| Literature DB >> 29849617 |
Olga Castaner1,2, Albert Goday2,3,4, Yong-Moon Park5, Seung-Hwan Lee6, Faidon Magkos7, Sue-Anne Toh Ee Shiow8,9,10, Helmut Schröder1,11.
Abstract
Gut microbiome has been identified in the past decade as an important factor involved in obesity, but the magnitude of its contribution to obesity and its related comorbidities is still uncertain. Among the vast quantity of factors attributed to obesity, environmental, dietary, lifestyle, genetic, and others, the microbiome has aroused curiosity, and the scientific community has published many original articles. Most of the studies related to microbiome and obesity have been reported based on the associations between microbiota and obesity, and the in-depth study of the mechanisms related has been studied mainly in rodents and exceptionally in humans. Due to the quantity and diverse information published, the need of reviews is mandatory to recapitulate the relevant achievements. In this systematic review, we provide an overview of the current evidence on the association between intestinal microbiota and obesity. Additionally, we analyze the effects of an extreme weight loss intervention such as bariatric surgery on gut microbiota. The review is divided into 2 sections: first, the association of obesity and related metabolic disorders with different gut microbiome profiles, including metagenomics studies, and second, changes on gut microbiome after an extreme weight loss intervention such as bariatric surgery.Entities:
Year: 2018 PMID: 29849617 PMCID: PMC5933040 DOI: 10.1155/2018/4095789
Source DB: PubMed Journal: Int J Endocrinol ISSN: 1687-8337 Impact factor: 3.257
Lean/obese clinical trials.
| Study identification | Description |
| Population description | Outcomes |
|---|---|---|---|---|
| Kasai et al. 2015 [ | Cross-sectional study | 56 | Japanese population: 23 BMI < 20 kg/m2 and 33 BMI ≥ 25 kg/m2
| Bacterial diversity was significantly greater in obese subjects compared with nonobese subjects. |
| Microbiota fecal samples | ||||
| 16S DNA sequencing | ||||
| Corresponding OTU identified according to T-RFLP | ||||
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| Million et al. 2012 [ | Cross-sectional study | 115 | 68 obese and 47 controls |
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| Microbiota fecal samples | ||||
| qPCR targeting Firmicutes, Bacteroidetes, | ||||
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| Haro et al. 2016 [ | Cross-sectional study | 75 | 39 men and 36 women with CVD within CORDIOPREV study | F/B ratio changed with the BMI and between genders. |
| Baseline fecal samples | ||||
| 16S rRNA sequencing | ||||
| QIIME software | ||||
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| Lin et al. 2015 [ | Cross-sectional study | 659 | Healthy Chinese adults | BMI was not associated with the bacterial community diversity as assessed by alpha diversity in the models. |
| Upper gastrointestinal microbial diversity | ||||
| 16S rRNA sequencing | ||||
| HOMIM software | ||||
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| Angelakis et al. 2015 [ | Cross-sectional study | 10 | 5 lean subjects: BMI 20.7 | Firmicutes and Actinobacteria were the most predominant phyla of the bacterial composition of the duodenal microbiota in both groups. |
| Duodenal microbiota | ||||
| 16S rDNA sequencing | ||||
| Illumina MiSeq | ||||
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| Finucane et al. 2014 [ | Review of 4 different studies Human Microbiome Project (HMP) and MetaHIT | 159 | HMP project: 24 obese (BMI > 30) and 123 lean (BMI < 25) individuals | The interstudy variability in the taxonomic composition of stool microbiomes far exceeds differences between lean and obese individuals within studies. No quantitative association between the continuous BMI variable and the ratio of B/F. Variation in the relative abundance of F and B is much larger among studies than between lean and obese individuals within any study. MetaHIT and HMP go in the opposite direction [ |
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| Goodrich et al. 2014 [ | Cross-sectional study | 977 | Twin population: 416 twin pairs, mostly females, mean age 60.6 ± 0.3 years | The family Christensenellaceae was significantly enriched in subjects with a BMI < 25 compared to those with BMI > 30. Overall, a majority ( |
| Fecal samples from the twins UK population | ||||
| 16S rRNA | ||||
| Illumina MiSeq | ||||
| QIIME software | ||||
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| Bondia-Pons et al. [ | Cross-sectional study | 50 | 16 healthy monozygotic twin pairs discordant for weight (BMI difference > 3 kg/m2) | No differences in fecal bacterial diversity were detected when comparing cotwins discordant for weight. We found that within-pair similarity is a dominant factor in the metabolic postprandial response, independent of acquired obesity. |
| Fecal samples | ||||
| Diversity of the major bacterial groups by using 5 different validated bacterial group-specific DGGE methods | ||||
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| Murugesan et al. [ | Cross-sectional study | 190 | 190 unrelated Mexican children | No statistical significant differences in abundance of phylum. |
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| Ignacio et al. [ | Cross-sectional study | 84 | 30 obese, 24 overweight, and 30 lean children (3–11 years old) |
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| Hu et al. [ | Cross-sectional study fecal samples from 67 obese (BMI > 30 kg/m2) and 67 normal (BMI < 25 kg/m2) individuals | 134 | Korean adolescents aged 13–16 years | No significant differences in the Bacteroidetes, Firmicutes, and Proteobacteria populations in samples from normal and obese adolescents at the phylum level, although the proportion of |
T-RFLP reference human fecal microbiota profiling; qPCR: quantitative PCR; CVD: cardiovascular disease; DGGE: denaturing gradient gel electrophoresis.
Bariatric surgery clinical trials.
| Study identification | Description |
| Population description | Outcomes |
|---|---|---|---|---|
| Palleja et al. 2016 [ | Longitudinal observational study | 13 | Participants were recruited for bariatric surgery: BMI > 40 kg/m2 or BMI > 35 kg/m2 with T2D/hypertension | Gut microbial diversity increased within the first 3 months after RYGB and remained high 1 year later. RYGB led to altered relative abundances of 31 species: |
| Fecal samples | ||||
| Quantification of gut microbiomes at baseline ( | ||||
| 16S rDNA shotgun sequencing | ||||
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| Tremaroli et al. 2015 [ | Clinical trial | 21 | Weight-stable women 9 years after randomization to either RYGB or LSG and matched for weight and fat mass loss | Significant differences in microbiota composition for RYGB versus OBS samples but not for LSG versus OBS or RYGB versus LSG. |
| Fecal samples | ||||
| 16S rDNA | ||||
| Illumina HiSeq 2000 | ||||
| Shotgun sequencing | ||||
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| Damms-Machado et al. 2015 [ | Clinical trial | 10 | 10 unrelated subjects with obesity grade III at 3 time points: | Both interventions resulted in changes of the B/F ratio but with an inverse relationship between the main phyla. |
| Fecal samples | ||||
| SOLiD long-mate-paired shotgun sequencing | ||||
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| Graessler et al. 2013 [ | Clinical trial | 6 | 3 men and 3 women, recruited for RYGB | ↓ Firmicutes, Bacteroidetes, Actinobacteria, and Cyanobacteria. However, the ratios of B/F shifted from 0.99 to 1.31, showing an apparent increase. |
| Fecal samples | ||||
| 16S rDNA | ||||
| Illumina HiSeq 2000 | ||||
| Shotgun sequencing | ||||
BMI: body mass index, expressed as kg/m2; RYGB: Roux-en-Y gastric bypass; LSG: sleeve gastrectomy.