| Literature DB >> 30832423 |
Ana Isabel Álvarez-Mercado1,2, Miguel Navarro-Oliveros3, Cándido Robles-Sánchez4,5, Julio Plaza-Díaz6,7,8, María José Sáez-Lara9, Sergio Muñoz-Quezada10,11, Luis Fontana12,13,14, Francisco Abadía-Molina15,16.
Abstract
Specific microbial profiles and changes in intestinal microbiota have been widely demonstrated to be associated with the pathogenesis of a number of extra-intestinal (obesity and metabolic syndrome) and intestinal (inflammatory bowel disease) diseases as well as other metabolic disorders, such as non-alcoholic fatty liver disease and type 2 diabetes. Thus, maintaining a healthy gut ecosystem could aid in avoiding the early onset and development of these diseases. Furthermore, it is mandatory to evaluate the alterations in the microbiota associated with pathophysiological conditions and how to counteract them to restore intestinal homeostasis. This review highlights and critically discusses recent literature focused on identifying changes in and developing gut microbiota-targeted interventions (probiotics, prebiotics, diet, and fecal microbiota transplantation, among others) for the above-mentioned pathologies. We also discuss future directions and promising approaches to counteract unhealthy alterations in the gut microbiota. Altogether, we conclude that research in this field is currently in its infancy, which may be due to the large number of factors that can elicit such alterations, the variety of related pathologies, and the heterogeneity of the population involved. Further research on the effects of probiotics, prebiotics, or fecal transplantations on the composition of the human gut microbiome is necessary.Entities:
Keywords: gut microbiota; health status; inflammatory bowel disease; microbial population changes; non-alcoholic fatty liver disease; non-communicable diseases; obesity; randomized clinical trial
Year: 2019 PMID: 30832423 PMCID: PMC6463060 DOI: 10.3390/microorganisms7030068
Source DB: PubMed Journal: Microorganisms ISSN: 2076-2607
Microbiota changes associated with obesity.
| Reference | Characteristics | Disease | Method | Primary Results |
|---|---|---|---|---|
| Turnbaugh et al., 2009 [ | 154 adult female monozygotic and dizygotic twin pairs concordant for leanness or obesity | Obesity | Sequencing | Gut microbiomes are shared among family members, but the gut microbial community varies in each individual. |
| Ignacio et al., 2016 [ | Correlation between BMI and fecal microbiota in 84 children | Obesity | qRT-PCR | Significant association between the number of |
| Riva et al., 2017 [ | Characterization of the gut microbiota in 78 obese and normal-weight children aged 6 to 16 | Obesity | Sequencing | Elevated levels of Firmicutes and depleted levels of Bacteroidetes. |
| Nicolucci et al., 2017 [ | 42 obese children who received either oligofructose-enriched inulin or placebo | Obesity | Sequencing | Significant increases in species of the genus |
| Zhang et al., 2015 [ | Intervention trial in 38 Prader-Willi syndrome and simple obesity children. | Prader-Willi syndrome and obesity | Analysis of prevalent bacterial draft genomes assembled directly from metagenomic datasets | Non-digestible carbohydrates induced significant weight loss and concomitant structural changes in the gut microbiota. |
| Bai et al., 2018 [ | 267 children (7–18 years old) analyzed according to their lifestyles | Obesity | Sequencing | Lower BMI and exercise frequency were associated with depleted Actinobacteria; Proteobacteria was significantly enriched in individuals with higher BMI levels; and Firmicutes was significantly enriched in individuals participating in frequent exercise. |
| Rampelli et al., 2018 [ | 70 children analyzed in a two-time point 4-year prospective study | Pre-obese | Sequencing | Pre-obese dysbiosis and unhealthy diets were correlated and suggested to be predictors of obesity. |
| Tremaroli et al., 2015 [ | Gut microbiome analysis of 14 women 9.4 years after bariatric surgery was performed | Obesity | High-quality Illumina reads alignment analysis | Bariatric surgery induces long-term alterations in the human gut microbiome. Surgically altered microbiomes contribute to fat mass regulation. |
