BASiNET-BiologicAl Sequences NETwork: a case study on coding and non-coding RNAs identification

Abstract With the emergence of Next Generation Sequencing (NGS) technologies, a large volume of sequence data in particular de novo sequencing was rapidly produced at relatively low costs. In this context, computational tools are increasingly important to assist in the identification of relevant inf...

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Published inNucleic acids research Vol. 46; no. 16; p. e96
Main Authors Ito, Eric Augusto, Katahira, Isaque, Vicente, Fábio Fernandes da Rocha, Pereira, Luiz Filipe Protasio, Lopes, Fabrício Martins
Format Journal Article
LanguageEnglish
Published England Oxford University Press 19.09.2018
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ISSN0305-1048
1362-4962
1362-4962
DOI10.1093/nar/gky462

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Summary:Abstract With the emergence of Next Generation Sequencing (NGS) technologies, a large volume of sequence data in particular de novo sequencing was rapidly produced at relatively low costs. In this context, computational tools are increasingly important to assist in the identification of relevant information to understand the functioning of organisms. This work introduces BASiNET, an alignment-free tool for classifying biological sequences based on the feature extraction from complex network measurements. The method initially transform the sequences and represents them as complex networks. Then it extracts topological measures and constructs a feature vector that is used to classify the sequences. The method was evaluated in the classification of coding and non-coding RNAs of 13 species and compared to the CNCI, PLEK and CPC2 methods. BASiNET outperformed all compared methods in all adopted organisms and datasets. BASiNET have classified sequences in all organisms with high accuracy and low standard deviation, showing that the method is robust and non-biased by the organism. The proposed methodology is implemented in open source in R language and freely available for download at https://cran.r-project.org/package=BASiNET.
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ISSN:0305-1048
1362-4962
1362-4962
DOI:10.1093/nar/gky462