textabstractBackground: Current normalization methods for RNA-sequencing data allow either for intersample comparison to identify differentially expressed (DE) genes or for intrasample comparison for the discovery and validation of gene signatures. Most studies on optimization of normalization methods typically use simulated data to validate methodologies. We describe a new method, GeTMM, which allows for both inter- and intrasample analyses with the same normalized data set. We used actual (i.e. not simulated) RNA-seq data from 263 colon cancers (no biological replicates) and used the same read count data to compare GeTMM with the most commonly used normalization methods (i.e. TMM (used by edgeR), RLE (used by DESeq2) and TPM) with respect...
Normalization of read counts is an important data processing step in the detection of differentially...
Details on the settings for the STAR algorithm and R commands to obtain normalized data. (DOCX 13 kb
Abstract Background In order to correctly decode phenotypic information from RNA-sequencing (RNA-seq...
Abstract Background Current normalization methods for RNA-sequencing data allow either for intersamp...
Background: Current normalization methods for RNA-sequencing data allow either for intersample compa...
BackgroundTranscriptome sequencing is a powerful tool for measuring gene expression, but as well as ...
BackgroundTranscriptome sequencing is a powerful tool for measuring gene expression, but as well as ...
Normalization of RNA-Seq data has proven essential to ensure accurate inferences and replication of ...
Normalization of RNA-Seq data has proven essential to ensure accurate inferences and replication of ...
Background Transcriptome sequencing is a powerful tool for measuring gene expression, but as well as...
Comparison correlation coefficients by method. Boxplots show correlation coefficient of 30 genes, co...
In recent years, RNA-Seq technologies became a powerful tool for transcriptome studies. However, com...
International audienceIn the past 5 years, RNA-Seq has become a powerful tool in transcriptome analy...
Motivations. In recent years, RNA sequencing (RNA-seq) has rapidly become the method of choice for m...
Impact of gene length correction on correlation. Simulated expression data of 10 genes in 2 samples....
Normalization of read counts is an important data processing step in the detection of differentially...
Details on the settings for the STAR algorithm and R commands to obtain normalized data. (DOCX 13 kb
Abstract Background In order to correctly decode phenotypic information from RNA-sequencing (RNA-seq...
Abstract Background Current normalization methods for RNA-sequencing data allow either for intersamp...
Background: Current normalization methods for RNA-sequencing data allow either for intersample compa...
BackgroundTranscriptome sequencing is a powerful tool for measuring gene expression, but as well as ...
BackgroundTranscriptome sequencing is a powerful tool for measuring gene expression, but as well as ...
Normalization of RNA-Seq data has proven essential to ensure accurate inferences and replication of ...
Normalization of RNA-Seq data has proven essential to ensure accurate inferences and replication of ...
Background Transcriptome sequencing is a powerful tool for measuring gene expression, but as well as...
Comparison correlation coefficients by method. Boxplots show correlation coefficient of 30 genes, co...
In recent years, RNA-Seq technologies became a powerful tool for transcriptome studies. However, com...
International audienceIn the past 5 years, RNA-Seq has become a powerful tool in transcriptome analy...
Motivations. In recent years, RNA sequencing (RNA-seq) has rapidly become the method of choice for m...
Impact of gene length correction on correlation. Simulated expression data of 10 genes in 2 samples....
Normalization of read counts is an important data processing step in the detection of differentially...
Details on the settings for the STAR algorithm and R commands to obtain normalized data. (DOCX 13 kb
Abstract Background In order to correctly decode phenotypic information from RNA-sequencing (RNA-seq...