Author
Listed:
- Dominik Klein
(Helmholtz Center
Technical University of Munich)
- Giovanni Palla
(Helmholtz Center
Technical University of Munich)
- Marius Lange
(Helmholtz Center
Technical University of Munich
ETH Zürich)
- Michal Klein
(Apple)
- Zoe Piran
(The Hebrew University of Jerusalem)
- Manuel Gander
(Helmholtz Center)
- Laetitia Meng-Papaxanthos
(Google DeepMind)
- Michael Sterr
(Helmholtz Center
German Center for Diabetes Research)
- Lama Saber
(Helmholtz Center
German Center for Diabetes Research
Technical University of Munich)
- Changying Jing
(Helmholtz Center
German Center for Diabetes Research
Ludwig Maximilian University (LMU))
- Aimée Bastidas-Ponce
(Helmholtz Center
German Center for Diabetes Research)
- Perla Cota
(Helmholtz Center
German Center for Diabetes Research
Technical University of Munich)
- Marta Tarquis-Medina
(Helmholtz Center
German Center for Diabetes Research)
- Shrey Parikh
(Helmholtz Center)
- Ilan Gold
(Helmholtz Center)
- Heiko Lickert
(Helmholtz Center
German Center for Diabetes Research
Technical University of Munich)
- Mostafa Bakhti
(Helmholtz Center
German Center for Diabetes Research)
- Mor Nitzan
(The Hebrew University of Jerusalem
The Hebrew University of Jerusalem
The Hebrew University of Jerusalem)
- Marco Cuturi
(Apple)
- Fabian J. Theis
(Helmholtz Center
Technical University of Munich
Technical University of Munich)
Abstract
Single-cell genomic technologies enable the multimodal profiling of millions of cells across temporal and spatial dimensions. However, experimental limitations hinder the comprehensive measurement of cells under native temporal dynamics and in their native spatial tissue niche. Optimal transport has emerged as a powerful tool to address these constraints and has facilitated the recovery of the original cellular context1–4. Yet, most optimal transport applications are unable to incorporate multimodal information or scale to single-cell atlases. Here we introduce multi-omics single-cell optimal transport (moscot), a scalable framework for optimal transport in single-cell genomics that supports multimodality across all applications. We demonstrate the capability of moscot to efficiently reconstruct developmental trajectories of 1.7 million cells from mouse embryos across 20 time points. To illustrate the capability of moscot in space, we enrich spatial transcriptomic datasets by mapping multimodal information from single-cell profiles in a mouse liver sample and align multiple coronal sections of the mouse brain. We present moscot.spatiotemporal, an approach that leverages gene-expression data across both spatial and temporal dimensions to uncover the spatiotemporal dynamics of mouse embryogenesis. We also resolve endocrine-lineage relationships of delta and epsilon cells in a previously unpublished mouse, time-resolved pancreas development dataset using paired measurements of gene expression and chromatin accessibility. Our findings are confirmed through experimental validation of NEUROD2 as a regulator of epsilon progenitor cells in a model of human induced pluripotent stem cell islet cell differentiation. Moscot is available as open-source software, accompanied by extensive documentation.
Suggested Citation
Dominik Klein & Giovanni Palla & Marius Lange & Michal Klein & Zoe Piran & Manuel Gander & Laetitia Meng-Papaxanthos & Michael Sterr & Lama Saber & Changying Jing & Aimée Bastidas-Ponce & Perla Cota &, 2025.
"Mapping cells through time and space with moscot,"
Nature, Nature, vol. 638(8052), pages 1065-1075, February.
Handle:
RePEc:nat:nature:v:638:y:2025:i:8052:d:10.1038_s41586-024-08453-2
DOI: 10.1038/s41586-024-08453-2
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