| Palleja et al., 2016 [ | Gut microbiome analysis 1 and 3 months after bariatric surgery in 13 patients | Obesity | Shotgun metagenomic sequencing | 31 microbial species showed altered relative abundances within the first 3 months, 16 of which maintained their altered relative abundances 1 year after surgery. |
| Liu et al., 2017 [ | Gut microbiome analysis of obese and post-bariatric intervention individuals in a cohort of 257 lean and obese young individuals | Obesity | Metagenome-wide association | Abundance of |
| Aron-Wisnewsky et al. [ | 61 severely obese subjects of whom 24 were followed 1, 3, and 12 months post-bariatric surgery | Obesity | Shotgun metagenomics | Although bariatric surgery increased MGR one year after surgery, most RYGB patients remained with low MGR one year postsurgery. |
| Del Chierico et al., 2018 [ | Gut microbiome analysis of 69 adolescent and adult patients | Obesity | Sequencing | Microbial markers, |
| Le Chatelier et al., 2013 [ | Gut microbiome analysis of 292 adult patients | Obesity | Sequencing | Individuals with low bacterial richness are characterized by increased overall adiposity compared to high bacterial richness individuals. |
Abbreviations: BMI: body mass-index; MGR: microbial gene richness; qRT-PCR: quantitative polymerase chain reaction; rRNA: ribosomal ribonucleic acid; RYGB: Roux-en-Y gastric bypass.
Microbiota changes associated with inflammatory bowel disease.
| Reference | Disease | Intervention | Primary Results | Method |
|---|---|---|---|---|
| Sitkin et al., 2018 [ | 40 UC patients | - | High | qRT-PCR |
| Ishikawa et al., 2018 [ | 36 UC mild–severe patients | FMT+AFM pretreatment | Bacteroidetes were recovered. | Sequencing |
| Matsuoka et al., 2018 [ | 43 UC remission patients, 20–70 y/o | Increase in | qRT-PCR | |
| Phillips et al., 2018 [ | UC quiescent | Low fat diet | High Bacteroidetes. | - |
| Ananthakrishnan et al., 2017 [ | 43 UC patients | Vedolizumab | In non-remission, high | Sequencing |
| Lamere et al. 2017 [ | 59 UC patients | Andecaliximab | High | Sequencing |
| Fuentes et al., 2017 [ | 33 UC mild–moderate patients | FMT | Low | Sequencing |
| Dobrolyubova et al., 2017 [ | 162 UC patients, 35–41 y/o | 5-ASA | In remission, low | - |
| Lee et al., 2016 [ | 22 UC active and remission patients, >18 y/o | - | Bacteroidetes absent in patients with active UC. | Sequencing |
| De Caro et al., 2016 [ | 14 UC active and remission patients, mean 39 y/o | Infliximab, adalimumab, azathioprine or 5-ASA | Low bifidobacteria. | Metagenomic |
| Paramsothy et al., 2016 [ | 81 UC patients | FMT | Sequencing | |
| Hart et al., 2016 [ | 7 UC patients, 5–18 y/o | CS | High bifidobacteria and | Sequencing (16S rRNA) |
| Rossen et al., 2015 [ | 58 mild–moderate UC patients | - | Low | qRT-PCR |
| James et al., 2014 [ | 37 UC patients, >18 y/o | - | UC patients have more | qRT-PCR |
| Doherty et al., 2017 [ | 350 moderate–severe CD patients, 18–76 y/o | Ustekinumab | High | Sequencing |
| Zhou et al., 2017 [ | 16 CD patients | Infliximab | Incremental change in | Sequencing |
| Yang et al., 2017 [ | 31 active CD patients | FMT | Low | Sequencing |
| Hart et al., 2016 [ | 22 CD patients, 5–18 y/o | EEN or CS | Decreased in | Sequencing |
| Halmos et al., 2015 [ | 8 quiescent CD patients | FODMAP diet | Increased | - |
| Suskind et al., 2015 [ | 9 mild–moderate CD patients, 12–19 y/o | FMT | High | Sequencing |
| Rajca et al., 2015 [ | 19 relapser and 14 non-relapser patients | - | Low | Sequencing (V4 16S rRNA) |
Abbreviations: 5-ASA: mesalazine; AFM: amoxicillin-fosfomycin-metronidazole; BPB: butyrate-producing bacteria; CD: Crohn’s disease; CS: corticosteroid; EEN: exclusive enteral nutrition; FMT: fecal microbiota transplantation; FODMAP: fermentable oligo-di-mono-saccharides and polyols; IBD: inflammatory bowel disease; qRT-PCR; quantitative polymerase chain reaction; rRNA: ribosomal ribonucleic acid; UC: ulcerative colitis; V4: hypervariable 16S region; y/o: years old.
