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Series GSE83402 Query DataSets for GSE83402
Status Public on Jan 31, 2017
Title Benchmarking of RNA-sequencing analysis workflows using whole-transcriptome RT-qPCR expression data
Organism Homo sapiens
Experiment type Expression profiling by high throughput sequencing
Summary RNA-sequencing has become the gold standard for whole-transcriptome gene expression quantification. Multiple algorithms have been developed to derive gene counts from sequencing reads. While a number of benchmarking studies have been conducted, the question remains how individual methods perform at accurately quantifying gene expression levels from RNA-sequencing reads. We performed an independent benchmarking study using RNA-sequencing data from the well established MAQCA and MAQCB reference samples. RNA-sequencing reads were processed using five popular workflows (Tophat-HTSeq, Tophat-Cufflinks, STAR-HTSeq, Kallisto and Salmon) and resulting gene expression measurements were compared to expression data generated by wet-lab validated qPCR assays for all protein coding genes. All methods showed high gene expression rank correlations with qPCR data. When comparing gene expression fold changes between MAQCA and MAQCB samples, about 85% of the genes showed consistent results between RNA-sequencing and qPCR data. Of note, each method revealed a small but specific set of genes with inconsistent expression measurements. A significant proportion of these method-specific inconsistent genes were reproducibly identified in independent datasets. These genes were typically smaller, had fewer exons and were lower expressed compared to genes with consistent expression measurements. We propose that careful validation is warranted when evaluating RNA-seq based expression profiles for this specific set of genes.
 
Overall design MAQCA and MAQCB polyA+-RNA-seq raw data in duplicate.
 
Contributor(s) Mestdagh P, Everaert C
Citation(s) 28484260
Submission date Jun 15, 2016
Last update date May 15, 2019
Contact name Celine Everaert
E-mail(s) celine.everaert@ugent.be
Organization name University Ghent
Street address De Pintelaan 185
City Ghent
ZIP/Postal code 9000
Country Belgium
 
Platforms (1)
GPL18573 Illumina NextSeq 500 (Homo sapiens)
Samples (4)
GSM2202397 MAQCA_1
GSM2202398 MAQCA_2
GSM2202399 MAQCB_1
Relations
BioProject PRJNA325812
SRA SRP076615

Download family Format
SOFT formatted family file(s) SOFTHelp
MINiML formatted family file(s) MINiMLHelp
Series Matrix File(s) TXTHelp

Supplementary file Size Download File type/resource
GSE83402_RAW.tar 22.0 Mb (http)(custom) TAR (of TXT)
SRA Run SelectorHelp
Raw data are available in SRA
Processed data provided as supplementary file

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