Publication | Open Access
A benchmark for RNA-seq quantification pipelines
207
Citations
39
References
2016
Year
EngineeringMolecular BiologyTranscriptomics TechnologyGenomicsBioinformatics DatabaseHigh Throughput SequencingGene Expression ProfilingBiostatisticsRna Structure PredictionRna-seq Quantification PipelinesSequence AnalysisFunctional GenomicsBioinformaticsSensitive Assessment MetricsComputational BiologyStatistical SummariesMicrobiologySystems BiologyMedicineRna-seq Measurements
Obtaining RNA-seq measurements involves a complex data analytical process with a large number of competing algorithms as options. There is much debate about which of these methods provides the best approach. Unfortunately, it is currently difficult to evaluate their performance due in part to a lack of sensitive assessment metrics. We present a series of statistical summaries and plots to evaluate the performance in terms of specificity and sensitivity, available as a R/Bioconductor package ( http://bioconductor.org/packages/rnaseqcomp ). Using two independent datasets, we assessed seven competing pipelines. Performance was generally poor, with two methods clearly underperforming and RSEM slightly outperforming the rest.
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