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Discriminative Prediction of A-To-I RNA Editing Events from DNA Sequence.


ABSTRACT: RNA editing is a post-transcriptional alteration of RNA sequences that, via insertions, deletions or base substitutions, can affect protein structure as well as RNA and protein expression. Recently, it has been suggested that RNA editing may be more frequent than previously thought. A great impediment, however, to a deeper understanding of this process is the paramount sequencing effort that needs to be undertaken to identify RNA editing events. Here, we describe an in silico approach, based on machine learning, that ameliorates this problem. Using 41 nucleotide long DNA sequences, we show that novel A-to-I RNA editing events can be predicted from known A-to-I RNA editing events intra- and interspecies. The validity of the proposed method was verified in an independent experimental dataset. Using our approach, 203 202 putative A-to-I RNA editing events were predicted in the whole human genome. Out of these, 9% were previously reported. The remaining sites require further validation, e.g., by targeted deep sequencing. In conclusion, the approach described here is a useful tool to identify potential A-to-I RNA editing events without the requirement of extensive RNA sequencing.

SUBMITTER: Sun J 

PROVIDER: S-EPMC5072741 | biostudies-literature | 2016

REPOSITORIES: biostudies-literature

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Discriminative Prediction of A-To-I RNA Editing Events from DNA Sequence.

Sun Jiangming J   De Marinis Yang Y   Osmark Peter P   Singh Pratibha P   Bagge Annika A   Valtat Bérengère B   Vikman Petter P   Spégel Peter P   Mulder Hindrik H  

PloS one 20161020 10


RNA editing is a post-transcriptional alteration of RNA sequences that, via insertions, deletions or base substitutions, can affect protein structure as well as RNA and protein expression. Recently, it has been suggested that RNA editing may be more frequent than previously thought. A great impediment, however, to a deeper understanding of this process is the paramount sequencing effort that needs to be undertaken to identify RNA editing events. Here, we describe an in silico approach, based on  ...[more]

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