| Literature DB >> 32680552 |
Abstract
Several metabolomics studies have shed substantial light on the pathophysiological pathways underlying multiple diseases including systemic lupus erythematosus (SLE). This review takes stock of our current understanding of this field. We compare, collate, and investigate the metabolites in SLE patients and healthy volunteers, as gleaned from published metabolomics studies on SLE. In the surveyed primary reports, serum or plasma samples from SLE patients and healthy controls were assayed using mass spectrometry or nuclear magnetic resonance spectroscopy, and metabolites differentiating SLE from controls were identified. Collectively, the circulating metabolome in SLE is characterized by reduced energy substrates from glycolysis, Krebs cycle, fatty acid β oxidation, and glucogenic and ketogenic amino acid metabolism; enhanced activity of the urea cycle; decreased long-chain fatty acids; increased medium-chain and free fatty acids; and augmented peroxidation and inflammation. However, these findings should be interpreted with caution because several of the same metabolic pathways are also significantly influenced by the medications commonly used in SLE patients, common co-morbidities, and other factors including smoking and diet. In particular, whereas the metabolic alterations relating to inflammation, oxidative stress, lipid peroxidation, and glutathione generation do not appear to be steroid-dependent, the other metabolic changes may in part be influenced by steroids. To conclude, metabolomics studies of SLE and other rheumatic diseases ought to factor in the potential contributions of confounders such as medications, co-morbidities, smoking, and diet.Entities:
Keywords: Lupus; Metabolome; Pathways; Steroid-dependent
Mesh:
Year: 2020 PMID: 32680552 PMCID: PMC7367412 DOI: 10.1186/s13075-020-02264-2
Source DB: PubMed Journal: Arthritis Res Ther ISSN: 1478-6354 Impact factor: 5.156
Eleven studies investigating the serum or plasma metabolome in SLE patients
| Study | Country | Differential Metabolites* | Biofluid | Platform | Patients | Controls | Corrections | Confounding factors mentioned |
|---|---|---|---|---|---|---|---|---|
| Ouyang 2011 [ | China | 27 | Serum | 1H-NMR | 64 SLE | 30 RA, 35 HC | Age, sex, race | M, S |
| Wu 2012 [ | USA | 319 | Serum | LC/MS, GC/MS | 20 SLE | 9 HC | Age, sex, race, BMI | M, Co-M |
| Bengtsson 2016 [ | Sweden | 20 | Serum | GC/MS | 30 SLE | 18 HC, 19 SSc, 20 pSS | Age, sex, race | M |
| Guleria 2016 [ | India | 19 | Serum | 1H-NMR | 22 SLE, 40 LN | 30 HC | Age, sex, race | M |
| Yan 2016 [ | China | 41 | Serum | GC/MS | 80 SLE | 57 HC | Age, sex, race, BMI | M |
| Li 2017 [ | China | 23 | Serum | LC/MS | 32 LN | 30 INS, 28 HC | Age, sex, race, BMI | None |
| Shin 2017 [ | Korea | 13 | Plasma | GC/MS | 41 SLE | 41 HC | Age, sex, race | M |
| Guleria 2018 [ | India | 17 | Serum | 1H-NMR | 18 LN | 18 LNT, 30 HC | Age, sex, race | M |
| Li 2019 [ | China | 50 | Serum | LC/MS | 17 SLE | 17 HC | Age, sex, race | None |
| Bellocchi 2019 [ | Italy | 4 | Plasma | LC/MS | 27 SLE | 23 pSS, 11 PAPS, 26 UCTD, 27 HC | Age, sex, race | M |
| Zhang 2020 [ | China | 55 | Serum | LC/MS | 32 SLE | 25 HC | Age, sex, race, BMI | M |
Co-M co-morbidities, GC/MS gas chromatography mass spectrometry, HC healthy control, INS idiopathic nephrotic syndrome, LC/MS liquid chromatography mass spectrometry, LN lupus nephritis, LNT lupus nephritis after treatment, M medications, NMR1H nuclear magnetic resonance spectroscopy, PAPS primary anti-phospholipid syndrome, pSS primary Sjögren’s syndrome, RA rheumatoid arthritis, S smoking, SLE systemic lupus erythematosus, SSc systemic sclerosis, UCTD undifferentiated connective tissue disease
