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  3. FEELnc: a tool for long non-coding RNA annotation and its application to the dog transcriptome
 

FEELnc: a tool for long non-coding RNA annotation and its application to the dog transcriptome

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BORIS DOI
10.7892/boris.93476
Date of Publication
January 3, 2017
Publication Type
Article
Division/Institute

Institut für Genetik

Department of Clinica...

Contributor
Wucher, Valentin
Legeai, Fabrice
Hédan, Benoît
Rizk, Guillaume
Lagoutte, Lætitia
Leeb, Tossoorcid-logo
Institut für Genetik
Jagannathan, Vidya
Department of Clinical Research and Veterinary Public Health (DCR-VPH)
Cadieu, Edouard
David, Audrey
Lohi, Hannes
Cirera, Susanna
Fredholm, Merete
Botherel, Nadine
Leegwater, Peter A J
Le Béguec, Céline
Fieten, Hille
Johnson, Jeremy
Alföldi, Jessica
André, Catherine
Lindblad-Toh, Kerstin
Hitte, Christophe
Derrien, Thomas
Subject(s)

500 - Science::570 - ...

500 - Science::590 - ...

600 - Technology::610...

Series
Nucleic acids research
ISSN or ISBN (if monograph)
0305-1048
Publisher
Information Retrieval Ltd.
Language
English
Publisher DOI
10.1093/nar/gkw1306
PubMed ID
28053114
Description
Whole transcriptome sequencing (RNA-seq) has become a standard for cataloguing and monitoring RNA populations. One of the main bottlenecks, however, is to correctly identify the different classes of RNAs among the plethora of reconstructed transcripts, particularly those that will be translated (mRNAs) from the class of long non-coding RNAs (lncRNAs). Here, we present FEELnc (FlExible Extraction of LncRNAs), an alignment-free program that accurately annotates lncRNAs based on a Random Forest model trained with general features such as multi k-mer frequencies and relaxed open reading frames. Benchmarking versus five state-of-the-art tools shows that FEELnc achieves similar or better classification performance on GENCODE and NONCODE data sets. The program also provides specific modules that enable the user to fine-tune classification accuracy, to formalize the annotation of lncRNA classes and to identify lncRNAs even in the absence of a training set of non-coding RNAs. We used FEELnc on a real data set comprising 20 canine RNA-seq samples produced by the European LUPA consortium to substantially expand the canine genome annotation to include 10 374 novel lncRNAs and 58 640 mRNA transcripts. FEELnc moves beyond conventional coding potential classifiers by providing a standardized and complete solution for annotating lncRNAs and is freely available at https://github.com/tderrien/FEELnc.
Handle
https://boris-portal.unibe.ch/handle/20.500.12422/148380
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FileFile TypeFormatSizeLicensePublisher/Copright statementContent
gkw1306.pdftextAdobe PDF1.75 MBpublishedOpen
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