Ryuto: improved multi-sample transcript assembly for differential transcript expression analysis and more

BIOINFORMATICS(2021)

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摘要
Motivation: Accurate assembly of RNA-seq is a crucial step in many analytic tasks such as gene annotation or expression studies. Despite ongoing research, progress on traditional single sample assembly has brought no major breakthrough. Multi-sample RNA-Seq experiments provide more information than single sample datasets and thus constitute a promising area of research. Yet, this advantage is challenging to utilize due to the large amount of accumulating errors. Results: We present an extension to Ryuto enabling the reconstruction of consensus transcriptomes from multiple RNA-seq datasets, incorporating consensus calling at low level features. We report stable improvements already at three replicates. Ryuto outperforms competing approaches, providing a better and user-adjustable sensitivity-precision trade-off. Ryuto's unique ability to utilize a (incomplete) reference for multi sample assemblies greatly increases precision. We demonstrate benefits for differential expression analysis. Ryuto consistently improves assembly on replicates of the same tissue independent of filter settings, even when mixing conditions or time series. Consensus voting in Ryuto is especially effective at high precision assembly, while Ryuto's conventional mode can reach higher recall.
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