Microbiota changes associated with non-alcoholic fatty liver disease.
| Reference | Characteristics | Intervention | Time | Methodological | Primary Results |
|---|---|---|---|---|---|
| Del Chierico | 61 children and adolescents (7–16 y/o). NAFLD ( | NA | NA | Metagenomics and metabolomics analyses | Firmicutes, Bacteroidetes, Proteobacteria, and Actinobacteria were the principal differences. |
| Kessouku | 201 adults. NAFLD = 143 (77 mild fibrosis and 56 severe fibrosis) | NA | NA | 16S rRNA gene sequencing and blood endotoxin activity assay | |
| Lelouvier | 44 adults (40–60 y/o) BMI > 40. Fibrosis | NA | NA | 16S rRNA gene quantitation by qRT-PCR and 16S metagenomic sequencing | Changes in |
| Anh et al., 2018 [ | 34 adults | Mixture of lactobacilli and bifidobacteria | 12 | qRT-PCR and 16S rRNA gene microbiome sequencing | Fatty liver improvement related to increases in |
| Bomhof | Adults | Oligofructose | 24 | Not indicated | Increase in |
| Manzhalii | 38 adults | Probiotic cocktail: | 12 | Not indicated | Increased abundances of bifidobacteria, |
Abbreviations: BMI: body mass index; LF: liver fibrosis; NA: non-applicable; NAFLD: non-alcoholic fatty liver disease; NASH: non-alcoholic steatohepatitis; RT-qPCR: quantitative polymerase chain reaction; rRNA: ribosomal ribonucleic acid; y/o: years old.
Microbiota changes associated with insulin resistance syndrome.
| Reference | Characteristics | Procedure | Main Results |
|---|---|---|---|
| Kushugulova et al., 2018 [ | 58 IRS patients | 16S rRNA gene sequencing | IRS patient showed reduced Firmicutes/Bacteroidetes ratio, |
| Haro et al., 2017 [ | 33 adult obese patients with severe IRS vs. 32 non IRS obese patients and 41 normal-weight subjects | 16S rRNA gene sequencing | After administration of MD and LF diet for 2 years, MD decreased the F/B ratio, Bacteroidetes, |
| Haro et al., 2016 | 138 IRS patients | 16S rRNA gene sequencing | At time 0, increased |
| Salonen et al., 2014 [ | 12 adult IRS patients | HITChip phyloge | Dietary intervention: 1 week M diet, 3 weeks RS diet, 3 weeks NSP diet, and 3 weeks WL diet. Multiple |
| Moreno-Indias et al., 2015 [ | 10 adult IRS patients | RT-PCR | Intake of wine and de-alcoholized red wine for 30 days/each increased bifidobacteria and |
| Ni Y el al., 2018 [ | 12 elderly IRS patients (60–90 y/o) | 16S rRNA gene sequencing | YDT supplementation for 4 days reduced |
| Roager et al., 2019 [ | 50 IRS patients | 16S rRNA gene sequencing | Administration of whole vs. refined grains for 8 weeks increased |
| Smits et al., 2018 [ | 10 adults IRS | 16S rRNA gene sequencing | Vegan FMT increased the levels of |
| Velikonja et al., 2018 [ | 27 adults IRS patients | qRT-PCR, and 16S rRNA gene sequencing | β-Glucans induced an increase in |
| Stadlbauer et al., 2015 [ | 13 adults IRS patients | 16S rRNA gene sequencing | Intake of LcS for 12 weeks increased |
| Vrieze et al., 2014 [ | 100 adults IRS patients | qRT-PCR and Human Intestinal Tract Chip microarray | Administration of 500 mg/day of vancomycin for 1 week reduced Gram-positive bacteria (especially Firmicutes), secondary bile acids and peripheral insulin sensitivity while increasing Gram-negative bacteria (especially Proteobacteria) and reducing peripheral insulin sensitivity. |
Abbreviations: F/B: Firmicutes/Bacteroidetes ratio; FMT: fecal microbiota transplantation; IRS: insulin resistance syndrome; LcS: Lactobacillus casei Shirota; M: standard diet at weight maintenance; MD: Mediterranean diet; NSP: high in non-starch polysaccharides; qRT-PCR; quantitative polymerase chain reaction; rRNA: ribosomal ribonucleic acid; RS: one high in type 3 resistant starch; V4: hypervariable 16S region; YDT: Yangyin Tiluo Decoction; y/o: years old.
