Author:
Su Jiayu,Reynier Jean-Baptiste,Fu Xi,Zhong Guojie,Jiang Jiahao,Escalante Rydberg Supo,Wang Yiping,Aparicio Luis,Izar Benjamin,Knowles David A.,Rabadan Raul
Abstract
AbstractSpatial 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.
Funder
National Institutes of Health
National Cancer Institute
Center for Integrated Cellular Analysis
Publisher
Springer Science and Business Media LLC
Cited by
3 articles.
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