Identification of Microbial Dark Matter in Antarctic Environments.

Numerous studies have applied molecular techniques to understand the diversity, evolution, and ecological function of Antarctic bacteria and archaea. One common technique is sequencing of the 16S rRNA gene, which produces a nearly quantitative profile of community membership. However, the utility of...

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Bibliographic Details
Main Author: Bowman, Jeff S
Format: Article in Journal/Newspaper
Language:unknown
Published: eScholarship, University of California 2018
Subjects:
Ice
Online Access:https://escholarship.org/uc/item/0jp9010f
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spelling ftcdlib:oai:escholarship.org/ark:/13030/qt0jp9010f 2023-05-15T13:43:52+02:00 Identification of Microbial Dark Matter in Antarctic Environments. Bowman, Jeff S 2018-01-01 application/pdf https://escholarship.org/uc/item/0jp9010f unknown eScholarship, University of California qt0jp9010f https://escholarship.org/uc/item/0jp9010f public 16S rRNA Antarctica cryoconite glacier permafrost sea ice sediment snow Genetics Human Genome Biotechnology Microbiology Environmental Science and Management Soil Sciences article 2018 ftcdlib 2020-08-18T09:20:15Z Numerous studies have applied molecular techniques to understand the diversity, evolution, and ecological function of Antarctic bacteria and archaea. One common technique is sequencing of the 16S rRNA gene, which produces a nearly quantitative profile of community membership. However, the utility of this and similar approaches is limited by what is known about the evolution, physiology, and ecology of surveyed taxa. When representative genomes are available in public databases some of this information can be gleaned from genomic studies, and automated pipelines exist to carry out this task. Here the paprica metabolic inference pipeline was used to assess how well Antarctic microbial communities are represented by the available completed genomes. The NCBI's Sequence Read Archive (SRA) was searched for Antarctic datasets that used one of the Illumina platforms to sequence the 16S rRNA gene. These data were quality controlled and denoised to identify unique reads, then analyzed with paprica to determine the degree of overlap with the closest phylogenetic neighbor with a completely sequenced genome. While some unique reads had perfect mapping to 16S rRNA genes from completed genomes, the mean percent overlap for all mapped reads was 86.6%. When samples were grouped by environment, some environments appeared more or less well represented by the available genomes. For the domain Bacteria, seawater was particularly poorly represented with a mean overlap of 80.2%, while for the domain Archaea glacial ice was particularly poorly represented with an overlap of only 48.0% for a single sample. These findings suggest that a considerable effort is needed to improve the representation of Antarctic microbes in genome sequence databases. Article in Journal/Newspaper Antarc* Antarctic Antarctica Ice permafrost Sea ice University of California: eScholarship Antarctic
institution Open Polar
collection University of California: eScholarship
op_collection_id ftcdlib
language unknown
topic 16S rRNA
Antarctica
cryoconite
glacier
permafrost
sea ice
sediment
snow
Genetics
Human Genome
Biotechnology
Microbiology
Environmental Science and Management
Soil Sciences
spellingShingle 16S rRNA
Antarctica
cryoconite
glacier
permafrost
sea ice
sediment
snow
Genetics
Human Genome
Biotechnology
Microbiology
Environmental Science and Management
Soil Sciences
Bowman, Jeff S
Identification of Microbial Dark Matter in Antarctic Environments.
topic_facet 16S rRNA
Antarctica
cryoconite
glacier
permafrost
sea ice
sediment
snow
Genetics
Human Genome
Biotechnology
Microbiology
Environmental Science and Management
Soil Sciences
description Numerous studies have applied molecular techniques to understand the diversity, evolution, and ecological function of Antarctic bacteria and archaea. One common technique is sequencing of the 16S rRNA gene, which produces a nearly quantitative profile of community membership. However, the utility of this and similar approaches is limited by what is known about the evolution, physiology, and ecology of surveyed taxa. When representative genomes are available in public databases some of this information can be gleaned from genomic studies, and automated pipelines exist to carry out this task. Here the paprica metabolic inference pipeline was used to assess how well Antarctic microbial communities are represented by the available completed genomes. The NCBI's Sequence Read Archive (SRA) was searched for Antarctic datasets that used one of the Illumina platforms to sequence the 16S rRNA gene. These data were quality controlled and denoised to identify unique reads, then analyzed with paprica to determine the degree of overlap with the closest phylogenetic neighbor with a completely sequenced genome. While some unique reads had perfect mapping to 16S rRNA genes from completed genomes, the mean percent overlap for all mapped reads was 86.6%. When samples were grouped by environment, some environments appeared more or less well represented by the available genomes. For the domain Bacteria, seawater was particularly poorly represented with a mean overlap of 80.2%, while for the domain Archaea glacial ice was particularly poorly represented with an overlap of only 48.0% for a single sample. These findings suggest that a considerable effort is needed to improve the representation of Antarctic microbes in genome sequence databases.
format Article in Journal/Newspaper
author Bowman, Jeff S
author_facet Bowman, Jeff S
author_sort Bowman, Jeff S
title Identification of Microbial Dark Matter in Antarctic Environments.
title_short Identification of Microbial Dark Matter in Antarctic Environments.
title_full Identification of Microbial Dark Matter in Antarctic Environments.
title_fullStr Identification of Microbial Dark Matter in Antarctic Environments.
title_full_unstemmed Identification of Microbial Dark Matter in Antarctic Environments.
title_sort identification of microbial dark matter in antarctic environments.
publisher eScholarship, University of California
publishDate 2018
url https://escholarship.org/uc/item/0jp9010f
geographic Antarctic
geographic_facet Antarctic
genre Antarc*
Antarctic
Antarctica
Ice
permafrost
Sea ice
genre_facet Antarc*
Antarctic
Antarctica
Ice
permafrost
Sea ice
op_relation qt0jp9010f
https://escholarship.org/uc/item/0jp9010f
op_rights public
_version_ 1766194496564887552