Nature communications

Finding different Cas9 target sequences using environmental DNA and machine learning

Updated

Abstract

CRISPR-PAMdb compiles data from 3.8 million bacterial and archaeal genomes and 7.4 million phage and plasmid sequences.

  • CICERO, a machine learning model, predicts PAM preferences from Cas9 protein sequences.
  • The model achieves an average cosine similarity of 0.69 on test data and 0.75 on experimentally validated Cas9 orthologs.
  • CICERO generates PAM profiles for 50,308 Cas9 proteins, including 17,453 high-confidence predictions.
  • Consensus PAM preferences are inferred for 8003 unique Cas9 clusters through spacer-protospacer alignment.
  • The resources may facilitate exploration of PAM diversity and aid in designing advanced CRISPR-Cas9 tools.

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Full Text

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Funding

Competing interests

Competing interests: G.S. is a scientific advisor to Prime Medicine and a scientific cofounder of Nerai Bio. The remaining authors declare no competing interests.
PubMed

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