Learning single-cell perturbation responses using neural optimal transport.
Charlotte BunneStefan G StarkGabriele GutJacobo Sarabia Del CastilloMitch LevesqueKjong-van LehmannLucas PelkmansAndreas KrauseGunnar RätschPublished in: Nature methods (2023)
Understanding and predicting molecular responses in single cells upon chemical, genetic or mechanical perturbations is a core question in biology. Obtaining single-cell measurements typically requires the cells to be destroyed. This makes learning heterogeneous perturbation responses challenging as we only observe unpaired distributions of perturbed or non-perturbed cells. Here we leverage the theory of optimal transport and the recent advent of input convex neural architectures to present CellOT, a framework for learning the response of individual cells to a given perturbation by mapping these unpaired distributions. CellOT outperforms current methods at predicting single-cell drug responses, as profiled by scRNA-seq and a multiplexed protein-imaging technology. Further, we illustrate that CellOT generalizes well on unseen settings by (1) predicting the scRNA-seq responses of holdout patients with lupus exposed to interferon-β and patients with glioblastoma to panobinostat; (2) inferring lipopolysaccharide responses across different species; and (3) modeling the hematopoietic developmental trajectories of different subpopulations.
Keyphrases
- single cell
- induced apoptosis
- rna seq
- cell cycle arrest
- genome wide
- high resolution
- high throughput
- signaling pathway
- endoplasmic reticulum stress
- cell death
- emergency department
- depressive symptoms
- dendritic cells
- bone marrow
- rheumatoid arthritis
- toll like receptor
- dna methylation
- inflammatory response
- single molecule
- small molecule
- protein protein
- copy number
- disease activity