PRiMeFlow: Capturing Complex Expression Heterogeneity in Perturbation Response Modelling
arXiv cs.LG / 4/16/2026
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Key Points
- The paper introduces PRiMeFlow, an end-to-end flow-matching approach designed to predict how genetic and small-molecule perturbations change single-cell gene-expression distributions in silico.
- It addresses key modeling challenges from single-cell heterogeneity and latent gene dependencies by fitting and approximating the empirical distribution of gene expression space.
- Extensive benchmarking on PerturBench shows PRiMeFlow can closely match empirical distribution shifts under perturbations.
- Ablation studies support the authors’ design decisions, including operating directly in gene expression space and using a U-Net parameterization for the velocity field.
- The approach is linked to a practical outcome, having served as the basis for a model that won the Generalist Prize in the first ARC Virtual Cell Challenge.
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