RNA-Seq is a powerful technique to provide quantitative information on gene expression. While many applications focus on estimated expression levels, it is also important to determine which genes are actively transcribed, and which are not. The problem can be viewed as simply setting a biologically meaningful threshold for calling a gene expressed. We propose to define this threshold per sample relative to the background level for non-expressed genomic features, inferred by the amount of reads mapped to intergenic regions of the genome. To this aim, we first define a stringent set of reference intergenic regions, based on available bulk RNA-Seq libraries for each species. We provide predefined regions selected for different animal species w...
We examined RNA-Seq data on 211 biological samples from 24 different Arabidopsis experiments carried...
High-throughput sequencing of cDNA (RNA-seq) is used extensively to characterize the transcriptome o...
RNA-Sequencing (RNA-Seq) has enabled detailed unbiased profiling of whole transcriptomes with incred...
RNA-Seq is a powerful technique to provide quantitative information on gene expression. While many a...
The power of deep sequencing technology to reliably detect single RNA reads leads to a paradoxical p...
The power of deep sequencing technology to reliably detect single RNA reads leads to a paradoxical p...
Abstract Background Early application of second-gener...
RNA-seq experiments estimate the number of genes expressed in a transcriptome as well as their relat...
For the last 15 years, the world's sequencing capacity has increased at a staggering rate. While the...
Background. A common research goal in transcriptome projects is to find genes that are differentiall...
Background The availability of fast alignment-free algorithms has greatly reduced the computational ...
Abstract Background The availability of fast alignment-free algorithms has greatly reduced the compu...
High-throughput sequencing of cDNA (RNA-seq) is used extensively to characterize the transcriptome o...
Background: The availability of fast alignment-free algorithms has greatly reduced the computational...
Abstract Background RNA sequencing (RNA-Seq) is emerging as a highly accurate method to quantify tra...
We examined RNA-Seq data on 211 biological samples from 24 different Arabidopsis experiments carried...
High-throughput sequencing of cDNA (RNA-seq) is used extensively to characterize the transcriptome o...
RNA-Sequencing (RNA-Seq) has enabled detailed unbiased profiling of whole transcriptomes with incred...
RNA-Seq is a powerful technique to provide quantitative information on gene expression. While many a...
The power of deep sequencing technology to reliably detect single RNA reads leads to a paradoxical p...
The power of deep sequencing technology to reliably detect single RNA reads leads to a paradoxical p...
Abstract Background Early application of second-gener...
RNA-seq experiments estimate the number of genes expressed in a transcriptome as well as their relat...
For the last 15 years, the world's sequencing capacity has increased at a staggering rate. While the...
Background. A common research goal in transcriptome projects is to find genes that are differentiall...
Background The availability of fast alignment-free algorithms has greatly reduced the computational ...
Abstract Background The availability of fast alignment-free algorithms has greatly reduced the compu...
High-throughput sequencing of cDNA (RNA-seq) is used extensively to characterize the transcriptome o...
Background: The availability of fast alignment-free algorithms has greatly reduced the computational...
Abstract Background RNA sequencing (RNA-Seq) is emerging as a highly accurate method to quantify tra...
We examined RNA-Seq data on 211 biological samples from 24 different Arabidopsis experiments carried...
High-throughput sequencing of cDNA (RNA-seq) is used extensively to characterize the transcriptome o...
RNA-Sequencing (RNA-Seq) has enabled detailed unbiased profiling of whole transcriptomes with incred...