A machine learning based framework to identify and classify long terminal repeat retrotransposons
Author(s) -
Leander Schietgat,
Celine Vens,
Ricardo Cerri,
Carlos Norberto Fischer,
Eduardo Paulino da Costa,
Jan Ramon,
Cláudia M. A. Carareto,
Hendrik Blockeel
Publication year - 2018
Publication title -
plos computational biology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.628
H-Index - 182
eISSN - 1553-7358
pISSN - 1553-734X
DOI - 10.1371/journal.pcbi.1006097
Subject(s) - retrotransposon , genome , identification (biology) , transposable element , annotation , computational biology , long terminal repeat , biology , computer science , drosophila melanogaster , genome evolution , genomics , artificial intelligence , genetics , gene , botany
Transposable elements (TEs) are repetitive nucleotide sequences that make up a large portion of eukaryotic genomes. They can move and duplicate within a genome, increasing genome size and contributing to genetic diversity within and across species. Accurate identification and classification of TEs present in a genome is an important step towards understanding their effects on genes and their role in genome evolution. We introduce TE-L earner , a framework based on machine learning that automatically identifies TEs in a given genome and assigns a classification to them. We present an implementation of our framework towards LTR retrotransposons, a particular type of TEs characterized by having long terminal repeats (LTRs) at their boundaries. We evaluate the predictive performance of our framework on the well-annotated genomes of Drosophila melanogaster and Arabidopsis thaliana and we compare our results for three LTR retrotransposon superfamilies with the results of three widely used methods for TE identification or classification: R epeat M asker , C ensor and L tr D igest . In contrast to these methods, TE-L earner is the first to incorporate machine learning techniques, outperforming these methods in terms of predictive performance, while able to learn models and make predictions efficiently. Moreover, we show that our method was able to identify TEs that none of the above method could find, and we investigated TE-L earner ’s predictions which did not correspond to an official annotation. It turns out that many of these predictions are in fact strongly homologous to a known TE.
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