MultiCell is a geometric deep learning method that uses a
dual-graph data structure to predict multicellular development. It unifies
granular and foam-like models to forecast single-cell behaviors, like
junction loss and
invagination, with high precision during embryogenesis.
References:
- Yang H, Roy G, Nguyen A Q, et al. Multicell: geometric learning in multicellular development[J]. Nature Methods, 2025: 1-9.