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Identifying multicellular spatiotemporal organization of cells with SpaceFlow

Honglei Ren, Benjamin L. Walker, Zixuan Cang and Qing Nie ()
Additional contact information
Honglei Ren: University of California Irvine
Benjamin L. Walker: University of California Irvine
Zixuan Cang: North Carolina State University
Qing Nie: University of California Irvine

Nature Communications, 2022, vol. 13, issue 1, 1-14

Abstract: Abstract One major challenge in analyzing spatial transcriptomic datasets is to simultaneously incorporate the cell transcriptome similarity and their spatial locations. Here, we introduce SpaceFlow, which generates spatially-consistent low-dimensional embeddings by incorporating both expression similarity and spatial information using spatially regularized deep graph networks. Based on the embedding, we introduce a pseudo-Spatiotemporal Map that integrates the pseudotime concept with spatial locations of the cells to unravel spatiotemporal patterns of cells. By comparing with multiple existing methods on several spatial transcriptomic datasets at both spot and single-cell resolutions, SpaceFlow is shown to produce a robust domain segmentation and identify biologically meaningful spatiotemporal patterns. Applications of SpaceFlow reveal evolving lineage in heart developmental data and tumor-immune interactions in human breast cancer data. Our study provides a flexible deep learning framework to incorporate spatiotemporal information in analyzing spatial transcriptomic data.

Date: 2022
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DOI: 10.1038/s41467-022-31739-w

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