| Literature DB >> 30513674 |
Lucrecia Carrera-Quintanar1, Daniel Ortuño-Sahagún2, Noel N Franco-Arroyo3, Juan M Viveros-Paredes4, Adelaida S Zepeda-Morales5, Rocio I Lopez-Roa6.
Abstract
Obesity is a noncommunicable disease that affects a considerable part of humanity. Recently, it has been recognized that gut microbiota constitutes a fundamental factor in the triggering and development of a large number of pathologies, among which obesity is one of the most related to the processes of dysbiosis. In this review, different animal model approaches, methodologies, and genome scale metabolic databases were revisited to study the gut microbiota and its relationship with metabolic disease. As a data source, PubMed for English-language published material from 1 January 2013, to 22 August 2018, were screened. Some previous studies were included if they were considered classics or highly relevant. Studies that included innovative technical approaches or different in vivo or in vitro models for the study of the relationship between gut microbiota and obesity were selected after a 16-different-keyword exhaustive search. A clear panorama of the current available options for the study of microbiota's influence on obesity, both for animal model election and technical approaches, is presented to the researcher. All the knowledge generated from the study of the microbiota opens the possibility of considering fecal transplantation as a relevant therapeutic alternative for obesity and other metabolic disease treatment.Entities:
Keywords: animal model; human; inflammatory disease; microbiota; obesity
Mesh:
Year: 2018 PMID: 30513674 PMCID: PMC6320813 DOI: 10.3390/ijms19123827
Source DB: PubMed Journal: Int J Mol Sci ISSN: 1422-0067 Impact factor: 5.923
Main complications in microbiota research using human individuals [5].
| Complications in Human Host Models | Solutions |
|---|---|
| Variation in host genome |
To control genotype variations in in vivo animal models To study individual human genome projects To look for interpersonal variations between monozygotic and dizygotic human twins |
| Environmental exposures (toxins, antibiotics, diet) |
All of these can be controlled in in vivo animal models |
| Tractability |
In vivo animal models offer the possibility of examining remote regions of the gut |
| Difficult-to-replicate experiments due to unique microbiota of each individual |
Possibility of transplanting the same microbiota into multiple animal hosts |
Animal models for microbiota research (images from Creative Commons).
| Animal Model | Main Characteristics of the Model | Aspect of the Microbiota to Study | Methodology Employed | Reference |
|---|---|---|---|---|
| (A) Hydra ( |
Tube-like body (similar to the human gut) Shares ancestral genes with humans Established protocols for generating germ-free or gnotobiotic animals |
Microbe–microbe relationships (including virome) and the impact on the host |
In vivo system | [ |
| (B) Honeybee ( |
Lower complexity of bacterial diversity All members of the honeybee microbiota can be cultured Established protocols for generating microbiota-free bees and recolonizing bees |
Function of bacteria in bee gut species |
In vivo system for strain interactions 16s rRNA sequencing | [ |
| (C) Zebrafish ( |
High reproduction rate Environment can be thoroughly sampled Can be raised with the same diet their entire lives |
Changes in microbial communities under a constant diet and trough different stages of age Effects of dietary fat on microbiota composition |
16s rRNA sequencing | [ |
| (D) Mice ( |
Germ-free mice Small size, large litters, and rapid generation time Techniques for maintaining a sterile environment in GF or gnotobiotic animals are critical |
Host–microbe interactions Role of microbiota in homeostasis, health, and diseases Role of the interaction between diet and microbiota and the mechanisms of obesity Effect and mechanisms of inoculation with known microbes |
16s rRNA sequencing Metabolomics, identification, and quantitation of metabolites | [ |
| (E) Rat ( |
Similar phyla in the gut compared to humans Good models for specific pathogen-free (SPF) experiments |
Effect of certain probiotics and prebiotics on the microbiota Effect of diet on the microbiota Role of the microbiota in diseases like obesity |
Amplification of bacterial 16S rRNA Microbial metabolites through gas chromatography fitted with a quadrupole mass spectrometry unit | [ |
| (F) Pig ( |
Similarities to humans in gastrointestinal tract functions, anatomical structure, metabolism, nutritional requirements, and bacterial phyla (Bacteroidetes and Firmicutes) As an obesity model, pigs are prone to sedentary behavior and fatten, similar to humans Distribution of fat and adipocyte size are similar in both species |
In obesity models, the microbiota interactions can be assessed under more controlled conditions in pigs than in human subjects |
qPCR available for amplification and quantification of target bacterial group and total bacteria Analysis of microbial metabolites such as ammonia and short chain fatty acids (SCFAs) using gas chromatography | [ |
Biases among molecular techniques.
| Technique/Process | Biases | Reference |
|---|---|---|
| Pyrosequencing |
15% of gram-negative bacteria are overlooked compared to transmission electron microscopy (TEM) analysis | [ |
| PCR amplification |
Bile salts and complex polysaccharides in feces inhibit amplification and affect assay accuracy | [ |
|
Some polysaccharides mimic the structure of nucleic acids and affect the enzymes | [ | |
| Disruption of bacterial membranes |
Specific bacterial taxa have differences in cell wall membrane integrity | [ |
| DNA extraction methods |
Different cell wall disruptors (enzymes, chemical agents, beads) and variables such as exposure time and DNA purification procedures may affect microbiota profiling | [ |
Figure 1Primary possibilities for microbiota research. To understand the roles and interactions of the microbiota, we can start from the animal sources for (a) the development of an in vivo model and to obtain samples such as feces or microbiota from the gut, and (b) to obtain gut regions and to develop in vitro continuous organ cultures that mimic the biological environment. Likewise, once the samples from the animal models are obtained, (c) culturomics can be used as a powerful approach to identify the uncultured members of the gut, search for differences between species at more than the phylum level, and generate results more quickly by coupling tools such as (d) matrix-assisted laser desorption/ionization–time of flight (MALDI–TOF) to generate valid and reproducible results. On the other hand, for both the culture and samples, the researcher can use (e) the metagenomics approach, which can be divided into two main techniques: (f) The 16S ribosomal sequence amplification, which provides information related to phyla and the abundance in the sample, or (g) whole microbial DNA sequencing, which provides more information than simply the phylum or abundance, showing the relationship between microbial enzymes, metabolic pathways, or genetic expression, and diseases such as obesity and others. This figure was made using Creative Commons resources and cannot be copyrighted by others.