| Literature DB >> 24036685 |
Alexander V Tyakht1, Elena S Kostryukova, Anna S Popenko, Maxim S Belenikin, Alexander V Pavlenko, Andrey K Larin, Irina Y Karpova, Oksana V Selezneva, Tatyana A Semashko, Elena A Ospanova, Vladislav V Babenko, Igor V Maev, Sergey V Cheremushkin, Yuriy A Kucheryavyy, Petr L Shcherbakov, Vladimir B Grinevich, Oleg I Efimov, Evgenii I Sas, Rustam A Abdulkhakov, Sayar R Abdulkhakov, Elena A Lyalyukova, Maria A Livzan, Valentin V Vlassov, Renad Z Sagdeev, Vladislav V Tsukanov, Marina F Osipenko, Irina V Kozlova, Alexander V Tkachev, Valery I Sergienko, Dmitry G Alexeev, Vadim M Govorun.
Abstract
The microbial community of the human gut has a crucial role in sustaining host homeostasis. High-throughput DNA sequencing has delineated the structural and functional configurations of gut metagenomes in world populations. The microbiota of the Russian population is of particular interest to researchers, because Russia encompasses a uniquely wide range of environmental conditions and ethnogeographical cohorts. Here we conduct a shotgun metagenomic analysis of gut microbiota samples from 96 healthy Russian adult subjects, which reveals novel microbial community structures. The communities from several rural regions display similarities within each region and are dominated by the bacterial taxa associated with the healthy gut. Functional analysis shows that the metabolic pathways exhibiting differential abundance in the novel types are primarily associated with the trade-off between the Bacteroidetes and Firmicutes phyla. The specific signatures of the Russian gut microbiota are likely linked to the host diet, cultural habits and socioeconomic status.Entities:
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Year: 2013 PMID: 24036685 PMCID: PMC3778515 DOI: 10.1038/ncomms3469
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919
Figure 1Country-wide sampling highlights distinct features of Russian gut microbiota.
(a) Sampling sites in Russia (n=8). Square and round bullets denote urban and rural areas, with the corresponding size and number inside representing the number of samples obtained at the site. (b) Two dimensional non-metric multidimensional scaling plot based on modified weighted UniFrac metric reveals a gradient structure of taxonomic composition in which Chinese (magenta) and Danish (green) occupy intermediate positions between Russian (red) and US (blue) samples. Two outliers (SAR_274 and NOV_283) with high proportions of Methanobrevibacter, Akkermansia or Escherichia/Shigella were excluded.
Figure 2Hosts from the same villages form subgroups with similar microbiota.
Heat map showing the relative abundance of major genera (contributing >1% of the total abundance in at least one sample) for three compact subgroups, which are separated by white lines. Clustering was performed using a Spearman’s correlation-based dissimilarity metric and Ward linkage. Row-side label colours denote the samples from the prevalent regions: green–Tatarstan, blue–Omsk, magenta–Tyva and black–other.
Figure 3Two dimensional non-metric multidimensional scaling (NMDS) plot of Russian metagenomes by taxonomic composition.
UniFrac distances of 96 Russian samples were used in generating the NMDS. Point colour denotes sampling site, whereas shape denotes settlement size.
Figure 4Assessment of clustering quality for Russian cohort.
There is a dependency between number of clusters in Russian cohort, calculated from three distance matrices (Bray–Curtis, UniFrac and Jensen–Shannon distances) and three quality indices: Calinski–Harabasz (CH), ASW and Prediction Strength (PS). The CH index is plotted, suggesting two as the optimal number of clusters for each distance matrix. For all of the metrics, the ASW values are rather low (below 0.5, which is the suggested threshold value for meaningful clustering5), although the prediction strength is high (above 0.8). The suggested thresholds are plotted in grey.
Figure 5Overrepresentation of phosphotransferase system genes in Russian samples compared with US and Danish samples.
Overrepresented pathways were identified using Mann–Whitney’s one-sided test with false-discovery rate-adjusted P-values as described in Methods. The KO terms that are differentially abundant between the groups are indicated in colour.