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WFR-MFM: One-Step Inference for Dynamic Unbalanced Optimal Transport

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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.

Xinyu Wang, Ruoyu Wang, Qiangwei Peng, Peijie Zhou, Tiejun Li• 2026

Related benchmarks

TaskDatasetResultRank
Population Growth Modeling50D CITE t=1
W127.509
12
Population Growth Modeling50D CITE t=2
W1 Score28.255
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Population Growth Modeling50D CITE t=3
W134.055
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Trajectory InferenceDyngen t=3
W10.202
11
Trajectory Inference50D EB dataset t=1
W15.236
11
Trajectory Inference50D EB dataset t=2
W1 Error5.904
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Trajectory Inference50D EB t=3
W16.19
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Trajectory InferenceEB 50D t=4
W1 Score6.647
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Cell population dynamics prediction50D Mouse (t=1)
W1 Score5.925
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Trajectory Inference100D EB dataset t=1
W110.02
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