2019
DOI: 10.1038/s41598-019-55940-y
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Habitat filtering shapes the differential structure of microbial communities in the Xilingol grassland

Abstract: The spatial variability of microorganisms in grasslands can provide important insights regarding the biogeographic patterns of microbial communities. However, information regarding the degree of overlap and partitions of microbial communities across different habitats in grasslands is limited. This study investigated the microbial communities in three distinct habitats from Xilingol steppe grassland, i.e. animal excrement, phyllosphere, and soil samples, by Illumina MiSeq sequencing. All microbial community st… Show more

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Cited by 19 publications
(17 citation statements)
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“…Dryland soils (dry deserts, polar/alpine and dry continental locations) were pronounced sources for bacteria globally and this may reflect the more readily aerosolised non-cohesive soils typical of these biomes 41 . This expands the influence of deserts to a global scale beyond the well-defined intercontinental desert dust transit routes for microbial dispersal 40 . For the fungi, polar and alpine soils were major sources and this is congruent with the notion that permanently cold surface substrates in these environments have been proposed to act as long-term reservoirs for inactive fungal propagules 4 .…”
mentioning
confidence: 87%
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“…Dryland soils (dry deserts, polar/alpine and dry continental locations) were pronounced sources for bacteria globally and this may reflect the more readily aerosolised non-cohesive soils typical of these biomes 41 . This expands the influence of deserts to a global scale beyond the well-defined intercontinental desert dust transit routes for microbial dispersal 40 . For the fungi, polar and alpine soils were major sources and this is congruent with the notion that permanently cold surface substrates in these environments have been proposed to act as long-term reservoirs for inactive fungal propagules 4 .…”
mentioning
confidence: 87%
“…Calculation of geographic distances were performed using R package geosphere 35 function distGeo with WGS84 ellipsoid. Source tracking was conducted using FEAST 36 with data from other studies (processed using dada2 following the same parameters as this study) as additional sources/sinks [37][38][39][40][41][42][43] and NCBI BioProject PRJEB42801. For correlation analysis between abiotic and biotic variables the Pearson correlation coefficient for multiple pairwise combinations were calculated using the R package Corrplot 44 .…”
Section: Statistical Treatments and Ecological Modellingmentioning
confidence: 99%
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“…Calculation of geographic distances were performed using R package geosphere 89 function distGeo with WGS84 ellipsoid. Source tracking was conducted by fast expectation-maximization using FEAST 44 with data from other studies (processed using dada2 following the same parameters as this study) as additional sources/sinks [90][91][92][93][94][95][96] and NCBI BioProject PRJEB42801. For correlation analysis between abiotic and biotic variables the Pearson correlation coefficient for multiple pairwise combinations were calculated using the R package corrplot 97 , with P-value cut-off of 0.05 corrected for multiple tests using Bonferroni correction.…”
Section: Statistical Treatments and Ecological Modellingmentioning
confidence: 99%