Nicolas Mathis

Nicolas Mathis
PhD Student, University of Zurich

 

Predicting prime editing efficiency and product purity by deep learning

 

Prime editing is a versatile genome editing tool but requires experimental optimization of the prime editing guide RNA (pegRNA) to achieve high editing efficiency. We conducted a high-throughput screen to analyze prime editing outcomes of 92,423 pegRNAs on a highly diverse set of 13,349 human pathogenic mutations that include base substitutions, insertions and deletions. Based on this dataset, we identified sequence context features that influence prime editing and trained PRIDICT (PRIme editing guide preDICTion), an attention-based bi-directional recurrent neural network. PRIDICT reliably predicts editing rates for all small-sized genetic changes with a Spearman’s R of 0.85 and 0.78 for intended and unintended edits, respectively. Moreover, pegRNAs with high PRIDICT scores (>70) showed substantially increased prime editing efficiencies in different cell types in vitro (12-fold) and in hepatocytes in vivo (10-fold), highlighting the value of PRIDICT for basic- and translational research applications.