TY - JOUR T1 - The impact of amplification on differential expression analyses by RNA-seq JF - bioRxiv DO - 10.1101/035493 SP - 035493 AU - Swati Parekh AU - Christoph Ziegenhain AU - Beate Vieth AU - Wolfgang Enard AU - Ines Hellmann Y1 - 2016/01/01 UR - http://biorxiv.org/content/early/2016/01/15/035493.abstract N2 - Currently quantitative RNA-Seq methods are pushed to work with increasingly small starting amounts of RNA that require amplification. However, it is unclear how much noise or bias amplification introduces and how this effects precision and accuracy of RNA quantification. To assess the effects of amplification, reads that originated from the same RNA molecule (PCR-duplicates) need to be identified. Computationally, read duplicates are defined via their mapping position, which does not distinguish PCR- from natural duplicates and hence it is unclear how to treat duplicate reads.Here, we generate and analyse RNA-seq datasets prepared using three different protocols (Smart-Seq, TruSeq and UMI-seq). We find that a large fraction of computationally identified read duplicates can be explained by sampling and fragmentation bias. Consequently, the computational removal of duplicates does not improve accuracy, power or FDR, but can actually worsen them. Even when duplicates are experimentally identified by unique molecular identifiers (UMIs), power and FDR are only mildly improved. However, the pooling of samples as made possible by the early barcoding of the UMI-protocol leads to an appreciable increase in the power to detect differentially expressed genes. ER -