Microbiota changes associated with diabetes mellitus type II.
| Reference | Characteristics | Procedure | Primary Results |
|---|---|---|---|
| Stefanaki et al., 2018 [ | RCT with 50 adolescents. Probiotics and healthier lifestyle interventions | Body composition, glycemic and gut microbiota measurements | Probiotic administration was safe and useful for preventing the onset of pre-diabetes. |
| Tong et al., 2018 [ | RCT in T2D and hyperlipidemia patients for 12 weeks with metformin and Chinese medicine treatment in 450 patients | 16S rRNA gene (V3 and V4 regions) sequencing | Significantly decreased hyperglycemia and hyperlipidemia, enrichment in |
| Zhao et al., 2018 [ | 43 Chinese patients administered a high-fiber diet/prebiotics and a control. Both groups were treated with acarbose | Identification of SCFA-producing bacterial strains by metagenomic sequencing | Increased SCFA levels in the human bowel of the dietary fibers/prebiotics group. Improvement in hemoglobin A1c levels by elevating glucagon-like petide-1 production. |
| Roshanravan et al., 2018 [ | 59 overweight and obese patients with T2D received sodium butyrate, inulin powder or both or a placebo | 16S rRNA gene analysis of | Increased |
| Medina-Vera et al., 2018 [ | 81 patients with T2D divided into placebo and functional food-based diet (high fiber, polyphenol rich and vegetable protein) groups | Determination of fecal microbiota | Increased |
| Elbere et al., 2018 [ | 18 healthy subjects were treated with metformin for 7 days | 16S rRNA gene (V3 region) | Diversity of gut microbiota decreased (reduction of |
| Shimozato et al., 2017 [ | 66 T2D patients with and without chronic bowel movement disorder treated with placebo or transglucosidase | Analysis of fecal microbiota (amplification of 16S rRNA gene with T-RFLP) | Transglucosidase treatment modified the fecal microbiota ( |
| Canfora et al., 2017 [ | Supplementation with galacto-oligosaccharides in 44 prediabetic patients | Fecal microbiota composition | Galacto-oligosaccharide supplementation increased |
| Sato et al., 2017 [ | Supplementation with | Analysis of fecal microbiota | Probiotic administration increased |
| Mobini et al., 2016 [ | 46 patients with T2D on insulin therapy and | Fecal microbiota composition | No changes in microbiota were observed. |
Abbreviations: PCR: polymerase chain reaction; RCT: randomized clinical trial; mRNA: messenger RNA; rRNA: ribosomal ribonucleic acid; SCFA: short chain fatty acid; T2D: type 2 diabetes; TMAO: trimethylamine N-oxide; TNF-α: tumor necrosis factor alpha; TRFLP: terminal restriction fragment length polymorphism; V3 or V4: hypervariable 16S region.
Figure 1Schematic representation of the microbiota alterations in various disorders and the current therapies to counteract their effects. Abbreviations. DC: dendritic cells; NAFLD: non-alcoholic fatty liver disease; SCFA: short-chain fatty acids.