AI+CRISPR=Precise gene editing

3D visualization of the production of a red fluorescent protein in a tadpole. The gene responsible for its production is specifically activated in muscle cells. Photo: Taiyo Yamamoto, University of Zurich

A research team headed by the University of Zurich (UZH) has developed a powerful new method to precisely edit DNA by combining cutting-edge genetic engineering with artificial intelligence (AI).

The technique opens the door to more accurate modeling of human diseases and lays the groundwork for next-generation gene therapies.

Precise and targeted DNA editing by small point mutations as well as the integration of whole genes via CRISPR/Cas technology has great potential for applications in biotechnology and gene therapy. However, it is very important that the so-called “gene scissors” do not cause any unintended genetic changes, but maintain genomic integrity to avoid unintended side effects. Normally, double-stranded breaks in the DNA molecule are accurately repaired in humans and other organisms. But occasionally, this DNA end-joining repair results in genetic errors.

Now, scientists from UZH, Ghent University in Belgium and the ETH Zurich have developed a new method which greatly improves the precision of genome editing. Using AI, the tool, called Pythia, predicts how cells repair their DNA after it is cut by gene editing tools such as CRISPR/Cas9.

“Our team developed tiny DNA repair templates, which act like molecular glue and guide the cell to make precise genetic changes,” said lead author Thomas Naert, who pioneered the technology in at the UZH and is currently a post-doc at Ghent University.

These AI-designed templates were first tested in human cell cultures, where they enabled highly accurate gene edits and integrations. The approach was also validated in other organisms, including Xenopus, a small tropical frog used in biomedical research, and in living mice, where the researchers successfully edited DNA in brain cells.

“DNA repair follows patterns; it is not random. And Pythia uses these patterns to our advantage,” said Naert.

Fluorescently tagged neural molecule imaged in a living tadpole, with colours representing imaging depth. The brain and spinal nerves appear near the top in turquoise to purple, the path of peripheral nerves is visible throughout the tadpole. Photo: Taiyo Yamamoto, University of Zurich

Traditionally, when CRISPR cuts DNA, scientists rely on the cell’s natural repair mechanisms to fix the break. While these repairs follow predictable patterns, they can result in unwanted outcomes, such as destruction of the surrounding genes.

“What we modeled at massive scale is that this DNA repair process obeys consistent rules that AI can learn and predict,” Naert said.

With this insight, the researchers simulated millions of possible editing outcomes using machine learning, asking a simple but powerful question: What is the most efficient way to make a specific small change to the genome, given how the cell is likely to repair itself?

In addition to changing individual letters of the genetic code or integrate an exogenously delivered gene, the method can also be used to fluorescently label specific proteins.

Naert said: “That is incredibly powerful, because it allows us to directly observe what individual proteins are doing in healthy and diseased tissue.”

Another advantage of the new method is that it works well in all cells – even in organs with no cell division, such as the brain.

Pythia is named after the high priestess of the oracle at the Temple of Apollo of Delphi in Antiquity, who was consulted to predict the future. In a similar way, this new tool allows scientists to forecast the outcomes of gene editing with remarkable precision.

“Just as meteorologists use AI to predict the weather, we are using it to forecast how cells will respond to genetic interventions. That kind of predictive power is essential if we want gene editing to be safe, reliable, and clinically useful,” said Soeren Lienkamp, professor at the Institute of Anatomy of UZH and the ETH Zurich and senior author of the study.

“What excites us most is not only the technology itself, but also the possibilities it opens. Pythia brings together large-scale AI prediction with real biological systems. From cultured cells to whole animals, this tight loop between modeling and experimentation points is becoming increasingly useful, for example in precise gene therapies.”

The work creates new possibilities for understanding genetic disease and developing gene therapies, also for neurological diseases, that are both safer and more effective.

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Jim Cornall is editor of Deeptech Digest and publisher at Ayr Coastal Media. He is an award-winning writer, editor, photographer, broadcaster, designer and author. Contact Jim here.