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MapPFN: Learning Causal Perturbation Maps in Context

Machine Learning 2026-05-08 v3

Abstract

Planning effective interventions in biological systems requires treatment-effect models that adapt to unseen biological contexts by identifying their specific underlying mechanisms. Yet single-cell perturbation datasets span only a handful of biological contexts, and existing methods cannot leverage new interventional evidence at inference time to adapt beyond their training data. To meta-learn a perturbation effect estimator, we present MapPFN, a prior-data fitted network (PFN) pre-trained on a synthetic biological prior with causal interventions, decoupling pre-training from limited wet-lab data. Unlike existing methods, MapPFN uses in-context learning to map a sequence of experiments to a post-perturbation distribution, enabling a single pre-trained model to adapt to new datasets and arbitrary gene sets at inference time. Zero-shot, MapPFN identifies differentially expressed genes on par with models trained on real single-cell data, and fine-tuning further improves predictions across biological contexts. Our code, model and data are available at https://marvinsxtr.github.io/MapPFN.

Keywords

Cite

@article{arxiv.2601.21092,
  title  = {MapPFN: Learning Causal Perturbation Maps in Context},
  author = {Marvin Sextro and Weronika Kłos and Gabriel Dernbach},
  journal= {arXiv preprint arXiv:2601.21092},
  year   = {2026}
}
R2 v1 2026-07-01T09:24:45.581Z