Benchmarking long-read RNA-sequencing analysis tools using in silico mixtures

Xueyi Dong, Mei R.M. Du, Quentin Gouil, Luyi Tian, Jafar S. Jabbari, Rory Bowden, Pedro L. Baldoni, Yunshun Chen, Gordon K. Smyth, Shanika L. Amarasinghe, Charity W. Law, Matthew E. Ritchie

Research output: Contribution to specialist publicationArticleOther

Abstract

The current lack of benchmark datasets with inbuilt ground-truth makes it challenging to compare the performance of existing long-read isoform detection and differential expression analysis workflows. Here, we present a benchmark experiment using two human lung adenocarcinoma cell lines that were each profiled in triplicate together with synthetic, spliced, spike-in RNAs (“sequins”). Samples were deeply sequenced on both Illumina short-read and Oxford Nanopore Technologies long-read platforms. Alongside the ground-truth available via the sequins, we created in silico mixture samples to allow performance assessment in the absence of true positives or true negatives. Our results show that, StringTie2 and bambu outperformed other tools from the 6 isoform detection tools tested, DESeq2, edgeR and limma-voom were best amongst the 5 differential transcript expression tools tested and there was no clear front-runner for performing differential transcript usage analysis between the 5 tools compared, which suggests further methods development is needed for this application.Competing Interest StatementThe authors have declared no competing interest.

Original languageEnglish
Number of pages23
Volume2023
Specialist publicationbioRxiv preprints
DOIs
Publication statusPublished - 18 May 2023
Externally publishedYes

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