| Literature DB >> 27189771 |
Sergio Serrano-Villar1, David Rojo2, Mónica Martínez-Martínez3, Simon Deusch4, Jorge F Vázquez-Castellanos5,6, Talía Sainz7, Mar Vera8, Santiago Moreno1, Vicente Estrada9, María José Gosalbes5,6, Amparo Latorre5,6,10, Abelardo Margolles11, Jana Seifert4, Coral Barbas2, Andrés Moya5,6,10, Manuel Ferrer3.
Abstract
Imbalances in gut bacteria have been associated with multiple diseases. However, whether there are disease-specific changes in gut microbial metabolism remains unknown. Here, we demonstrate that human immunodeficiency virus (HIV) infection (n = 33) changes, at quantifiable levels, the metabolism of gut bacteria. These changes are different than those observed in patients with the auto-immune disease systemic lupus erythaematosus (n = 18), and Clostridium difficile-associated diarrhoea (n = 6). Using healthy controls as a baseline (n = 16), we demonstrate that a trend in the nature and directionality of the metabolic changes exists according to the type of the disease. The impact on the gut microbial activity, and thus the metabolite composition and metabolic flux of gut microbes, is therefore disease-dependent. Our data further provide experimental evidence that HIV infection drastically changed the microbial community, and the species responsible for the metabolism of 4 amino acids, in contrast to patients with the other two diseases and healthy controls. The identification in this present work of specific metabolic deficits in HIV-infected patients may define nutritional supplements to improve the health of these patients.Entities:
Mesh:
Year: 2016 PMID: 27189771 PMCID: PMC4870624 DOI: 10.1038/srep26192
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Composition of metabolite profiles inside gut microbial cells that were previously separated from stool material.
A PCA plot shows the models that were built with the raw data (LC-MS (−)) that satisficed the quality assurance criteria proposed by Godzien et al.13 (variables that were present in at least 50% of the samples of each group and that were present in at least 80% of the QCs that obtained a coefficient of variation less than 30% or present in less than 20% of the QCs). The following codes were established: HCh for healthy controls with a BMI higher than 25.24 kg/m2; HCl for healthy controls with a BMI lower than 24.83 kg/m2; SLE for patients with systemic lupus erythaematosus; CDADt+ for patients with C. difficile producing toxins; VU for untreated HIV-infected individuals; IR for immunological ART responders who were HIV-infected individuals; and INR for immunological ART non-responders who were HIV-infected individuals. The robustness of the sample clustering has three main contributors. First, the PCA is a non-supervised model, which means that the distribution of the samples that was plotted is due only to the directions of the principal components that maximise the explained percentage of variance (R2). Second, raw data are plotted, including all possible sources of variability in addition to the biological sources. Third, the robustness of the analytical procedure was demonstrated by the tight clustering of the QCs in the non-supervised PCA models, showing that separation among the groups was due to real biological variability and not to analytical variance (random). For a full description of the HCh, HCl, SLE, and CDADt+ samples and patients, see recent publications812. Similar separation of the groups was observed also in LC (+), and this is why only the datasets for LC (−) are shown. Note that our previous investigations revealed that the segregation of samples is highly similar regardless of the separation technique used to obtain the metabolomics fingerprint; this technique clearly influences only the part of the metabolome than can be seen and does not introduce biases in the segregation process.
Figure 2PCA score plots for multivariate statistical analysis.
Clinical variables examined include residential zone, age, gender, body mass index, glucose, creatinine, triglyceride, cholesterol, CD4+ T-cells, Nadir CD4+ T-cells, CD4/CD8 ratio and % CD8+ HLA-DR + CD38+ T cells levels, the type of medication and sexual preferences (Supplementary Table S1). The variables between two of the different principal components are: R2 = 0.541; Q2 = −0.093.
Figure 3Dysbiosis ranking correlation plot based on the impact of the diseases on the gut microbial metabolome.
