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arxiv 2506.11182 v1 pith:ALWP7RGQ submitted 2025-06-12 q-bio.GN cs.AI

Multimodal Modeling of CRISPR-Cas12 Activity Using Foundation Models and Chromatin Accessibility Data

classification q-bio.GN cs.AI
keywords dataactivityfoundationaccessibilitychromatingrnacrispr-cas12model
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Predicting guide RNA (gRNA) activity is critical for effective CRISPR-Cas12 genome editing but remains challenging due to limited data, variation across protospacer adjacent motifs (PAMs-short sequence requirements for Cas binding), and reliance on large-scale training. We investigate whether pre-trained biological foundation model originally trained on transcriptomic data can improve gRNA activity estimation even without domain-specific pre-training. Using embeddings from existing RNA foundation model as input to lightweight regressor, we show substantial gains over traditional baselines. We also integrate chromatin accessibility data to capture regulatory context, improving performance further. Our results highlight the effectiveness of pre-trained foundation models and chromatin accessibility data for gRNA activity prediction.

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