| Literature DB >> 30723493 |
Denis Awany1, Imane Allali2, Shareefa Dalvie3, Sian Hemmings4, Kilaza S Mwaikono2, Nicholas E Thomford1, Andres Gomez5, Nicola Mulder2, Emile R Chimusa1.
Abstract
The involvement of the microbiome in health and disease is well established. Microbiome genome-wide association studies (mGWAS) are used to elucidate the interaction of host genetic variation with the microbiome. The emergence of this relatively new field has been facilitated by the advent of next generation sequencing technologies that enable the investigation of the complex interaction between host genetics and microbial communities. In this paper, we review recent studies investigating host-microbiome interactions using mGWAS. Additionally, we highlight the marked disparity in the sampling population of mGWAS carried out to date and draw attention to the critical need for inclusion of diverse populations.Entities:
Keywords: genome-wide association study; host-genetic; host–microbiome interaction; microbiome; microbiome-GWAS
Year: 2019 PMID: 30723493 PMCID: PMC6349833 DOI: 10.3389/fgene.2018.00637
Source DB: PubMed Journal: Front Genet ISSN: 1664-8021 Impact factor: 4.599
FIGURE 1Examples illustrating partial major technological and large-scale collaborative projects (excluding data repositories) on host and microbiome genome-wide association studies (GWAS).
FIGURE 2World map showing study location for host GWAS (represented by continent) and microbiome genome-wide association studies (mGWAS) (represented by country/study site). For host GWAS, the data reflects the state of GWAS in 2016 and the locations refers to continental regions and the proportions of host GWAS using samples recruited from those continental regions are as indicated in the legend [data retrieved from Popejoy and Fullerton (2016)]. For mGWAS, the locations refer to the country/study site where the individual for the study were recruited.
Summary list of microbiome genome-wide association studies (mGWAS) carried out to date.
| Study | Year | Sequencing method | Analysis software | Sample size and location | Microbiome sampling site | Microbiome phenotype studied | Comment | |
|---|---|---|---|---|---|---|---|---|
| 2015 | Shotgun metagenomic | PLINK | Multiple sites (15) | Alpha diversity, beta diversity, and bacterial taxa | 83 associations identified | Host genetic variants correlated with microbiome composition. Variants in the | ||
| 2015 | 16S rRNA | GEMMA | Gut | Bacterial taxa | ≥8 bacterial taxa associated with SNPs in host genome in each season | SNPs in regions of the | ||
| 2015 | 16S rRNA | microbiome GWAS | Lung | alpha diversity, beta diversity | Six SNPs had suggestive association with beta-diversity | Analysis performed using both weighted and unweighted UniFrac distance matrices. No SNPs were significantly associated after correcting for skewness and kurtosis of beta-diversity distributions. | ||
| 2016 | 16S rRNA | microbiome GWAS (for GWAS on the beta diversity measures) GEMMA (for GWAS on taxon) | Gut | Bacterial taxa, beta diversity | 31 associated host loci | |||
| 2016 | Shotgun metagenomic | “base” in R | Gut | Bacterial taxa, bacterial pathways | 42 associated host loci | Nine host loci associated with bacterial taxa, and 33 loci with bacterial pathways ( | ||
| 2016 | 16S rRNA | Not sated | Gut | Bacterial taxa and alpha diversity | 58 suggestive associations only six of which were significantly associated | Of these six SNPs, one was replicated in the replication cohort. Associated taxa included | ||
| 2016 | 16S rRNA | “envfit” in R | Gut | Bacterial taxa, beta diversity | 54 significant associations | 42 loci (which included variants in | ||
| 2017 | 16S rRNA | GEMMA | Vestibule and Nasopharynx sites | Relative abundance (RA) of bacterial taxa, alpha, and beta-diversity | 37 significant associations | Most significant association was between variant (rs117042385) upstream of the TINCR gene ( | ||
| 2017 | 16S rRNA | “snpStats” in R | Gut | beta diversity | 4four significant associations | The four loci were significantly associated with variation in beta diversity. Reanalysis using permutation-based analysis were still identified all these loci as genome-wide significant. | ||
| 2018 | Shotgun metagenomic | Matrix eQTL | Multiple sites (6six) | Relative abundance of bacterial taxa, bacterial pathway | five significant associations with bacterial taxa, and 82 with bacterial pathways | In stool, five species ( | ||
| 2018 | 16S rRNA and Shotgun metagenomic | “envfit” and “ordiR2step” in R and FaST-LMM | Gut | Relative abundance of bacterial taxa, alpha, and beta-diversity | seven suggestive associations | No significant association between host genetic variation and bacterial taxa or beta diversity, after correcting for multiple testing. |
FIGURE 3Possible direction of host–microbiome–environment interactions in the context of host phenotypes. (A) First possibility is that host-genetic polymorphism with or without the environmental effects will influence host phenotype independently of host–microbiome interactions. (B) Second possibility is that host genetic polymorphisms do not directly determine phenotype, but rather, host–microbiome interactions and environmental factors modulate the microbiome, which, in turn shapes the host phenotype. (C) Third possibility is that host genetic variation and microbiome changes, both influenced by environmental factors, affect host gene regulation which will control the host’s phenotype. (D) Fourth possibility that is the microbiome–environment interactions will directly affect host phenotype independently of host genetic.
FIGURE 4Illustrative representation of possible host and microbiome GWAS approaches. For mGWAS, different microbiome omic data could be individually or jointly regressed with host genomic data. Results from mGWAS and hGWAS will clarify on host-microbiome associations, effect of host-microbiome associations on the phenotype, and provide insight into biological system by giving a better view of the interaction networks that underlie expression of host phenotypes.