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Reference-free cell type deconvolution of multi-cellular pixel-resolution spatially resolved transcriptomics data.


ABSTRACT: Recent technological advancements have enabled spatially resolved transcriptomic profiling but at multi-cellular pixel resolution, thereby hindering the identification of cell-type-specific spatial patterns and gene expression variation. To address this challenge, we develop STdeconvolve as a reference-free approach to deconvolve underlying cell types comprising such multi-cellular pixel resolution spatial transcriptomics (ST) datasets. Using simulated as well as real ST datasets from diverse spatial transcriptomics technologies comprising a variety of spatial resolutions such as Spatial Transcriptomics, 10X Visium, DBiT-seq, and Slide-seq, we show that STdeconvolve can effectively recover cell-type transcriptional profiles and their proportional representation within pixels without reliance on external single-cell transcriptomics references. STdeconvolve provides comparable performance to existing reference-based methods when suitable single-cell references are available, as well as potentially superior performance when suitable single-cell references are not available. STdeconvolve is available as an open-source R software package with the source code available at https://github.com/JEFworks-Lab/STdeconvolve .

SUBMITTER: Miller BF 

PROVIDER: S-EPMC9055051 | biostudies-literature | 2022 Apr

REPOSITORIES: biostudies-literature

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Reference-free cell type deconvolution of multi-cellular pixel-resolution spatially resolved transcriptomics data.

Miller Brendan F BF   Huang Feiyang F   Atta Lyla L   Sahoo Arpan A   Sahoo Arpan A   Fan Jean J  

Nature communications 20220429 1


Recent technological advancements have enabled spatially resolved transcriptomic profiling but at multi-cellular pixel resolution, thereby hindering the identification of cell-type-specific spatial patterns and gene expression variation. To address this challenge, we develop STdeconvolve as a reference-free approach to deconvolve underlying cell types comprising such multi-cellular pixel resolution spatial transcriptomics (ST) datasets. Using simulated as well as real ST datasets from diverse sp  ...[more]

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