*Differentially expressed metabolites between SLE (or LN if all patients were LN) and HC
Altered serum/plasma metabolites in SLE patients, based on eleven published studies
Metabolites which discriminate SLE from controls are listed in this table. Assayed metabolites which did not distinguish SLE from controls are listed only if they were evaluated in more than one study. Green font indicates downregulation and red font indicates upregulation of serum/plasma metabolites in SLE compared to controls, while metabolites in black font remained unchanged or changes were inconsistent in subgroups of SLE patients. Metabolites in italics were those that were only measured in one study
Ala alanine, Arg arginine, Asn asparagine, Asp aspartic acid, ASP-PHEl-aspartyl-l-phenylalanine, Cys cysteine, DHA docosahexaenoic acid, EPA eicosapentaenoic acid, G-6-P glucose 6-phosphate, Gln glutamine, Glu glutamic acid, Gly glycine, GSH glutathione, HDL high-density lipoprotein, HETE hydroxyeicosatetraenoic acid, His histidine, HODE hydroxyoctadecadienoic acid, Ile isoleucine, LDL low-density lipoprotein, Leu leucine, LN lupus nephritis, LTB4 leukotriene B4, Lys lysine, LysoPC lysophosphatidylcholine, LysoPE lysophosphatidylethanolamine, MDA malonaldehyde, Met methionine, MG monoacylglycerol, NAG N-acetyl glycoproteins, PC phosphatidylcholine, Phe phenylalanine, Pro proline, Ser serine, SLE systemic lupus erythematosus, Thr threonine, Trp tryptophan, Tyr tyrosine, UFA unsaturated fatty acids, Val valine, VLDL very low-density lipoprotein
Fig. 1An overview of the major pathways implicated in serum/plasma metabolomics alteration in SLE. Metabolites elevated in SLE are shown in red font, while reduced metabolites are in green font. Metabolites in italics were only measured in one study. Pathways that appear unlikely to be steroid dependent include the elevation of bradykinin/leukotrienes and lipid peroxidation, as shown boxed with a red dashed line. Pathways outside this box may potentially be the consequence of steroids, based on the known metabolic effects of steroids [18–20]. Ala alanine, Arg arginine, Asn asparagine, Asp aspartic acid, BHBA 3-hydroxybutyrate, Cys cysteine, DHA docosahexaenoic acid, EPA eicosapentaenoic acid, FFA free fatty acids, GGT gamma-glutamyltransferase, Gln glutamine, Glu glutamic acid, Gly glycine, GSH glutathione, HETE hydroxyeicosatetraenoic acid, His histidine, HODE hydroxyoctadecadienoic acid, Ile isoleucine, LCFA long-chain fatty acids, Leu leucine, LT leukotriene, Lys lysine, MCFA medium-chain fatty acids, MDA malonaldehyde, Met methionine, PG prostaglandin, Phe phenylalanine, Pro proline, PUFA polyunsaturated fatty acid, SAM S-adenosyl-methionine, SCFA short-chain fatty acids, Ser serine, Thr threonine, Trp tryptophan, TX thromboxane, Tyr tyrosine, Val valine
Fig. 2An overview of the lipid alterations in SLE sera. This data was drawn from the study that interrogated the largest number of lipid metabolites in SLE [6]. Green: decreased in all patients or severe lupus. Red: increased in all patients or severe lupus. Black: no change in all patients or severe lupus. Bolded with asterisks: significantly changed in either mild or severe lupus (p < 0.05). Of the lipids listed in this figure, arachidonate, caproate, caprylate, eicosanoate, linolenate, stearate, EPA, DHA, linoleneate, myristate, oleate, and palmitoleate were also altered in the study by Shin et al. [10], as detailed in Table 2. LCFA long-chain fatty acids, MCFA medium-chain fatty acids, MUFA mono-unsaturated fatty acids, PUFA polyunsaturated fatty acid, SCFA short-chain fatty acids, SFA saturated fatty acids