Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

MapPFN: Learning Causal Perturbation Maps in Context

About

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) pretrained on synthetic data generated from a prior over causal perturbations. Given a set of experiments, MapPFN uses in-context learning to predict post-perturbation distributions, without gradient-based optimization. Despite being pretrained on in silico gene knockouts alone, MapPFN identifies differentially expressed genes, matching the performance of models trained on real single-cell data. Our code and data are available at https://github.com/marvinsxtr/MapPFN.

Marvin Sextro, Weronika K{\l}os, Gabriel Dernbach• 2026

Related benchmarks

TaskDatasetResultRank
Causal Perturbation PredictionSCM dataset linear SCMs (test)
W213.67
10
Causal Perturbation PredictionReal single-cell melanoma data (test)
W221.94
7
Causal Perturbation Mappingsingle-cell dataset zero-shot setting
W223.4
5
Showing 3 of 3 rows

Other info

Follow for update