Genomics enters the deep learning era

The tremendous amount of biological sequence data available, combined with the recent methodological breakthrough in deep learning in domains such as computer vision or natural language processing, is leading today to the transformation of bioinformatics through the emergence of deep genomics, the a...

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Published inPeerJ (San Francisco, CA) Vol. 10; p. e13613
Main Authors Routhier, Etienne, Mozziconacci, Julien
Format Journal Article
LanguageEnglish
Published United States PeerJ. Ltd 24.06.2022
PeerJ, Inc
PeerJ
PeerJ Inc
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Summary:The tremendous amount of biological sequence data available, combined with the recent methodological breakthrough in deep learning in domains such as computer vision or natural language processing, is leading today to the transformation of bioinformatics through the emergence of deep genomics, the application of deep learning to genomic sequences. We review here the new applications that the use of deep learning enables in the field, focusing on three aspects: the functional annotation of genomes, the sequence determinants of the genome functions and the possibility to write synthetic genomic sequences.
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ISSN:2167-8359
2167-8359
DOI:10.7717/peerj.13613