Quantifications based on the number of metabolites (shown in the inset) and the total useful signals (X axe) that were statistically (p < 0.05) altered in each disease (Y axe, arbitrary) versus HCl (in red) and HCh (in blue) are shown. Values represent the median ± range.
The impact of HIV, SLE and CDAD on the amino acid metabolism of gut bacteria.
| Metabolite | Mass ( | Peak area (arbitrary units) | ||||||
|---|---|---|---|---|---|---|---|---|
| SLE | CDADt+ | VU | IR | INR | HC | |||
| Proline | 115.0628 (LC+) | 1,029,779 (133,679–1,790,834) | 184,318 (122,879–345,450) | 0 | 0 | 0 | 1,259,095 (86,950–1,944,313) | <0.00026 |
| Phenyl alanine | 165.0796 (LC+) | 476,712 (71,275–2,687,654) | 644,264 (607,695–702,184) | 0 | 0 | 0 | 1,573,890 (201,340–4,241,643) | <0.00026 |
| Lysine | 146.1054 (LC-) | 23,299 (9,153–36,369) | 9,929 (6,619–18,407) | 0 | 0 | 0 | 36,045 (12,548–62,984) | <0.00021 |
| 3-Hydroxy-anthranilate | 153.0428 (LC-) | 0 | 0 | 4,187 (4,187–13,706) | 13,973 (6,991–16,557) | 5339 (3,559–15,461) | 0 | <0.00016 |
The Table shows the median ± interquartile range of key metabolite features that were differentially (and statistically) accumulated in the HIV (VU, IR and INR), SLE and CDADt+ groups of patients and healthy controls (p values < 0.05; for exact values see Supplementary Table S2). Separation and quantification were performed as described in the Methods section.
1Abundance levels of ornithine (m/z 132.0899) and feruloyl putrescine (m/z 264.1467) involved in the biosynthesis and degradation of proline, respectively, was below detection limit.
2Abundance level of 6-deoxy-5-keto-fructose-1-phosphate (m/z 242.0188) and chorismate/prephenate (m/z 226.0478) involved in the biosynthesis of phenylalanine, and the further degradation product cinnamate (m/z 148.0525) were below detection limit.
3Abundance levels of homoserine (m/z 119.0583) and N-acetyl-2-amino-6-oxopimelate (m/z 231.0732) involved in the biosynthesis of lysine, and the further degradation product N-acetyl-lysine (m/z 188.1159) were below detection limit.
4At least 34 di- and tripeptides containing Pro, Phe and/or Lys (m/z 186.0997, 228.1467, 257.1383, 259.189, 259.1902, 260.1375, 262.079, 273.1801, 278.1626, 337.1145, 348.1643, 364.1753, 371.2153, 373.208, 373.2214, 384.2497, 386.1753, 386.1915, 388.233, 398.1946, 398.1972, 400.2276, 403.2204, 409.1673, 414.1706, 417.2011, 432.2021, 432.2029, 442.2119, 445.2682, 450.2228, 468.2175, 475.1798, and 537.2395), were also below the detection limit in HIV-infected patients. Thus, a lower ability of gut ecosystem to transport and convert peptides to free Pro, Phe and Lys amino acids could be suggested.
5HC included both lean and high BMI individuals.
Figure 4HIV infection results in metabolic alterations in the gut microbiota that differ from those induced by other diseases.
(A) The intestinal epithelium in patients with SLE and CDADt+. The gut microbiota has the capacity to metabolize Pro, Phe and Lys, amino acids that accumulate inside bacterial cells. These amino acids are excreted by the bacteria into the gastrointestinal tract environment and are transported through the mucosa. The metabolism of tryptophan by gut bacteria is not affected. (B) The intestinal epithelium in an HIV-infected individual. These individuals are characterized by a gut microbiota comprising a distinct set of bacterial species that has a reduced capacity to synthesize Pro, Phe and Lys. Therefore, their ability to transport these amino acids to the human cells is also impaired. In contrast, tryptophan and kynurenine produced in the dendritic cells and macrophages of the mucosa can be transported to the gut environment and can be metabolized by gut bacteria.