| Literature DB >> 23845962 |
Brian J Haas1, Alexie Papanicolaou2, Moran Yassour1,3, Manfred Grabherr4, Philip D Blood5, Joshua Bowden6, Matthew Brian Couger7, David Eccles8, Bo Li9, Matthias Lieber10, Matthew D MacManes11, Michael Ott2, Joshua Orvis12, Nathalie Pochet1,13, Francesco Strozzi14, Nathan Weeks15, Rick Westerman16, Thomas William17, Colin N Dewey9,18, Robert Henschel19, Richard D LeDuc19, Nir Friedman3, Aviv Regev1,20.
Abstract
De novo assembly of RNA-seq data enables researchers to study transcriptomes without the need for a genome sequence; this approach can be usefully applied, for instance, in research on 'non-model organisms' of ecological and evolutionary importance, cancer samples or the microbiome. In this protocol we describe the use of the Trinity platform for de novo transcriptome assembly from RNA-seq data in non-model organisms. We also present Trinity-supported companion utilities for downstream applications, including RSEM for transcript abundance estimation, R/Bioconductor packages for identifying differentially expressed transcripts across samples and approaches to identify protein-coding genes. In the procedure, we provide a workflow for genome-independent transcriptome analysis leveraging the Trinity platform. The software, documentation and demonstrations are freely available from http://trinityrnaseq.sourceforge.net. The run time of this protocol is highly dependent on the size and complexity of data to be analyzed. The example data set analyzed in the procedure detailed herein can be processed in less than 5 h.Entities:
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Year: 2013 PMID: 23845962 PMCID: PMC3875132 DOI: 10.1038/nprot.2013.084
Source DB: PubMed Journal: Nat Protoc ISSN: 1750-2799 Impact factor: 13.491