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Generative AI predicts and assembles cell drug responses like Lego blocks

AI model predicts and assembles cell drug responses like lego blocks
Credit: Cell Systems (2025). DOI: 10.1016/j.cels.2025.101405

Controlling the state of a cell in a desired direction is one of the central challenges in life sciences, including drug development, cancer treatment, and regenerative medicine. However, identifying the right drug or genetic target for that purpose is extremely difficult.

To address this, researchers at KAIST have mathematically modeled the interaction between cells and drugs in a modular "Lego block" manner—breaking them down and recombining them—to develop a new AI technology that can predict not only new cell– never before tested but also the effects of arbitrary genetic perturbations.

A research team led by Professor Kwang-Hyun Cho of the Department of Bio and Brain Engineering has developed a generative AI-based technology capable of identifying drugs and genetic targets that can guide cells toward a desired state. Their work is in the journal Cell Systems.

"Latent space" is an invisible mathematical map used by image-generating AI to organize the essential features of objects or cells. The research team succeeded in separating the representations of cell states and drug effects within this space and then recombining them to predict the reactions of previously untested cell–drug combinations. They further extended this principle to show that the model can also predict how a cell's state would change when a specific gene is regulated.

The team validated this approach using real experimental data. As a result, the AI identified molecular targets capable of reverting colorectal cancer cells toward a normal-like state, which the team later confirmed through cell experiments.

This finding demonstrates that the method is not limited to —it serves as a general platform capable of predicting various untrained cell-state transitions and drug responses. In other words, the technology not only determines whether or not a drug works but also reveals how it functions inside the cell, making the achievement particularly meaningful.

The research provides a powerful tool for designing methods to induce desired cell-state changes. It is expected to have broad applications in , , and , such as restoring damaged cells to a healthy state.

Professor Kwang-Hyun Cho stated, "Inspired by image-generation AI, we applied the concept of a 'direction vector,' an idea that allows us to transform cells in a desired direction." He added, "This technology enables of how specific drugs or genes affect cells and even predicts previously unknown reactions, making it a highly generalizable AI framework."

More information: Younghyun Han et al, Identifying an optimal perturbation to induce a desired cell state by generative deep learning, Cell Systems (2025).

Journal information: Cell Systems

Citation: Generative AI predicts and assembles cell drug responses like Lego blocks (2025, October 16) retrieved 16 October 2025 from /news/2025-10-generative-ai-cell-drug-responses.html
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