Method

Quality assessment of long read data in multisample lrRNA-seq experiments with SQANTI-reads

    • 1 University of Florida, Genetics Institute;
    • 2 Institute for Integrative Systems Biology, Spanish National Research Council;
    • 3 University of Florida, Genetics Institute, UF Health Cancer Center
Published March 3, 2025. https://doi.org/10.1101/gr.280021.124
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cover of Genome Research Vol 36 Issue 6
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Abstract

SQANTI-reads leverages SQANTI3, a tool for the analysis of the quality of transcript models, to develop a read-level quality control framework for replicated long-read RNA-seq experiments. The number and distribution of reads, as well as the number and distribution of unique junction chains (transcript splicing patterns), in SQANTI3 structural categories are informative of raw data quality. Multisample visualizations of QC metrics are presented by experimental design factors to identify outliers. We introduce new metrics for 1) the identification of potentially under-annotated genes and putative novel transcripts and for 2) quantifying variation in junction donors and acceptors. We applied SQANTI-reads to two different datasets, a Drosophila developmental experiment and a multiplatform dataset from the LRGASP project and demonstrate that the tool effectively reveals the impact of read coverage on data quality, and readily identifies strong and weak splicing sites.

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