Contrasting and Combining Transcriptome Complexity Captured by Short and Long RNA Sequencing Reads

Author:

Han Seong WooORCID,Jewell SanORCID,Thomas-Tikhonenko AndreiORCID,Barash YosephORCID

Abstract

AbstractMapping transcriptomic variations using either short or long reads RNA sequencing is a staple of genomic research. Long reads are able to capture entire isoforms and overcome repetitive regions, while short reads still provides improved coverage and error rates. Yet how to quantitatively compare the technologies, can we combine those, and what may be the benefit of such a combined view remain open questions. We tackle these questions by first creating a pipeline to assess matched long and short reads data using a variety of transcriptome statistics. We find that across datasets, algorithms and technologies, matched short reads data detects roughly 50% more splice junctions, with 10-30% of the splice junctions included at 20% or more are missed by long reads. In contrast, long reads detect many more intron retention events, pointing to the benefit of combining the technologies. We introduce MAJIQ-L, an extension of the MAJIQ software to enable a unified view of transcriptome variations from both technologies and demonstrate its benefits. Our software can be used to assess any future long reads technology or algorithm, and combine it with short reads data for improved transcriptome analysis.

Publisher

Cold Spring Harbor Laboratory

Reference26 articles.

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4. Prjibelski, A. D. et al. Accurate isoform discovery with isoquant using long reads. Nature Biotechnology 1–4 (2023).

5. Chen, Y. , et al. Context-aware transcript quantification from long read rna-seq data with bambu. bioRxiv (2022). URL https://www.biorxiv.org/content/early/2022/11/16/2022.11.14.516358.1. https://www.biorxiv.org/content/early/2022/11/16/2022.11.14.516358.1.full.pdf.

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