A canonical correlation analysis was used to identify the metabolic pathways, which were integrated as a unit to coexpress with CAD susceptibility genes, and to resolve additional metabolic factors that are related to CAD. Seven pathways, including citrate cycle, ubiquinone, terpenoid quinone biosynthesis, and N-glycan biosynthesis, were identified as an integrated unit coexpressed with CAD genes. These pathways could not be revealed as a coexpressed pathway through traditional methods as each single gene has weak correlation. Furthermore, sets of genes in these pathways were candidate markers for diagnosis and detection from patients' serum.Entities:
Year: 2018 PMID: 29607312 PMCID: PMC5828413 DOI: 10.1155/2018/9025841
Source DB: PubMed Journal: Int J Genomics ISSN: 2314-436X Impact factor: 2.326
Figure 1Strategy of study for the canonical correlation analysis. Collection of CAD genes and metabolic pathway genes; construction of the coexpression network among individual CAD and metabolic pathway genes; performance of CCA; and analysis of canonical variables.
Figure 2Coexpression network of CAD genes and metabolic pathway genes. The connection indicates the Pearson correlation factor r > 0.6.
Figure 3PPI network of CAD genes. Note that no metabolic pathway was enriched in the PPI network.
Enriched metabolic pathway in the coexpression network.
| Term | Count | Pop |
| Genes |
|---|---|---|---|---|
| hsa00230: purine metabolism | 17 | 176 | 8.46 | 5427, 9533, 2618, 6240, 5557, 11164, 6241, 26289, 270, 158, 93034, 8833, 10606, 471, 108, 107, 2983 |
| hsa01130: biosynthesis of antibiotics | 14 | 212 | 6.52 | 6120, 5224, 5232, 5223, 230, 2618, 26289, 270, 158, 8789, 92483, 10606, 471, 2027 |
| hsa00240: pyrimidine metabolism | 10 | 104 | 2.40 | 93,034, 5427, 9533, 7372, 7371, 6240, 5557, 7298, 6241, 7083 |
| hsa00010: glycolysis/gluconeogenesis | 7 | 67 | 1.06 | 92483, 5224, 5232, 5223, 230, 2027, 8789 |
| hsa00670: one carbon pool by folate | 4 | 20 | 0.001425311 | 1719, 471, 2618, 7298 |
| hsa01230: biosynthesis of amino acids | 6 | 74 | 0.001495954 | 6120, 5224, 5232, 5223, 230, 2027 |
| hsa01200: carbon metabolism | 7 | 113 | 0.001764573 | 6120, 5224, 5232, 5223, 230, 2027, 8789 |
| hsa04913: ovarian steroidogenesis | 5 | 49 | 0.002269906 | 1583, 108, 107, 3284, 1588 |
| hsa00330: arginine and proline metabolism | 5 | 50 | 0.002446109 | 84735, 1158, 4842, 57571, 1160 |
| hsa00140: steroid hormone biosynthesis | 5 | 58 | 0.004206383 | 1583, 1589, 3284, 1588, 1584 |
| hsa00410: beta-alanine metabolism | 4 | 31 | 0.005135035 | 84735, 2572, 57571, 8639 |
| hsa00514: other types of O-glycan biosyntheses | 4 | 31 | 0.005135035 | 10690, 135152, 27087, 23127 |
| hsa00061: fatty acid biosynthesis | 3 | 13 | 0.00927769 | 23205, 81616, 23305 |
| hsa00790: folate biosynthesis | 3 | 14 | 0.010744279 | 5860, 1719, 8836 |
| hsa04925: aldosterone synthesis and secretion | 5 | 81 | 0.013544109 | 1583, 108, 107, 1589, 3284 |
| hsa00983: drug metabolism—other enzymes | 4 | 46 | 0.015345429 | 8833, 7372, 7371, 7083 |
| hsa01212: fatty acid metabolism | 4 | 48 | 0.017202919 | 23205, 79966, 81616, 23305 |
| hsa04922: glucagon signaling pathway | 5 | 99 | 0.026291005 | 92483, 5224, 5223, 5837, 108 |
| hsa00534: glycosaminoglycan biosynthesis—heparan sulfate/heparin | 3 | 24 | 0.030276378 | 222537, 9348, 266722 |
| hsa03320: PPAR signaling pathway | 4 | 67 | 0.040871389 | 23205, 79966, 81616, 23305 |
| hsa00030: pentose phosphate pathway | 3 | 29 | 0.042939357 | 6120, 230, 8789 |
| hsa00760: nicotinate and nicotinamide metabolism | 3 | 29 | 0.042939357 | 93034, 27231, 23057 |
Figure 4Characteristic of canonical variables indicating integrate pathway. A threshold was set to identify the CCA which cover whole pathway (S, S > 0.2, r values > 0.5, and P values < 0.001). (a) Scatter plots of seven CCA pairs with top r values. Note that all identified CCA were highly correlated. (b) The coefficient of metabolic pathway genes on seven canonical variables. Each metabolic pathway contains different number of genes. The genes with big values contributed more in CCA. (c) The coefficient of CAD genes on seven canonical variables. The genes with big values contributed more in CCA.
The canonical variable delegate integrates metabolic pathways.
| Metabolic pathways | Gene number |
|
|
| Represent gene ID |
|---|---|---|---|---|---|
| Citrate cycle (TCA cycle) | 30 | 0.90 | 0.20 | 0.19 | 8803∗, 1737∗, 8801∗, 4191∗, 6392∗, 4190∗ |
| Ubiquinone and other terpenoid quinone biosyntheses | 10 | 0.90 | 0.30 | 0.93 | 27235, 84274, 79001 |
| N-glycan biosynthesis | 48 | 0.96 | 0.23 | 0.28 | 4247, 4248, 85365, 1650, 11282, 79868, 57134, 8813, 4122, 146664, 29929 |
| Other glycan degradation | 17 | 0.92 | 0.27 | 0.62 | 10825, 2720, 3074, 129807, 2519 |
| Glycosaminoglycan degradation | 17 | 0.91 | 0.22 | 0.69 | 2720, 3074, 6677, 2799 |
| Glycosylphosphatidylinositol (GPI) anchor biosynthesis | 25 | 0.93 | 0.21 | 0.43 | 9091, 284098, 2822, 5281, 5279 |
| Glycosphingolipid biosynthesis–ganglioseries | 15 | 0.93 | 0.22 | 0.92 | 2583, 2720, 3074 |
S and S indicate the extent of canonical variables covering the whole pathway. The representative genes were selected based on the percentage of covering (∗gene number in pathways S).
Figure 5qRT-PCR of metabolic pathway genes in CAD patients. (a) 2583 (B4GALNT1), 2720 (GLB1), and 3074 (HEXB) in glycosphingolipid biosynthesis. (b) 27235 (COQ2), 84274 (COQ5), and 79001 (vkorc1) in ubiquinone and other terpenoid quinone biosyntheses.