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GraphBAN: Making drug discovery faster and more affordable through artificial intelligence

GraphBAN: making drug discovery faster and more affordable through Artificial Intelligence (AI)
The architecture of GraphBAN. Credit: Nature Communications (2025). DOI: 10.1038/s41467-025-57536-9

UM researchers have developed a deep learning model to predict compound protein interactions. GraphBAN is an inductive graph-based approach. The model is all about discovering new drug candidates in the pre-clinical stage. This means speeding up the drug discovery process and making it more affordable.

The work is in the journal Nature Communications.

"One proven approach in is to find the proteins that play a key role in a disease or help harmful microbes survive. If we can target those proteins with the right small molecules, we can disrupt the disease process," says Hamid Hadipour, data scientist.

Hadipour conceptualized the idea and designed the algorithms along with Dr. Pingzhao Hu. Hu is an adjunct professor at UM Max Rady College of Medicine.

Hadipour explains that GraphBAN predicts if a small molecule can bind to a protein. It can also tell us which parts of it the interacts with. This speeds up the prediction process by doing a visual test using AI. It saves time and money, helping researchers focus on the best drug candidates. These can be antibiotics or cancer treatments.

GraphBAN reflects a strong interdisciplinary collaboration between chemistry, biochemistry, microbiology, and computer science. The project was made possible with Dr. Silvia Cardona's contributions and co-supervision. Cardona is a professor and associate head graduate at the Department of Microbiology. Her lab studies molecular microbiology and microbial genomics, all with a focus on antibiotic discovery.

Cardona tells us that we are going to see more AI predictions in science—predictions that we then have to confirm with experimental research. In a way, AI won't replace but rather complement it.

More information: Hamid Hadipour et al, GraphBAN: An inductive graph-based approach for enhanced prediction of compound-protein interactions, Nature Communications (2025).

Journal information: Nature Communications

Citation: GraphBAN: Making drug discovery faster and more affordable through artificial intelligence (2025, April 14) retrieved 26 July 2025 from /news/2025-04-graphban-drug-discovery-faster-artificial.html
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