| Literature DB >> 35477382 |
Xian-Bao Li1,2, Xiu-Jie Chu1,2, Nv-Wei Cao1,2, Hua Wang1,2, Xin-Yu Fang1,2, Yin-Guang Fan1,2, Bao-Zhu Li3,4, Dong-Qing Ye5,6.
Abstract
BACKGROUND: Currently, few studies focus on the association between gut microbiota and systemic lupus erythematosus (SLE), and much less studies consider the effect of drug usage. Proton pump inhibitors (PPIs) are commonly used to treat drug-related gastrointestinal damage in SLE patients. Therefore, the purpose of this study is to examine the gut microbiota of SLE patients using PPIs.Entities:
Keywords: Gut microbiota; Proton pump inhibitors; Systemic lupus erythematosus
Mesh:
Substances:
Year: 2022 PMID: 35477382 PMCID: PMC9043501 DOI: 10.1186/s12866-022-02533-x
Source DB: PubMed Journal: BMC Microbiol ISSN: 1471-2180 Impact factor: 4.465
Clinical characteristics of all subjects in this study
| HCs | SLE | ||
|---|---|---|---|
| P-SLE | NP-SLE | ||
| Fecal samples | 17 | 20 | 20 |
| Age, years, mean ± SD | 30.12 ± 14.14 | 34.25 ± 10.54 | 35.95 ± 10.27 |
| BMI, kg/m2, mean ± SD | 22.48 ± 2.51 | 22.49 ± 3.39 | 23.16 ± 2.78 |
| Disease duration, years, median (IQR) | - | 1.5(0.15–4.7) | 5.5(0.7–10.75) |
| SLEDAI, mean ± SD | - | 9.65 ± 4.78 | 6.5 ± 4.51 |
| ESR, mm/h, mean ± SD | - | 48.8 ± 28.99 | 31.5 ± 20.68 |
| CRP, mg/l, mean ± SD | - | 12.08 ± 25.72 | 9.59 ± 20.63 |
| C3, g/l, mean ± SD | - | 0.64 ± 0.24 | 0.76 ± 0.34 |
| C4, g/l, mean ± SD | - | 0.10 ± 0.09 | 0.13 ± 0.08 |
| Lupus nephritis, n (%) | - | 9(45) | 6(30) |
| Positive anti-dsDNA, n (%) | - | 11(55) | 14(70) |
| Positive anti-SSA, n (%) | - | 14(70) | 15(75) |
| Positive anti-SSB, n (%) | - | 4(20) | 6(30) |
| Positive anti-RNP, n (%) | - | 11(55) | 16(80) |
| Drugs use | |||
| Hydroxychloroquine, n (%) | - | 15(75) | 18(90) |
| Glucocorticoid, n (%) | - | 18(90) | 17(85) |
| Immunosuppressant, n (%) | - | 10(50) | 6(30) |
| NSAIDs, n (%) | - | 3(15) | 6(30) |
HCs healthy controls, PPIs Proton pump inhibitors, P-SLE SLE patients who received PPIs, NP-SLE SLE patients who didn’t receive PPIs, IQR interquartile range, DAI Disease activity index, NSAIDs Non-Steroidal Anti-inflammatory Drugs
Fig. 1Diversities of the gut microbiota among P-SLE patients, NP-SLE patients and HCs. A inverse Gini-Simpson index; The middle line in the box plot represents the median value, and the box is drawn from the 25% to75% quartiles. B Principal coordinate analysis (PCoA) of the bacterial community structures in HCs, P-SLE patients and NP-SLE patients. HCs: healthy controls; P-SLE: SLE patients with PPIs; NP-SLE: SLE patients without PPIs
Fig. 2Characteristics of the microbial composition in SLE patients with PPI use. A Relative abundance of the dominant bacteria at phylum level in the gut microbiota of SLE patients with or without PPIs use and the HCs group; B Relative abundance of the dominant bacteria at phylum level in the gut microbiota of SLE patients with or without PPIs use and the HCs group; C Relative abundance of the dominant bacteria at genus level in the gut microbiota of SLE patients with or without PPIs use and the HCs group. HCs: healthy controls; P-SLE: SLE patients with PPIs; NP-SLE: SLE patients without PPIs
Fig. 3Compositions of the gut microbiota among SLE patients and HCs. LEfSe analysis was performed to identify differentially abundant taxa by the phylogenetic tree; Linear discriminant analysis (LDA) results were showed by LDA score. HCs: healthy controls; P-SLE: SLE patients with PPIs; NP-SLE: SLE patients without PPIs
Fig. 4Redundancy analysis based on Bray–Curtis dissimilarity. RDA analysis indicated that only PPIs were significant explanatory variables for microbiome composition (P < 0.05). CRP: C-reactive protein; ESR: Erythrocyte sedimentation rate; HCQ: Hydroxychloroquine; SLEDAI: Systemic Lupus Erythematosus Disease Activity Index 2000; DD: Disease duration; LN: Lupus nephritis; C3: Complement 3; C4: Complement 4; P-SLE: SLE patients with PPIs; NP-SLE: SLE patients without PPIs
Fig. 5Association network analysis of PPIs, microbiota and KEGG pathways in P-SLE and NP-SLE patients. The diamonds represent PPI, the circles represent species, the squares represent KEGG category, and the different colors of species represent different phyla-level classifications; the thickness of the lines represents the strength of correlation, pink represents positive correlation, and blue represents negative correlation