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The ‘TranSeq’ 3′‐end sequencing method for high‐throughput transcriptomics and gene space refinement in plant genomes
Author(s) -
Tzfadia Oren,
Bocobza Samuel,
Defoort Jonas,
AlmekiasSiegl Efrat,
Panda Sayantan,
Levy Matan,
Storme Veronique,
Rombauts Stephane,
Jaitin Diego Adhemar,
KerenShaul Hadas,
Van de Peer Yves,
Aharoni Asaph
Publication year - 2018
Publication title -
the plant journal
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.058
H-Index - 269
eISSN - 1365-313X
pISSN - 0960-7412
DOI - 10.1111/tpj.14015
Subject(s) - biology , transcriptome , computational biology , reference genome , genome , rna seq , dna sequencing , gene , annotation , throughput , sequence assembly , genetics , gene expression , computer science , telecommunications , wireless
Summary High‐throughput RNA sequencing has proven invaluable not only to explore gene expression but also for both gene prediction and genome annotation. However, RNA sequencing, carried out on tens or even hundreds of samples, requires easy and cost‐effective sample preparation methods using minute RNA amounts. Here, we present TranSeq, a high‐throughput 3′‐end sequencing procedure that requires 10‐ to 20‐fold fewer sequence reads than the current transcriptomics procedures. TranSeq significantly reduces costs and allows a greater increase in size of sample sets analyzed in a single experiment. Moreover, in comparison with other 3′‐end sequencing methods reported to date, we demonstrate here the reliability and immediate applicability of TranSeq and show that it not only provides accurate transcriptome profiles but also produces precise expression measurements of specific gene family members possessing high sequence similarity. This is difficult to achieve in standard RNA ‐seq methods, in which sequence reads cover the entire transcript. Furthermore, mapping TranSeq reads to the reference tomato genome facilitated the annotation of new transcripts improving >45% of the existing gene models. Hence, we anticipate that using TranSeq will boost large‐scale transcriptome assays and increase the spatial and temporal resolution of gene expression data, in both model and non‐model plant species. Moreover, as already performed for tomato ( ITAG 3.0; www.solgenomics.net ), we strongly advocate its integration into current and future genome annotations.