| Literature DB >> 29258229 |
Ran Liu1, Huarong Xu2, Xiaowen Zhang3, Xiaotong Wang4, Ziyue Yuan5, Zhenyu Sui6, Dong Wang7, Kaishun Bi8, Qing Li9.
Abstract
Headache is a common episodic or chronic neurologic disorder. Treatment options and diagnosis are restricted by an incomplete understanding of disease pathology and the lack of diagnostic markers. Wu-Zhu-Yu decoction (WZYD), a traditional Chinese medicine (TCM) formula containing four TCM herbs, is commonly used in the treatment of headache in China. To deeply understand more about headache and investigate the pain-relief mechanism of WZYD, a comprehensive metabolomics study combined with multivariate data processing strategy was carried out. An LC-high resolution mass spectrometry-based metabolomics approach was applied to characterize metabolic biomarker candidates. Multiple pattern recognition including principal component analysis-discriminant analysis, partial least squares-discriminant analysis and hierarchical cluster analysis were used to determine groups and confirm important variables. A total of 17 potential biomarkers were characterized and related metabolic pathways were identified. The study demonstrated that the established metabolomics strategy is a powerful approach for investigating the mechanism of headache attack and WZYD. In addition, the approach may highlight biomarkers and metabolic pathways and can capture subtle metabolite changes from headache, which may lead to an improved mechanism understanding of central nervous system diseases and TCM treatment.Entities:
Keywords: Wu-Zhu-Yu decoction; headache; high resolution mass spectrometry; metabolomics; traditional Chinese medicine
Mesh:
Substances:
Year: 2017 PMID: 29258229 PMCID: PMC6149820 DOI: 10.3390/molecules22122110
Source DB: PubMed Journal: Molecules ISSN: 1420-3049 Impact factor: 4.411
Figure 1The principal component analysis-discriminant analysis (PCA-DA) recognition based on the brain homogenates and plasma metabolomic profiling. (A) Brain metabolomics score plot of control group (green), model group (red), Wu-Zhu-Yu decoction (WZYD) group (blue) and flunarizine group (purple); (B) Loading plot, each dot represents a compound which contributed in group separation; (C) Plasma metabolomics score plot; (D) Plasma metabolomics loading plot.
Potential brain homogenates biomarkers detected by liquid chromatography-high resolution mass spectrometry (LC-HRMS) and their intensities in control, model, WZYD and flunarizine groups analyzed by one-way ANOVA.
| RT | Compound | Peak Intensity (Mean ± SD) | ||||
|---|---|---|---|---|---|---|
| Control | Model | WZYD | Flunarizine | |||
| 0.81 | 258.1108 | GPC | 6.61 × 104 ± 3.41 × 104 | 1.13 × 105 ± 5.40 × 104 ## | 2.17 × 104 ± 4.03 × 103 ** | 2.42 × 104 ± 7.77 × 103 ** |
| 0.82 | 175.1183 | Arginine | 1.68 × 105 ± 4.88 × 104 | 1.31 × 105 ± 2.10 × 104 ## | 2.77 × 105 ± 4.33 × 104 ** | 1.91 × 105 ± 2.29 × 104 ** |
| 1.11 | 348.0707 | AMP | 3.14 × 105 ± 2.05 × 105 | 5.60 × 105 ± 2.04 × 105 ## | 1.62 × 105 ± 3.37 × 104 ** | 1.82 × 105 ± 6.37 × 104 ** |
| 1.14 | 664.1144 | NAD | 5.89 × 104 ± 2.29 × 104 | 7.67 × 104 ± 2.99 × 104 # | 2.29 × 104 ± 4.99 × 103 ** | 3.70 × 104 ± 1.70 × 104 ** |
| 1.18 | 308.0895 | GSH | 2.33 × 106 ± 1.14 × 106 | 3.06 × 106 ± 1.09 × 106 # | 9.56 × 104 ± 4.70 × 104 ** | 6.50 × 104 ± 2.42 × 104 ** |
| 1.34 | 613.1597 | GSSG | 1.39 × 106 ± 7.23 × 105 | 1.72 × 106 ± 4.48 × 105 # | 3.19 × 105 ± 2.32 × 105 ** | 2.32 × 105 ± 1.81 × 105 ** |
| 2.20 | 136.0616 | Adenine | 4.61 × 105 ± 2.49 × 105 | 6.69 × 105 ± 1.75 × 105 ## | 2.74 × 105 ± 4.40× 104 ** | 2.08 × 105 ± 2.54 × 104 ** |
| 2.24 | 268.1025 | Adenosine | 2.70 × 106 ± 2.37 × 106 | 5.20 × 106 ± 2.05 × 106 ## | 1.97 × 105 ± 5.66 × 104 ** | 2.70 × 105 ± 1.41 × 105 ** |
| 3.51 | 100.0764 | Valerolactam | 9.97 × 103 ± 3.32 × 103 | 2.19 × 104 ± 2.18 × 104 ## | 1.02 × 104 ± 3.93 × 103 ** | 1.03 × 104 ± 5.05 × 103 ** |
| 6.56 | 232.1540 | Butyrylcarnitine | 5.87 × 104 ± 3.35 × 104 | 8.25 × 104 ± 4.18 × 104 ## | 1.58 × 104 ± 3.90 × 103 ** | 2.58 × 104 ± 8.02 × 103 ** |
| 6.74 | 114.0914 | Caprolactam | 8.00 × 105 ± 1.45 × 105 | 8.98 × 105 ± 1.31 × 105 ## | 2.17 × 105 ± 1.26 × 104 ** | 2.27 × 105 ± 2.44 × 104 ** |
| 20.38 | 385.3465 | Cholecalciferol | 1.82 × 105 ± 8.48 × 104 | 1.24 × 105 ± 7.58 × 104 # | 1.75 × 105 ± 5.27 × 104 * | 1.23 × 105 ± 3.25 × 104 |
# p < 0.05 and ## p < 0.01 compared with control group; * p < 0.05 and ** p < 0.01 compared with model group. GPC: glycerophosphocholine; AMP: adenosine monophosphate; NAD: nicotinamide adenine dinucleotide; GSH: glutathione; GSSG: oxidized glutathione.
