| Literature DB >> 27195106 |
Andrew Bissett1, Anna Fitzgerald2, Thys Meintjes3, Pauline M Mele4, Frank Reith5, Paul G Dennis6, Martin F Breed7, Belinda Brown8, Mark V Brown9, Joel Brugger10, Margaret Byrne11, Stefan Caddy-Retalic7, Bernie Carmody12, David J Coates11, Carolina Correa13, Belinda C Ferrari14, Vadakattu V S R Gupta15, Kelly Hamonts16, Asha Haslem17, Philip Hugenholtz18, Mirko Karan19, Jason Koval13, Andrew J Lowe7, Stuart Macdonald20, Leanne McGrath21, David Martin22, Matt Morgan23, Kristin I North13, Chanyarat Paungfoo-Lonhienne6, Elise Pendall24, Lori Phillips25, Rebecca Pirzl22, Jeff R Powell24, Mark A Ragan26, Susanne Schmidt6, Nicole Seymour27, Ian Snape28, John R Stephen21, Matthew Stevens17, Matt Tinning17, Kristen Williams23, Yun Kit Yeoh18, Carla M Zammit29, Andrew Young30.
Abstract
BACKGROUND: Microbial inhabitants of soils are important to ecosystem and planetary functions, yet there are large gaps in our knowledge of their diversity and ecology. The 'Biomes of Australian Soil Environments' (BASE) project has generated a database of microbial diversity with associated metadata across extensive environmental gradients at continental scale. As the characterisation of microbes rapidly expands, the BASE database provides an evolving platform for interrogating and integrating microbial diversity and function.Entities:
Keywords: Australia; Database; Metagenomics; Microbial diversity; Microbial ecology; Microbiology; Soil biology
Mesh:
Year: 2016 PMID: 27195106 PMCID: PMC4870752 DOI: 10.1186/s13742-016-0126-5
Source DB: PubMed Journal: Gigascience ISSN: 2047-217X Impact factor: 6.524
Fig. 1Position of BASE sample sites (August 2015). a Australian mainland and Christmas Island samples; b location of Antarctic sampling locations (white), with Davis station indicated in red; and c finer detail of sampling position indicated by red arrow in (a)
Contextual data collected from each soil sample
| Soil chemical properties | ||
| moisture | Total Carbon | Zinc |
| Ammonium | Organic Carbon | Exchangeable Aluminium |
| Nitrate | Conductivity | Exchangeable Calcium |
| Total Nitrogen | pH | Exchangeable Magnesium |
| Phosphorus | Copper | Exchangeable Potassium |
| Potassium | Iron | Sodium |
| Sulphur | Manganese | Boron |
| Soil physical properties | ||
| Texture | Color | Particle size distribution |
| Soil/site descriptors | ||
| Overlying vegetation identity | Aspect | Elevation |
| Slope | Landscape position | Land-use history |
| Land-use Management |
Fig. 2Sampling strategy. Approximately 1 kg of soil was taken, at two soil depths, by bulking 9 – 30 soil cores a 25 × 25 m quadrat. Each sample was assigned a unique identifier and subdivided for DNA extraction and sequencing, soil physico-chemical analyses and soil and DNA sample archiving for future use. A photograph of each site was also taken
Details of sequencing outputs for each amplicon
| Amplicon | Bacteria | Archaea | Eukaryote | Fungi |
|---|---|---|---|---|
| Total readsa | 67578131 | 99533527 | 65086341 | 86322772 |
| Mean per sample | 74837 ± 59400 | 97009 ± 56696 | 74153 ± 58634 | 103504 ± 131838 |
| OTU Richness | 85596 | 5421 | 21552 | 43708 |
| % classifiedb | 72 % | 22 % | 40 % | 69 % |
a Total number of sequences after all QC and processing
b % classified to family level (>60 % probability) against Green Genes for Bacteria and Archaea, UNITE for Fungi and SILVA for Eukaryotes
Fig. 3Microbial diversity under different land-use categories sampled in BASE. a Bacterial phyla comprising > 1 % of total bacterial 16S rRNA gene amplicons; b archaeal families comprising > 1 % of total archaeal 16S rRNA gene amplicons; c fungal phyla comprising > 1 % of total fungal ITS1 region amplicons; and d eukaryotic phyla comprising > 1 % of 18S rRNA gene amplicons. All abundances are expressed in % of the total read number for each group, and land-use categories refer to land-use categories as described in the Australian land use and management classification (http://www.agriculture.gov.au/abares/aclump/land-use/alum-classification-version-7-may-2010)