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ParSE-seq: a calibrated multiplexed assay to facilitate the clinical classification of putative splice-altering variants

Matthew J. O’Neill, Tao Yang, Julie Laudeman, Maria Calandranis, M. Lorena Harvey, Joseph F. Solus, Dan M. Roden, Andrew M. Glazer

2024Nature Communications13 citationsDOIOpen Access PDF

Abstract

Interpreting the clinical significance of putative splice-altering variants outside canonical splice sites remains difficult without time-intensive experimental studies. To address this, we introduce Parallel Splice Effect Sequencing (ParSE-seq), a multiplexed assay to quantify variant effects on RNA splicing. We first apply this technique to study hundreds of variants in the arrhythmia-associated gene SCN5A. Variants are studied in ‘minigene’ plasmids with molecular barcodes to allow pooled variant effect quantification. We perform experiments in two cell types, including disease-relevant induced pluripotent stem cell-derived cardiomyocytes (iPSC-CMs). The assay strongly separates known control variants from ClinVar, enabling quantitative calibration of the ParSE-seq assay. Using these evidence strengths and experimental data, we reclassify 29 of 34 variants with conflicting interpretations and 11 of 42 variants of uncertain significance. In addition to intronic variants, we show that many synonymous and missense variants disrupted RNA splicing. Two splice-altering variants in the assay also disrupt splicing and sodium current when introduced into iPSC-CMs by CRISPR-Cas9 editing. ParSE-seq provides high-throughput experimental data for RNA-splicing to support precision medicine efforts and can be readily adopted to study other loss-of-function genotype-phenotype relationships. Interpreting the significance of putative splice-altering variants outside canonical splice sites remains challenging. Here, the authors describe ParSE-seq, a high-throughput assay to annotate the effect of germline variants on RNA-splicing. They calibrate the assay and deploy it to study hundreds of variants in the arrhythmia-associated gene SCN5A.

Topics & Concepts

spliceComputational biologyParsingComputer scienceMultiplexingBiologyBioinformaticsGeneticsGeneNatural language processingTelecommunicationsRNA Research and SplicingGenomics and Chromatin DynamicsGenomic variations and chromosomal abnormalities