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, which is essential for driving membrane fusion during entry.
Scientists have long known that gB is central to infection, but its large size, complex architecture, and coordination with other viral entry proteins have made it difficult to pinpoint which of its many internal interactions are functionally critical.
Liu said the value of artificial intelligence in the project was not that it uncovered something unknowable to human researchers, but that it made the search far more efficient.
Instead of relying on trial and error, the team used simulations and machine learning to analyze thousands of possible molecular interactions simultaneously and rank which ones were most important.
“In biological experiments, you usually start with a hypothesis. You think this region may be important, but in that region there are hundreds of interactions,” Liu said. “You test one, maybe it’s not important, then another. That takes a lot of time and a lot of money. With simulations, the cost can be neglected, and our method is able to identify the real important interactions that can then be tested in experiments.”
AI is increasingly being used in medical research to identify disease patterns that are difficult to detect through traditional methods.
Recent studies have applied machine learning to predict Alzheimer’s years before symptoms appear, flag subtle signs of disease in MRI scans, and forecast long-term risk for hundreds of conditions using large health record datasets.
The U.S. government has also begun investing in the approach, including a $50 million National Institutes of Health initiative to apply AI to childhood cancer research.
Beyond virology, Liu said the same computational framework could be applied to diseases driven by altered protein interactions, including neurodegenerative disorders such as Alzheimer’s disease.
“The most important thing is knowing which interaction to target,” Liu said. “Once we can provide that target, people can look at ways to weaken it, strengthen it, or block it. That’s really the significance of this work.”