| Literature DB >> 32295104 |
Rima M Chakaroun1, Lucas Massier1, Peter Kovacs1.
Abstract
The emerging evidence on the interconnectedness between the gut microbiome and host metabolism has led to a paradigm shift in the study of metabolic diseases such as obesity and type 2 diabetes with implications on both underlying pathophysiology and potential treatment. Mounting preclinical and clinical evidence of gut microbiota shifts, increased intestinal permeability in metabolic disease, and the critical positioning of the intestinal barrier at the interface between environment and internal milieu have led to the rekindling of the "leaky gut" concept. Although increased circulation of surrogate markers and directly measurable intestinal permeability have been linked to increased systemic inflammation in metabolic disease, mechanistic models behind this phenomenon are underdeveloped. Given repeated observations of microorganisms in several tissues with congruent phylogenetic findings, we review current evidence on these unanticipated niches, focusing specifically on the interaction between gut permeability and intestinal as well as extra-intestinal bacteria and their joint contributions to systemic inflammation and metabolism. We further address limitations of current studies and suggest strategies drawing on standard techniques for permeability measurement, recent advancements in microbial culture independent techniques and computational methodologies to robustly develop these concepts, which may be of considerable value for the development of prevention and treatment strategies.Entities:
Keywords: extra-intestinal microbiome; gut microbiome; insulin resistance; intestinal permeability; leaky gut; metabolic disease; obesity; type 2 diabetes
Mesh:
Year: 2020 PMID: 32295104 PMCID: PMC7230435 DOI: 10.3390/nu12041082
Source DB: PubMed Journal: Nutrients ISSN: 2072-6643 Impact factor: 5.717
Markers of intestinal permeability in noncommunicable disease.
| Permeability Marker | Tests | Direct/ | Sample Needed | Corresponding Literature |
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| Small intestinal permeability | direct | 24 h Urine | Bosi et al., 2006 [ |
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| Small intestinal permeability | direct | 24 h Urine | Mooradian et al., 1986 [ |
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| Entire intestine permeability | direct | 24 h Urine | Horton et al., 2012 [ |
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| Tight junction dysfunction | indirect | Serum/Plasma/Feces | Wang et al., 2000 [ |
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| Endotoxemia | indirect | Serum/Plasma | Cani et al., 2007 [ |
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| Measurement via LPS Binding potential | indirect | Serum | Ruiz et al., 2007 [ |
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| Gut inflammation | indirect | Serum | Ortega et al., 2012 [ |
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| Endotoxemia | indirect | Plasma | Hawkesworth et al., 2013 [ |
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| Ischemia | indirect | Plasma/Serum | Cox et al., 2017 [ |
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| Transepithelial | direct | Intestinal biopsies | Genser et al., 2018 [ |
Studies evidencing bacterial presence in remote organs and metabolic disease.
