Joint genotypic and phenotypic outcome modeling improves base editing variant effect quantification

Jayoung Ryu(Broad Institute), Sam Barkal(Brigham and Women's Hospital), Tian Yu(Brigham and Women's Hospital), Martin Jankowiak(Broad Institute), Yunzhuo Zhou(Baker Heart and Diabetes Institute), Matthew Francoeur(Brigham and Women's Hospital), Quang Vinh Phan(Brigham and Women's Hospital), Zhijian Li(Broad Institute), Manuel Tognon(Broad Institute), Lara Brown(Brigham and Women's Hospital), Michael I. Love(University of North Carolina at Chapel Hill), Guillaume Lettre(Montreal Heart Institute), David B. Ascher(Baker Heart and Diabetes Institute), Christopher A. Cassa(Brigham and Women's Hospital), Richard I. Sherwood(Brigham and Women's Hospital), Luca Pinello(Broad Institute)
medRxiv
September 10, 2023
Cited by 4Open Access
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Abstract

Abstract CRISPR base editing screens are powerful tools for studying disease-associated variants at scale. However, the efficiency and precision of base editing perturbations vary, confounding the assessment of variant-induced phenotypic effects. Here, we provide an integrated pipeline that improves the estimation of variant impact in base editing screens. We perform high-throughput ABE8e-SpRY base editing screens with an integrated reporter construct to measure the editing efficiency and outcomes of each gRNA alongside their phenotypic consequences. We introduce BEAN, a Bayesian network that accounts for per-guide editing outcomes and target site chromatin accessibility to estimate variant impacts. We show this pipeline attains superior performance compared to existing tools in variant classification and effect size quantification. We use BEAN to pinpoint common variants that alter LDL uptake, implicating novel genes. Additionally, through saturation base editing of LDLR , we enable accurate quantitative prediction of the effects of missense variants on LDL-C levels, which aligns with measurements in UK Biobank individuals, and identify structural mechanisms underlying variant pathogenicity. This work provides a widely applicable approach to improve the power of base editor screens for disease-associated variant characterization.


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