Towards World Models in Biomedical Research
Researchers have proposed a new paradigm called biomedical world models for AI-driven discovery in medicine. These models aim to go beyond static pattern recognition by learning latent representations of biological states and their dynamics. This would enable the simulation of future biological trajectories, aiding in applications like virtual cells, organoids, and patients, ultimately facilitating simulation-guided, closed-loop biomedical research. AI
IMPACT Could enable simulation-guided, closed-loop biomedical discovery by allowing future biological trajectories to be predicted.