Mapping cells through time and space with moscot

Dominik Klein(Helmholtz Zentrum München), Giovanni Palla(Helmholtz Zentrum München), Marius Lange(Helmholtz Zentrum München), Michal Klein(Apple (United Kingdom)), Zoe Piran(Hebrew University of Jerusalem), Manuel Gander(Helmholtz Zentrum München), Laetitia Meng-Papaxanthos(Google (United States)), Michael Sterr(Deutsches Diabetes-Zentrum e.V.), Aimée Bastidas-Ponce(Deutsches Diabetes-Zentrum e.V.), Marta Tarquis-Medina(Deutsches Diabetes-Zentrum e.V.), Heiko Lickert(Deutsches Diabetes-Zentrum e.V.), Mostafa Bakhti(Deutsches Diabetes-Zentrum e.V.), Mor Nitzan(Hebrew University of Jerusalem), Marco Cuturi(Apple (United Kingdom)), Fabian J. Theis(Helmholtz Zentrum München)
bioRxiv (Cold Spring Harbor Laboratory)
May 11, 2023
Cited by 56Open Access
Full Text

Abstract

Abstract Single-cell genomics technologies enable multimodal profiling of millions of cells across temporal and spatial dimensions. Experimental limitations prevent the measurement of all-encompassing cellular states in their native temporal dynamics or spatial tissue niche. Optimal transport theory has emerged as a powerful tool to overcome such constraints, enabling the recovery of the original cellular context. However, most algorithmic implementations currently available have not kept up the pace with increasing dataset complexity, so that current methods are unable to incorporate multimodal information or scale to single-cell atlases. Here, we introduce multi-omics single-cell optimal transport (moscot), a general and scalable framework for optimal transport applications in single-cell genomics, supporting multimodality across all applications. We demonstrate moscot’s ability to efficiently reconstruct developmental trajectories of 1.7 million cells of mouse embryos across 20 time points and identify driver genes for first heart field formation. The moscot formulation can be used to transport cells across spatial dimensions as well: To demonstrate this, we enrich spatial transcriptomics datasets by mapping multimodal information from single-cell profiles in a mouse liver sample, and align multiple coronal sections of the mouse brain. We then present moscot.spatiotemporal, a new approach that leverages gene expression across spatial and temporal dimensions to uncover the spatiotemporal dynamics of mouse embryogenesis. Finally, we disentangle lineage relationships in a novel murine, time-resolved pancreas development dataset using paired measurements of gene expression and chromatin accessibility, finding evidence for a shared ancestry between delta and epsilon cells. Moscot is available as an easy-to-use, open-source python package with extensive documentation at https://moscot-tools.org .


Related Papers

No related papers found

Powered by citation graph analysis