CellFlow: Simulating Cellular Morphology Changes via Flow Matching
Zhang, Yuhui, Su, Yuchang, Wang, Chenyu, Li, Tianhong, Wefers, Zoe, Nirschl, Jeffrey, Burgess, James, Ding, Daisy, Lozano, Alejandro, Lundberg, Emma, Yeung-Levy, Serena
–arXiv.org Artificial Intelligence
Building a virtual cell capable of accurately simulating cellular behaviors in silico has long been a dream in computational biology. We introduce CellFlow, an image-generative model that simulates cellular morphology changes induced by chemical and genetic perturbations using flow matching. Unlike prior methods, CellFlow models distribution-wise transformations from unperturbed to perturbed cell states, effectively distinguishing actual perturbation effects from experimental artifacts such as batch effects -- a major challenge in biological data. Evaluated on chemical (BBBC021), genetic (RxRx1), and combined perturbation (JUMP) datasets, CellFlow generates biologically meaningful cell images that faithfully capture perturbation-specific morphological changes, achieving a 35% improvement in FID scores and a 12% increase in mode-of-action prediction accuracy over existing methods. Additionally, CellFlow enables continuous interpolation between cellular states, providing a potential tool for studying perturbation dynamics. These capabilities mark a significant step toward realizing virtual cell modeling for biomedical research.
arXiv.org Artificial Intelligence
Feb-13-2025