Published October 26, 2023 | Version v1
Journal article Open

Merging short and stranded long reads improves transcript assembly

Description

Long-read RNA sequencing has arisen as a counterpart to short-read sequencing, with the potential to capture full-length isoforms, albeit at the cost of lower depth. Yet this potential is not fully realized due to inherent limitations of current long-read assembly methods and underdeveloped approaches to integrate short-read data. Here, we critically compare the existing methods and develop a new integrative approach to characterize a particularly challenging pool of low-abundance long noncoding RNA (lncRNA) transcripts from short- and long-read sequencing in two distinct cell lines. Our analysis reveals severe limitations in each of the sequencing platforms. For short-read assemblies, coverage declines at transcript termini resulting in ambiguous ends, and uneven low coverage results in segmentation of a single transcript into multiple transcripts. Conversely, long-read sequencing libraries lack depth and strand-of-origin information in cDNA-based methods, culminating in erroneous assembly and quantitation of transcripts. We also discover a cDNA synthesis artifact in long-read datasets that markedly impacts the identity and quantitation of assembled transcripts. Towards remediating these problems, we develop a computational pipeline to "strand" long-read cDNA libraries that rectifies inaccurate mapping and assembly of long-read transcripts. Leveraging the strengths of each platform and our computational stranding, we also present and benchmark a hybrid assembly approach that drastically increases the sensitivity and accuracy of full-length transcript assembly on the correct strand and improves detection of biological features of the transcriptome. When applied to a challenging set of under-annotated and cell-type variable lncRNA, our method resolves the segmentation problem of short-read sequencing and the depth problem of long-read sequencing, resulting in the assembly of coherent transcripts with precise 5' and 3' ends. Our workflow can be applied to existing datasets for superior demarcation of transcript ends and refined isoform structure, which can enable better differential gene expression analyses and molecular manipulations of transcripts.

Data availability

Short- and long-read data generated for this study have been deposited at the Gene Expression Omnibus (GEO) under accession number GSE215355 and GSE215357. A standard script for SLURP and TASSEL is provided at the GitHub repositories (https://github.com/kainth-amoldeep/SLURP and https://github.com/kainth-amoldeep/TASSEL).

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Additional details

Identifiers

DOI
10.1371/journal.pcbi.1011576
Other
oai:uchicago.tind.io:9592

Funding

NIH
Genetics & Regulation Training Grant
NIH
Genetic Mechanisms and Evolution Training Grant
NIH
R01HL148719
NIH
R35GM145373

UChicago Information

Division(s)
Biological Sciences Division
Department(s)
Biochemistry and Molecular Biology, Genetics, Genomics, and Systems Biology, Molecular Genetics and Cell Biology