Transformation of alignment files improves performance of variant callers for long-read RNA sequencing data

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作者
Vladimir B. C. de Souza
Ben T. Jordan
Elizabeth Tseng
Elizabeth A. Nelson
Karen K. Hirschi
Gloria Sheynkman
Mark D. Robinson
机构
[1] University of Zurich,Department of Molecular Life Sciences and SIB Swiss Institute of Bioinformatics
[2] University of Virginia,Department of Molecular Physiology and Biological Physics
[3] PacBio,Department of Cell Biology and Cardiovascular Research Center
[4] University of Virginia School of Medicine,Department of Medicine
[5] Yale University School of Medicine,Department of Genetics
[6] Yale University School of Medicine,Department of Biochemistry and Molecular Genetics
[7] Yale Cardiovascular Research Center,Center for Public Health Genomics
[8] Yale University School of Medicine,UVA Comprehensive Cancer Center
[9] University of Virginia,undefined
[10] University of Virginia,undefined
[11] University of Virginia,undefined
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摘要
Long-read RNA sequencing (lrRNA-seq) produces detailed information about full-length transcripts, including novel and sample-specific isoforms. Furthermore, there is an opportunity to call variants directly from lrRNA-seq data. However, most state-of-the-art variant callers have been developed for genomic DNA. Here, there are two objectives: first, we perform a mini-benchmark on GATK, DeepVariant, Clair3, and NanoCaller primarily on PacBio Iso-Seq, data, but also on Nanopore and Illumina RNA-seq data; second, we propose a pipeline to process spliced-alignment files, making them suitable for variant calling with DNA-based callers. With such manipulations, high calling performance can be achieved using DeepVariant on Iso-seq data.
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