| Literature DB >> 27825033 |
Yi Zheng1, Shan Gao2, Chellappan Padmanabhan3, Rugang Li3, Marco Galvez4, Dina Gutierrez4, Segundo Fuentes4, Kai-Shu Ling3, Jan Kreuze4, Zhangjun Fei5.
Abstract
Accurate detection of viruses in plants and animals is critical for agriculture production and human health. Deep sequencing and assembly of virus-derived small interfering RNAs has proven to be a highly efficient approach for virus discovery. Here we present VirusDetect, a bioinformatics pipeline that can efficiently analyze large-scale small RNA (sRNA) datasets for both known and novel virus identification. VirusDetect performs both reference-guided assemblies through aligning sRNA sequences to a curated virus reference database and de novo assemblies of sRNA sequences with automated parameter optimization and the option of host sRNA subtraction. The assembled contigs are compared to a curated and classified reference virus database for known and novel virus identification, and evaluated for their sRNA size profiles to identify novel viruses. Extensive evaluations using plant and insect sRNA datasets suggest that VirusDetect is highly sensitive and efficient in identifying known and novel viruses. VirusDetect is freely available at http://bioinfo.bti.cornell.edu/tool/VirusDetect/. Copyright ÂEntities:
Keywords: Next-generation sequencing; Small RNA; Virus discovery; VirusDetect
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Year: 2016 PMID: 27825033 DOI: 10.1016/j.virol.2016.10.017
Source DB: PubMed Journal: Virology ISSN: 0042-6822 Impact factor: 3.616