| Reference | Study Population | Tissue | Detection Method | Findings | Limitations |
|---|---|---|---|---|---|
| Amar et al., 2011 | 3280; 3149 without diabetes, 131 with incident diabetes | Blood | 16S rRNA gene concentration, pyrosequencing | 16S concentration slightly higher in diabetes (0.13 vs. 0.15, | Not matched for sex, age |
| Amar et al., 2013 | 3936, with 3, 6, and 9 years follow-up (73 cardiovascular events) | Blood | 16S rRNA gene quantification | Concentration of Proteobacteria was positively correlated with onset of cardiovascular events (OR 1.56 [1.1–2.2], | Quantification of all bacteria (Eubac) was lower compared with Proteobacteria (Probac), Tertiles not equally distributed, no negative controls reported, DNA was air-dried |
| Burcelin et al., 2013 | Not reported, | Adipose tissue stromal vascular fraction | 16S rRNA gene pyrosequencing | Shift from Firmicutes to Proteobacteria with increasing BMI, Ralstonia was associated with BMI | Figure with previously unpublished data in Review article, no methods reported |
| Sato, Konazawa et al., 2014 [ | 100, 50 with T2D, 50 control subjects | Blood, fecal samples | Targeted 16S rRNA gene amplification using Yakult Intestinal Flora-SCAN with group-, genus- and species-specific primers | Gut bacteria associated with T2D found in fecal samples (i.e., | No sequencing data, bias due to selection of primers, no negative controls reported |
| Ortiz et al., 2014 | 58 patients undergoing bariatric surgery and 3, 6, and 12 month follow-up | Blood | 16S rRNA gene quantification, | Translocation rate at baseline: 32.8% | Follow-up does not distinguish between surgery procedure (Roux-en-Y-gastric bypass (RYGB) or sleeve gastrectomy (SG)), no control group, no negative controls reported |
| Païssé et al., 2016 | 30 healthy subjects | Whole blood, buffy coat, red blood cells, plasma | 16S rRNA gene quantification, and sequencing of V3-V4 region by MiSeq | Most blood bacteria located in buffy coat (93.7%), followed by red blood cells (6.2%) and plasma (0.1%) | Small cohort size, |
| Lelouvier et al., 2016 | Discovery cohort with 50 patients and validation cohort with 71 patients, all obese but with different stages of liver fibrosis | Blood | 16S rRNA gene quantification, and sequencing of V3-V4 region by MiSeq | Quantity of bacterial DNA increased in liver fibrosis, | 16S metagenomic sequencing of stool was performed using different region (V1–V3), and sequencing platform (454 FLX), no negative controls reported, tissue in cohorts differed (buffy coat vs. whole blood) + large differences in quantification (652.6 vs. 3.1 copies/µL) |
| Pedicino et al., 2017 | 18 with acute coronary syndrome (ACS), 16 with stable angina (SA), and 13 controls from patients undergoing mitral insufficiency | Epicardial adipose tissue | 16S rRNA gene amplification (V1–V3) and sequencing (n = 3 per group) on GS junior platform | Predominant species in ACS: Cyanobacteria Streptophyta and Proteobacteria Rickettsiale, in SA Proteobacteria Moracellaceae and Pseudomonas | No technical negative controls, only few samples sequenced |
| Udayappanet al., 2017 | 12 patients | Mesenteric-visceral adipose tissue | Denaturing gradient gel electrophoresis and Sanger sequencing | Bacteria were found in mesenteric tissue, Actinobacteria are dominant Gram-positive and | Small sample size, non-state-of-the-art method introduces bias in reported bacteria (cloning and Sanger sequencing instead of next-generation amplicon sequencing) |
| Schierwagen et al., 2018 | 7 patients with decompensated liver cirrhosis | Central, hepatic, peripheral, and portal venous blood (buffy coat) | 16S rRNA sequencing | 4 Phyla reported, dominated by proteobacteria and Actinobacteria, composition did not differ between compartments, | Limited methods reported due to format (Letter), small sample size, no control group |
| Anhê, Jensen et al., 2020 | 40 patients with obesity (20 without T2D, 20 with T2D) | Liver, blood, adipose tissue | 16S rRNA quantification and sequencing (V3-4) | Bacterial DNA is present in adipose tissue and liver, | Although a strong point is negative controls, it becomes not clear how they were analyzed, clinical data is reported but not included in analysis |
| Massier, Chakaroun et al., 2020 | 75 patients with obesity (33 with T2D, 42 without T2D) | Omental, mesenteric, subcutaneous adipose tissue, blood | 16S rRNA quantification and sequencing (V4-5) | Bacterial DNA is present in all tested adipose tissue depots as well we blood, with dissimilarities between tissues being influenced by overall host inflammation and insulin resistance. Highest amounts of bacterial DNA were detected in the blood. Bacterial quantity was associated with macrophages infiltration and expression of inflammatory markers in adipose tissue. Living bacterial cells were detected in adipose tissue via CARD-FISH. | No inclusion of lean subjects |