| Literature DB >> 34732258 |
Amy M Tsou1,2,3,4, Jeremy A Goettel5,6,7, Bin Bao5,6, Amlan Biswas5,6, Yu Hui Kang5,6, Naresh S Redhu5,6, Kaiyue Peng5,8, Gregory G Putzel9, Jeffrey Saltzman5, Ryan Kelly5, Jordan Gringauz5, Jared Barends5, Mai Hatazaki9, Sandra M Frei5,6, Rohini Emani5,6, Ying Huang8, Zeli Shen10, James G Fox10, Jonathan N Glickman6,11, Bruce H Horwitz5,6,12, Scott B Snapper13,14,15.
Abstract
BACKGROUND: The gut microbiome is altered in patients with inflammatory bowel disease, yet how these alterations contribute to intestinal inflammation is poorly understood. Murine models have demonstrated the importance of the microbiome in colitis since colitis fails to develop in many genetically susceptible animal models when re-derived into germ-free environments. We have previously shown that Wiskott-Aldrich syndrome protein (WASP)-deficient mice (Was-/-) develop spontaneous colitis, similar to human patients with loss-of-function mutations in WAS. Furthermore, we showed that the development of colitis in Was-/- mice is Helicobacter dependent. Here, we utilized a reductionist model coupled with multi-omics approaches to study the role of host-microbe interactions in intestinal inflammation.Entities:
Keywords: Defined consortium; Gut microbiota; Immune dysregulation; Intestinal inflammation; Pathobiont; Wiskott-Aldrich syndrome
Mesh:
Year: 2021 PMID: 34732258 PMCID: PMC8565002 DOI: 10.1186/s40168-021-01161-3
Source DB: PubMed Journal: Microbiome ISSN: 2049-2618 Impact factor: 14.650
Fig. 1.WASP deficiency results in altered composition of the fecal microbiota. A–C Fecal microbial composition of Was (n = 5) and WT (n = 3) mice raised under SPF conditions with weekly bedding exchanges was analyzed monthly between 4 and 20 weeks of age by 16S rRNA gene sequencing. A Compositional dissimilarity between mice of the same genotype compared to mice of different genotypes was assessed by Bray-Curtis distance. Relative abundances of Mucispirillum (B) and H. bilis (C) were determined for each genotype at each timepoint. D SPF Was mice were re-derived in a Helicobacter species free environment (n = 14), and a subset was infected with H. bilis (n = 9). Fecal microbial composition was assessed at 7–9 months post infection. Principal coordinate analysis of Bray-Curtis distances was performed after H. bilis sequences were removed from the dataset. Statistics performed using PERMANOVA (A and D) and Student’s t-test (B and C). *p < 0.05, **p < 0.01
Fig. 2Development of intestinal inflammation requires both the pathobiont, H. bilis, as well as commensal bacteria in the context of host immune dysregulation. A, B WT and Was mice were colonized with the indicated gut microbial communities. A Representative H&E-stained formalin-fixed paraffin-embedded proximal colon sections at 20 weeks after colonization. 20× magnification, scale bars = 100μm. B Quantitative histological colitis scores at 20 weeks after colonization (n = 5,4,5,5,6,3,8,8). C–E Germ-free WT/HET (n=28) and Was (n = 21) mice were colonized with the ASF community and a subset (WT/HET (n = 17) and Was (n = 13)) were gavaged with H. bilis. C Spleen weights were measured 20 weeks after gavage with H. bilis. Colonic lamina propria lymphocytes were isolated 20 weeks after infection with H. bilis, and percentages of IL17-A+ CD4 T cells (D) and IL-22+ ILC3s (E) were determined by flow cytometry. Statistics performed using Student’s t-test. *p < 0.05, ***p < 0.001
Fig. 3Correlation between the relative abundance of the pathobiont H. bilis and the degree of intestinal inflammation depends upon the host genotype. Germ-free WT/HET (n=17) and Was (n = 13) mice were colonized with the ASF community and then gavaged with H. bilis. A Development of intestinal inflammation was monitored by measuring fecal LCN2 serially. Fecal microbial composition was assessed longitudinally by 16S rRNA sequencing. B Compositional dissimilarity between mice of the same genotype compared to mice of different genotypes as measured by Bray-Curtis distance. Relative abundance of H. bilis (C) and ASF519 P. goldsteinii (D) over time by genotype. Correlations between log-transformed fecal LCN2 and relative abundances of H. bilis (E) and ASF519 P. goldsteinii (F) for all timepoints. Tests for linear dependence of log-transformed LCN2 on the relative abundance of each bacterial species was done using a linear mixed-effects model, taking into account a mouse-specific random effect (E and F). Wilcoxon’s rank-sum test was used for (A), (C), and (D) and PERMANOVA for (B). *p < 0.05, **p < 0.01, ***p < 0.001
Fig. 4Colitis in WASP deficiency is associated with breach of the mucus barrier by the intestinal microbiota, and severity of colitis is correlated with the mucosal abundance of ASF457 M. schaedleri. Germ free WT/HET (n=17) and Was (n = 13) mice were colonized with the ASF community and then gavaged with H. bilis. The mucosal-associated microbiota was assessed at 20 weeks post infection. A Proximal colon sections from representative Was and Was mice stained with a universal bacterial probe (EUB338, red), for mucus using the lectin UEA-1 (green), and with DAPI (blue). Distances between epithelial cells and bacteria were quantified for 3 randomly chosen fields of view for each of 5 WT/HET and 4 Was mice. Each data point represents the average of 10 measurements taken across a field of view. Data shown as mean +/− S.E.M. Statistics done by Welch’s t-test. *** p < 0.001. B Comparison between fecal and mucosal-associated microbiota composition based on 16S rRNA sequencing. Pearson’s correlations between log-transformed fecal LCN2 and mucosal relative abundances of H. bilis (C), ASF457 M. schaedleri (D), and ASF519 P. goldsteinii (E) in Was mice
Fig. 5Colitis in WASP deficiency results in microbial transcriptional changes associated with stress adaptation and immunogenicity. Germ-free WT/HET and Was mice were colonized with the ASF community and a subset were gavaged with H. bilis. Feces from 3 mice of each genotype/microbiota combination (WT/HET or Was with or without H. bilis) at 15 weeks after H. bilis gavage were subjected to bacterial metatranscriptomic sequencing. A Principal component analysis of high variance Gene Ontology (GO) terms for all samples. Statistics calculated by PERMANOVA comparing WT/HET with Was samples. B Heatmap of high variance GO terms. Color scale indicates row-wise z-scores of log-transformed CPM values. BP, biological process: CC, cellular component, MF, molecular function. C–E RNA-seq volcano plots showing differential gene expression of H. bilis (C), ASF457 M. schaedleri (D), and ASF519 P. goldsteinii (E) in Was (positive log2(fold change (FC)) compared to WT/HET (negative log2(FC)) mice colonized with ASF and H. bilis. Y-axis shows p-values corrected for multiple comparison. Red dots represent genes that are significantly differentially expressed as determined by the DESeq2 Wald test