Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

PRiMeFlow: Capturing Complex Expression Heterogeneity in Perturbation Response Modelling

About

Predicting the effects of perturbations in-silico on cell state can identify drivers of cell behavior at scale and accelerate drug discovery. However, modeling challenges remain due to the inherent heterogeneity of single cell gene expression and the complex, latent gene dependencies. Here, we present PRiMeFlow, an end-to-end flow matching based approach to directly model the effects of genetic and small molecule perturbations in the gene expression space. The distribution-fitting approach taken by PRiMeFlow enables it to accurately approximate the empirical distribution of single-cell gene expression, which we demonstrate through extensive benchmarking inside PerturBench. Through ablation studies, we also validate important model design choices such as operating in gene expression space and parameterizing the velocity field with a U-Net architecture. Finally, by scaling PRiMeFlow to a broad perturbation data atlas spanning multiple datasets and employing a carefully designed pretraining-finetuning strategy, we demonstrate its outstanding performance on the H1 human embryonic stem cells from the ARC Virtual Cell Challenge benchmark.

Zichao Yan, Yan Wu, Mica Xu Ji, Chaitra Agrahar, Esther Wershof, Marcel Nassar, Mehrshad Sadria, Ridvan Eksi, Vladimir Trifonov, Ignacio Ibarra, Telmo Felgueira, B{\l}a\.zej Osi\'nski, Rory Stark• 2026

Related benchmarks

TaskDatasetResultRank
Perturbation response modellingNorman19
Cosine logFC0.79
20
Perturbation response modelingSrivatsan20
Cosine logFC0.46
20
Perturbation response modellingJiang24
Cosine logFC0.47
19
Covariate transfer taskSrivatsan20 (test)
MMD GEX0.13
14
Combo predictionNorman 19
MMD GEX1.3
14
Showing 5 of 5 rows

Other info

Follow for update