Smoother: a unified and modular framework for incorporating structural dependency in spatial omics data

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Abstract

Spatial omics technologies can help identify spatially organized biological processes, but existing computational approaches often overlook structural dependencies in the data. Here, we introduce Smoother, a unified framework that integrates positional information into non-spatial models via modular priors and losses. In simulated and real datasets, Smoother enables accurate data imputation, cell-type deconvolution, and dimensionality reduction with remarkable efficiency. In colorectal cancer, Smoother-guided deconvolution reveals plasma cell and fibroblast subtype localizations linked to tumor microenvironment restructuring. Additionally, joint modeling of spatial and single-cell human prostate data with Smoother allows for spatial mapping of reference populations with significantly reduced ambiguity.

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Su, J., Reynier, J. B., Fu, X., Zhong, G., Jiang, J., Escalante, R. S., … Rabadan, R. (2023). Smoother: a unified and modular framework for incorporating structural dependency in spatial omics data. Genome Biology, 24(1). https://doi.org/10.1186/s13059-023-03138-x

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