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Title

Computational workflow for small RNA profiling in virus-infected plants

AuthorsDonaire, Livia ; Llave, César
KeywordsAntiviral silencing
Bioinformatic analysis
Next generation sequencing
Plant viruses
Small RNAs
sRNA-seq
Issue Date2019
PublisherElsevier
CitationMethods in Molecular Biology 2028:185-214 (2019)
AbstractIn this chapter we describe a series of computational pipelines for the in silico analysis of small RNAs (sRNA) produced in response to viral infections in plants. Our workflow is primarily focused on the analysis of sRNA populations derived from known or previously undescribed viruses infecting host plants. Furthermore, we provide an additional pipeline to examine host-specific endogenous sRNAs activated or specifically expressed during viral infections in plants. We present some key points for a successful and cost-efficient processing of next generation sequencing sRNA libraries, from purification of high quality RNA to guidance for library preparation and sequencing strategies. We report a series of free available tools and programs as well as in-house Perl scripts to perform customized sRNA-seq data mining. Previous bioinformatic background is not required, but experience with basic Unix commands is desirable.
Description47 p.-3 fig.-2 tab.
Publisher version (URL)https://doi.org/10.1007/978-1-4939-9635-3_11
URIhttp://hdl.handle.net/10261/184824
DOI10.1007/978-1-4939-9635-3_11
ISSN1064-3745
E-ISSN1940-6029
Appears in Collections:(CIB) Libros y partes de libros
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