A recent study marks the first reported instance of generative AI designing synthetic molecules that can successfully control gene expression in healthy mammalian cells.
As a proof-of-concept, the authors of the
study asked the AI to design synthetic fragments which activate a gene coding
for a fluorescent protein in some cells while leaving gene expression patterns
unaltered.
They created the fragments from scratch and dropped them into mouse blood
cells, where the sequence fused with the genome at random locations.
The experiments
worked exactly as predicted and pave the way for new strategies to give
instructions to a cell and guide how they develop and behave with unprecedented
accuracy.
The model
can be told to create synthetic fragments of DNA with custom criteria, for
example: 'switch this gene on in stem cells which will turn into
red-blood-cells but not platelets.'
The model then predicts which combination
of DNA letters (A, T, C, G) are needed for the gene expression patterns
required in specific types of cells.
Researchers
can then chemically synthesise the roughly 250-letter DNA fragments and add
them to a virus for delivery into cells.
"The
potential applications are vast. It's like writing software but for biology,
giving us new ways of giving instructions to a cell and guiding how they
develop and behave with unprecedented accuracy," says Dr. Robert Fromel,
first author of the study who carried out the work at the Centre for Genomic
Regulation (CRG) in Barcelona.
The study
could lead to new ways for gene-therapy developers to boost or dampen the
activity of genes only in the cells or tissues that need adjusting. It also
paves the way for new strategies to fine-tune a patient's genes and make
treatments more effective and reduce side effects.
The work
marks an important milestone in the field of generative biology. To date,
advances in the field have largely benefited protein design, helping scientists
create entirely new enzymes and antibodies faster than ever before. However,
many human diseases stem from faulty gene expression that is cell-type
specific, for which there might never be a perfect protein drug candidate.
AI-generated
enhancers can help engineer ultra-selective switches that nature has not yet
invented. They can be designed to have exactly the on/off patterns required in
specific types of cells, a level of fine-tuning which is crucial for creating
therapies that avoid unintended effects in healthy cells.
However,
the development of AI models requires lots of high-quality data, which has been
historically lacking for enhancers.
"To create a language model for
biology, you have to understand the language cells speak. We set out to decipher
these grammar rules for enhancers so that we can create entirely new words and
sentences," explains Dr. Lars Velten, corresponding author of the study
and researcher at the Centre for Genomic Regulation (CRG). (ANI)
No comments:
Post a Comment