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Prioritizing and selecting likely novel miRNAs from NGS data
Author(s) -
Christina Backes,
Benjamin Meder,
Martin Hart,
Nicole Ludwig,
Petra Leidinger,
Britta Vogel,
Valentina Galata,
Patrick Roth,
Jennifer Menegatti,
Friedrich A. Grässer,
Klemens Ruprecht,
Mustafa Kahraman,
Thomas Großmann,
Jan Haas,
Eckart Meese,
Andreas Keller
Publication year - 2015
Publication title -
nucleic acids research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 9.008
H-Index - 537
eISSN - 1362-4954
pISSN - 0305-1048
DOI - 10.1093/nar/gkv1335
Subject(s) - mirbase , biology , microrna , computational biology , sequence database , bioinformatics , genetics , gene
Small non-coding RNAs play a key role in many physiological and pathological processes. Since 2004, miRNA sequences have been catalogued in miRBase, which is currently in its 21st version. We investigated sequence and structural features of miRNAs annotated in the miRBase and compared them between different versions of this reference database. We have identified that the two most recent releases (v20 and v21) are influenced by next-generation sequencing based miRNA predictions and show significant deviation from miRNAs discovered prior to the high-throughput profiling period. From the analysis of miRBase, we derived a set of key characteristics to predict new miRNAs and applied the implemented algorithm to evaluate novel blood-borne miRNA candidates. We carried out 705 individual whole miRNA sequencings of blood cells and collected a total of 9.7 billion reads. Using miRDeep2 we initially predicted 1452 potentially novel miRNAs. After excluding false positives, 518 candidates remained. These novel candidates were ranked according to their distance to the features in the early miRBase versions allowing for an easier selection of a subset of putative miRNAs for validation. Selected candidates were successfully validated by qRT-PCR and northern blotting. In addition, we implemented a web-server for ranking potential miRNA candidates, which is available at:www.ccb.uni-saarland.de/novomirank

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