| Literature DB >> 32478040 |
Xiao-Yu Chen1, Hui-Ning Fan1, Huang-Kai Zhang2, Huang-Wen Qin1, Li Shen3, Xiang-Tian Yu3, Jing Zhang1, Jin-Shui Zhu1.
Abstract
The development of non-invasive, inexpensive, and effective early diagnosis tests for gastric and small-bowel lesions is an urgent requirement. The introduction of magnetically guided capsule endoscopy (MGCE) has aided examination of the small bowel for diagnoses. However, the distribution of the fecal microbiome in abnormal erosions of the stomach and small bowel remains unclear. Herein, alternations in the fecal microbiome in three groups [normal, small-bowel inflammation, and chronic gastritis (CG)] were analyzed by metagenomics and our well-developed method [individual-specific edge-network analysis (iENA)]. In addition to the dominant microbiota identified by the conventional differential analysis, iENA could recognize novel network biomarkers of microbiome communities, such as the genus Bacteroide in CG and small-bowel inflammation. Combined with differential network analysis, the network-hub microbiota within rewired microbiota networks revealed high-ranked iENA microbiota markers, which were disease specific and had particular pathogenic functions. Our findings illuminate the components of the fecal microbiome and the importance of specific bacteria in CG and small-bowel erosions, and could be employed to develop preventive and non-invasive therapeutic strategies.Entities:
Keywords: chronic gastritis; edge-network analysis; magnetically guided capsule endoscopy; metagenomics; small bowel erosion
Year: 2020 PMID: 32478040 PMCID: PMC7237573 DOI: 10.3389/fbioe.2020.00299
Source DB: PubMed Journal: Front Bioeng Biotechnol ISSN: 2296-4185
FIGURE 1Generalization of the study. (A) The screening and enrollment of patients through the study. (B) Representative magnetically guided capsule endoscopy (MGCE) images (stomach, duodenum, jejunum, and ileum) of the H group (health group), G group (chronic gastritis), and I group (small bowel inflammation). (C) The protocol for the metagenomic next-generation sequencing (mNGS) assay. After samples of stool are received in the hospital, DNA is isolated, followed by construction of a metagenomic NGS library and sequencing.
Demographic and clinical characteristics of the 15 subjects.
| Characteristic | Value |
| Age, years [median (range)] | 53 (24–65) |
| Gender male/female | 6/9 |
| Diagnosis | |
| Health | 5 (33.3%) |
| Gastritis alone | 5 (33.3%) |
| Small intestinal inflammation | |
| Duodenum erosion lesion | 1 (6.7%) |
| Jejunum erosion lesion | 1 (6.7%) |
| Ileum erosion lesion | 3 (20.0%) |
| Alanine aminotransferase | |
| Median (range), U/L | 18 (4–26) |
| Total bile acid | |
| Median (range), μmol/L | 3.35 (0.7–7.7) |
| Fecal occult blood testing | |
| Weakly positive | 1 (6.7%) |
| Negative | 14 (93.3%) |
FIGURE 2Microbiota composition distinguishing small-bowel inflammation and chronic gastritis. (A) The distribution of microbes in different samples. (B) The alpha-diversity of samples in different groups. (C) The abundance heatmap of differential microbes. (D) Principal component analysis (PCA) of samples with genus features. (E) PCA of samples with species features. (F) The differential functions between groups G (chronic gastritis), I (small bowel inflammation), and H (health group). (G) The differential functions between groups G and H.
FIGURE 3Microbiota community distinguishing small-bowel inflammation and chronic gastritis. (A) The distribution of CI scores distinguishes different groups on genus level. (B) The distribution of CI scores distinguishes different groups on species level. (C) The abundance heatmap of microbes in iENA markers. (D) The sPCC heatmap of microbe-pairs involved in iENA markers. (E) The microbe association network characterizing healthy state. (F) The microbe association network characterizing chronic gastritis state. (G) The microbe association network characterizing small bowel-inflammation state.