Inferring super-resolution tissue architecture by integrating spatial transcriptomics with histology
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2024
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American English
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Springer Nature
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Abstract
Spatial transcriptomics (ST) has demonstrated enormous potential for generating intricate molecular maps of cells within tissues. Here we present iStar, a method based on hierarchical image feature extraction that integrates ST data and high-resolution histology images to predict spatial gene expression with super-resolution. Our method enhances gene expression resolution to near-single-cell levels in ST and enables gene expression prediction in tissue sections where only histology images are available.
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Cite As
Zhang D, Schroeder A, Yan H, et al. Inferring super-resolution tissue architecture by integrating spatial transcriptomics with histology. Nat Biotechnol. 2024;42(9):1372-1377. doi:10.1038/s41587-023-02019-9
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Nature Biotechnology
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PMC
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Article
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Author's manuscript