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AI-guided CRISPR tools promise safer, more targeted gene editing
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Researchers have combined machine learning with protein engineering to create customized CRISPR-Cas9 enzymes that target specific genetic sequences with higher precision than existing tools. This breakthrough, published in Nature, introduces PAMmla (PAM machine learning algorithm), which uses artificial intelligence to design bespoke gene editors with reduced off-target effects. The innovation represents a shift from pursuing generalist CRISPR enzymes toward developing specialized tools tailored for specific applications, potentially improving both the efficiency and safety of gene editing technologies.

The big picture: Scientists created an AI system that can design custom CRISPR enzymes for highly specific gene editing tasks, potentially making genetic modifications safer and more precise.

  • The researchers trained a neural network on nearly 1,000 engineered SpCas9 enzymes to predict which DNA sequences (called PAMs) the enzymes would recognize.
  • Using this system, they identified enzymes that outperformed existing CRISPR tools while producing fewer unintended edits in human cells.

How it works: The PAMmla algorithm relates amino acid sequences to PAM specificity, allowing it to predict the targeting capabilities of 64 million potential SpCas9 variants.

  • The system essentially functions as an in silico directed evolution method, enabling researchers to design Cas9 enzymes with specific targeting preferences.
  • This approach replaces the traditional strategy of developing “generalist” CRISPR enzymes with a more targeted methodology that creates enzymes uniquely suited to specific genetic targets.

In plain English: Rather than using one-size-fits-all gene editing tools, this technology lets scientists design custom molecular scissors that only cut at very specific locations in DNA, reducing the risk of accidental cuts elsewhere.

Real-world applications: The researchers demonstrated the technology by creating a custom enzyme that selectively targeted a disease-causing mutation in the RHO gene associated with retinal disorders.

  • The enzyme successfully edited the mutated P23H allele in both human cells and mice, showing the approach’s potential for treating genetic diseases.
  • This allele-selective targeting capability could be particularly valuable for dominant genetic disorders where editing only the mutated version of a gene is crucial.

Why this matters: Precision is critical in gene editing technologies, as unintended modifications (off-target edits) can lead to unwanted side effects or safety concerns.

  • Creating enzymes specifically designed for individual targets could significantly reduce these risks while improving editing efficiency.
  • This approach represents a paradigm shift from seeking broad-spectrum editing tools to developing highly specialized ones for specific applications.

Behind the numbers: The scale of this computational effort is remarkable, with the algorithm evaluating 64 million potential enzyme variants to identify the most promising candidates.

  • This massive computational screening would be impossible to achieve through traditional laboratory testing methods.
  • The approach demonstrates how machine learning can dramatically accelerate protein engineering by predicting function from sequence.
Custom CRISPR—Cas9 PAM variants via scalable engineering and machine learning

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