1. RNAontheBENCH: computational and empirical resources for benchmarking RNAseq quantification and differential expression methods
- Author
-
Antonio Adamo, Pierre-Luc Germain, Alessandro Vitriolo, Pasquale Laise, Giuseppe Testa, and Vivek Das
- Subjects
0301 basic medicine ,Differential expression analysis ,Gene Dosage ,Biology ,Web Browser ,Bioinformatics ,computer.software_genre ,Set (abstract data type) ,03 medical and health sciences ,Software ,Resource (project management) ,Genetics ,Computer Simulation ,Differential expression ,Gene Library ,business.industry ,Sequence Analysis, RNA ,Gene Expression Profiling ,Computational Biology ,Reproducibility of Results ,Benchmarking ,Pipeline (software) ,R package ,030104 developmental biology ,Gene Expression Regulation ,Data mining ,business ,Transcriptome ,computer - Abstract
RNA sequencing (RNAseq) has become the method of choice for transcriptome analysis, yet no consensus exists as to the most appropriate pipeline for its analysis, with current benchmarks suffering important limitations. Here, we address these challenges through a rich benchmarking resource harnessing (i) two RNAseq datasets including ERCC ExFold spike-ins; (ii) Nanostring measurements of a panel of 150 genes on the same samples; (iii) a set of internal, genetically-determined controls; (iv) a reanalysis of the SEQC dataset; and (v) a focus on relative quantification (i.e. across-samples). We use this resource to compare different approaches to each step of RNAseq analysis, from alignment to differential expression testing. We show that methods providing the best absolute quantification do not necessarily provide good relative quantification across samples, that count-based methods are superior for gene-level relative quantification, and that the new generation of pseudo-alignment-based software performs as well as established methods, at a fraction of the computing time. We also assess the impact of library type and size on quantification and differential expression analysis. Finally, we have created a R package and a web platform to enable the simple and streamlined application of this resource to the benchmarking of future methods.
- Published
- 2016