Figure 2(A) Fragmentation pathway and product ion spectrum of oxidized glutathione; (B) MS/MS spectrum of oxidized glutathione by mzCloud and (C) the comparison spectrum between the experimental and reference MS/MS spectrum by METLIN.
Potential plasma biomarkers detected by LC-HRMS and their intensities in control, model, WZYD and flunarizine groups analyzed by one-way ANOVA.
| RT | Compound | Peak Intensity (Mean ± SD) | ||||
|---|---|---|---|---|---|---|
| Control | Model | WZYD | Flunarizine | |||
| 0.93 | 175.1188 | Arginine | 2.91 × 105 ± 2.47 × 104 | 2.28 × 105 ± 4.79 × 104 ## | 2.60 × 105 ± 3.45 × 104 * | 2.05 × 105 ± 3.01 × 104 |
| 0.94 | 162.1122 | Carnitine | 7.47 × 105 ± 1.17 × 105 | 5.87 × 105 ± 8.45 × 104 ## | 6.87 × 105 ± 1.65 × 105 * | 5.70 × 105 ± 9.79 × 104 |
| 3.12 | 192.0660 | 5-HIAA | 4.63 × 104 ± 1.07 × 104 | 3.92 × 104 ± 8.96 × 103 # | 4.24 × 104 ± 9.62 × 103 | 4.01 × 104 ± 8.89 × 103 |
| 6.64 | 132.0808 | 3-Methyl-indole | 9.68 × 104 ± 1.69 × 104 | 8.37 × 104 ± 1.04 × 104 # | 1.06 × 105 ± 1.43 × 104 ** | 8.39 × 104 ± 1.22 × 104 |
| 7.17 | 134.0592 | Hydroxy-indole | 7.31 × 104 ± 3.61 × 104 | 4.49 × 104 ± 2.38 × 104 ## | 6.31 × 104 ± 3.39 × 104 | 3.65 × 104 ± 1.43 × 104 |
| 9.2 | 176.0700 | IAA | 2.03 × 104 ± 1.06 × 104 | 1.19 × 104 ± 4.27 × 103 ## | 1.37 × 104 ± 3.87 × 103 | 8.95 × 103 ± 2.36 × 103 |
# p < 0.05 and ## p < 0.01 compared with control group; * p < 0.05 and ** p < 0.01 compared with model group. 5-HIAA: 5-hydroxyindoleacetic acid.
Figure 3The hierarchical clustering heatmap of the potential biomarkers.
Metabolic pathway analysis with MetaboAnalyst.
| Pathway Name | Total | Expected | Hits | Raw | Impact |
|---|---|---|---|---|---|
| Glutathione metabolism | 26 | 0.25963 | 2 | 0.026253 | 0.39790 |
| Purine metabolism | 68 | 0.67903 | 3 | 0.027048 | 0.06056 |
| Tryptophan metabolism | 41 | 0.40942 | 2 | 0.060817 | 0.01473 |
| Nicotinate and nicotinamide metabolism | 13 | 0.12981 | 1 | 0.122810 | 0.20833 |
| Lysine degradation | 20 | 0.19971 | 1 | 0.182990 | 0.00000 |
| Glycerophospholipid metabolism | 30 | 0.29957 | 1 | 0.262330 | 0.02315 |
| Arginine and proline metabolism | 44 | 0.43937 | 1 | 0.361430 | 0.08228 |
| Aminoacyl-tRNA biosynthesis | 67 | 0.66904 | 1 | 0.497840 | 0.00000 |
Figure 4The metabolic pathways related to headache, as analyzed by MetaboAnalyst. The map was generated using the 379 reference map by KEGG. (A) Glutathione metabolism; (B) Nicotinate and nicotinamide metabolism; (C) Arginine and proline metabolism; (D) Purine metabolism; (E) Glycerophospholipid metabolism; (F) Tryptophan metabolism.
Figure 5Part of the nitric oxide signaling pathway.
Figure 6Tryptophan metabolism pathway.