WFR-MFM: One-Step Inference for Dynamic Unbalanced Optimal Transport
About
Reconstructing dynamical evolution from limited observations is a fundamental challenge in single-cell biology, where dynamic unbalanced optimal transport provides a principled framework for modeling coupled transport and mass variation. However, existing approaches rely on trajectory simulation at inference time, making inference a key bottleneck for scalable applications. In this work, we propose a mean-flow framework for unbalanced flow matching that summarizes both transport and mass-growth dynamics over arbitrary time intervals using mean velocity and mass-growth fields, enabling fast one-step generation without trajectory simulation. To solve dynamic unbalanced optimal transport under the Wasserstein-Fisher-Rao geometry, we further build on this framework to develop Wasserstein-Fisher-Rao Mean Flow Matching (WFR-MFM). Across synthetic and real single-cell RNA sequencing datasets, WFR-MFM achieves orders-of-magnitude faster inference than a range of existing baselines while maintaining high predictive accuracy, and enables efficient perturbation response prediction on large synthetic datasets with thousands of conditions.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Population Growth Modeling | 50D CITE t=1 | W127.509 | 12 | |
| Population Growth Modeling | 50D CITE t=2 | W1 Score28.255 | 12 | |
| Population Growth Modeling | 50D CITE t=3 | W134.055 | 12 | |
| Trajectory Inference | Dyngen t=3 | W10.202 | 11 | |
| Trajectory Inference | 50D EB dataset t=1 | W15.236 | 11 | |
| Trajectory Inference | 50D EB dataset t=2 | W1 Error5.904 | 11 | |
| Trajectory Inference | 50D EB t=3 | W16.19 | 11 | |
| Trajectory Inference | EB 50D t=4 | W1 Score6.647 | 11 | |
| Cell population dynamics prediction | 50D Mouse (t=1) | W1 Score5.925 | 11 | |
| Trajectory Inference | 100D EB dataset t=1 | W110.02 | 11 |