Characterization of a transcriptome from a non-model organism, <it>Cladonia rangiferina</it>, the grey reindeer lichen, using high-throughput next generation sequencing and EST sequence data

<p>Abstract</p> <p>Background</p> <p>Lichens are symbiotic organisms that have a remarkable ability to survive in some of the most extreme terrestrial climates on earth. Lichens can endure frequent desiccation and wetting cycles and are able to survive in a dehydrated m...

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Main Authors: Junttila Sini, Rudd Stephen
Format: Article
Language:English
Published: BMC 2012-10-01
Series:BMC Genomics
Subjects:
Online Access:http://www.biomedcentral.com/1471-2164/13/575
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author Junttila Sini
Rudd Stephen
author_facet Junttila Sini
Rudd Stephen
author_sort Junttila Sini
collection DOAJ
description <p>Abstract</p> <p>Background</p> <p>Lichens are symbiotic organisms that have a remarkable ability to survive in some of the most extreme terrestrial climates on earth. Lichens can endure frequent desiccation and wetting cycles and are able to survive in a dehydrated molecular dormant state for decades at a time. Genetic resources have been established in lichen species for the study of molecular systematics and their taxonomic classification. No lichen species have been characterised yet using genomics and the molecular mechanisms underlying the lichen symbiosis and the fundamentals of desiccation tolerance remain undescribed. We report the characterisation of a transcriptome of the grey reindeer lichen, <it>Cladonia rangiferina</it>, using high-throughput next-generation transcriptome sequencing and traditional Sanger EST sequencing data.</p> <p>Results</p> <p>Altogether 243,729 high quality sequence reads were de novo assembled into 16,204 contigs and 49,587 singletons. The genome of origin for the sequences produced was predicted using Eclat with sequences derived from the axenically grown symbiotic partners used as training sequences for the classification model. 62.8% of the sequences were classified as being of fungal origin while the remaining 37.2% were predicted as being of algal origin. The assembled sequences were annotated by BLASTX comparison against a non-redundant protein sequence database with 34.4% of the sequences having a BLAST match. 29.3% of the sequences had a Gene Ontology term match and 27.9% of the sequences had a domain or structural match following an InterPro search. 60 KEGG pathways with more than 10 associated sequences were identified.</p> <p>Conclusions</p> <p>Our results present a first transcriptome sequencing and de novo assembly for a lichen species and describe the ongoing molecular processes and the most active pathways in <it>C. rangiferina</it>. This brings a meaningful contribution to publicly available lichen sequence information. These data provide a first glimpse into the molecular nature of the lichen symbiosis and characterise the transcriptional space of this remarkable organism. These data will also enable further studies aimed at deciphering the genetic mechanisms behind lichen desiccation tolerance.</p>
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spelling doaj.art-46d832805e544ea093867e2eaa1088e72022-12-22T02:40:43ZengBMCBMC Genomics1471-21642012-10-0113157510.1186/1471-2164-13-575Characterization of a transcriptome from a non-model organism, <it>Cladonia rangiferina</it>, the grey reindeer lichen, using high-throughput next generation sequencing and EST sequence dataJunttila SiniRudd Stephen<p>Abstract</p> <p>Background</p> <p>Lichens are symbiotic organisms that have a remarkable ability to survive in some of the most extreme terrestrial climates on earth. Lichens can endure frequent desiccation and wetting cycles and are able to survive in a dehydrated molecular dormant state for decades at a time. Genetic resources have been established in lichen species for the study of molecular systematics and their taxonomic classification. No lichen species have been characterised yet using genomics and the molecular mechanisms underlying the lichen symbiosis and the fundamentals of desiccation tolerance remain undescribed. We report the characterisation of a transcriptome of the grey reindeer lichen, <it>Cladonia rangiferina</it>, using high-throughput next-generation transcriptome sequencing and traditional Sanger EST sequencing data.</p> <p>Results</p> <p>Altogether 243,729 high quality sequence reads were de novo assembled into 16,204 contigs and 49,587 singletons. The genome of origin for the sequences produced was predicted using Eclat with sequences derived from the axenically grown symbiotic partners used as training sequences for the classification model. 62.8% of the sequences were classified as being of fungal origin while the remaining 37.2% were predicted as being of algal origin. The assembled sequences were annotated by BLASTX comparison against a non-redundant protein sequence database with 34.4% of the sequences having a BLAST match. 29.3% of the sequences had a Gene Ontology term match and 27.9% of the sequences had a domain or structural match following an InterPro search. 60 KEGG pathways with more than 10 associated sequences were identified.</p> <p>Conclusions</p> <p>Our results present a first transcriptome sequencing and de novo assembly for a lichen species and describe the ongoing molecular processes and the most active pathways in <it>C. rangiferina</it>. This brings a meaningful contribution to publicly available lichen sequence information. These data provide a first glimpse into the molecular nature of the lichen symbiosis and characterise the transcriptional space of this remarkable organism. These data will also enable further studies aimed at deciphering the genetic mechanisms behind lichen desiccation tolerance.</p>http://www.biomedcentral.com/1471-2164/13/575Non-model organism<it>Cladonia rangiferina</it>Transcriptome sequencingFunctional annotation
spellingShingle Junttila Sini
Rudd Stephen
Characterization of a transcriptome from a non-model organism, <it>Cladonia rangiferina</it>, the grey reindeer lichen, using high-throughput next generation sequencing and EST sequence data
BMC Genomics
Non-model organism
<it>Cladonia rangiferina</it>
Transcriptome sequencing
Functional annotation
title Characterization of a transcriptome from a non-model organism, <it>Cladonia rangiferina</it>, the grey reindeer lichen, using high-throughput next generation sequencing and EST sequence data
title_full Characterization of a transcriptome from a non-model organism, <it>Cladonia rangiferina</it>, the grey reindeer lichen, using high-throughput next generation sequencing and EST sequence data
title_fullStr Characterization of a transcriptome from a non-model organism, <it>Cladonia rangiferina</it>, the grey reindeer lichen, using high-throughput next generation sequencing and EST sequence data
title_full_unstemmed Characterization of a transcriptome from a non-model organism, <it>Cladonia rangiferina</it>, the grey reindeer lichen, using high-throughput next generation sequencing and EST sequence data
title_short Characterization of a transcriptome from a non-model organism, <it>Cladonia rangiferina</it>, the grey reindeer lichen, using high-throughput next generation sequencing and EST sequence data
title_sort characterization of a transcriptome from a non model organism it cladonia rangiferina it the grey reindeer lichen using high throughput next generation sequencing and est sequence data
topic Non-model organism
<it>Cladonia rangiferina</it>
Transcriptome sequencing
Functional annotation
url http://www.biomedcentral.com/1471-2164/13/575
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