2018
DOI: 10.1101/364281
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Fast and interpretable alternative splicing and differential gene-level expression analysis using transcriptome segmentation with Yanagi

Abstract: Introduction: Analysis of differential alternative splicing from RNA-seq data is complicated by the fact that many RNA-seq reads map to multiple transcripts, besides, the annotated transcripts are often a small subset of the possible transcripts of a gene. Here we describe Yanagi, a tool for segmenting transcriptome to create a library of maximal L-disjoint segments from a complete transcriptome annotation. That segment library preserves all transcriptome substrings of length L and transcripts structural relat… Show more

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“…After TETRANSCRIPTS, other packages have been developed to expand the methods used for statistical read redistribution including MMR [60] and SALMONTE, [71] with SALMONTE being unique in its use of a pseudoalignment strategy from the authors of the original SALMON [44] package in order to bypass the mapping step typically used in RNA-seq analysis. YANAGI [72] expands on this pseudoalignment strategy by mapping to a segmented version of the transcriptome to reduce ambiguity of mapping.…”
Section: Rna-seqmentioning
confidence: 99%
“…After TETRANSCRIPTS, other packages have been developed to expand the methods used for statistical read redistribution including MMR [60] and SALMONTE, [71] with SALMONTE being unique in its use of a pseudoalignment strategy from the authors of the original SALMON [44] package in order to bypass the mapping step typically used in RNA-seq analysis. YANAGI [72] expands on this pseudoalignment strategy by mapping to a segmented version of the transcriptome to reduce ambiguity of mapping.…”
Section: Rna-seqmentioning
confidence: 99%