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

Brendan Miller, Feiyang Huang, Lyla Atta, Arpan Sahoo, Jean Fan

2022Nature Communications237 citationsDOIOpen Access PDF

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 .

Topics & Concepts

DeconvolutionPixelTranscriptomeComputer scienceResolution (logic)Cell typeComputational biologyCellBiological systemArtificial intelligenceBiologyAlgorithmGene expressionGeneticsGeneSingle-cell and spatial transcriptomicsCell Image Analysis TechniquesAdvanced Fluorescence Microscopy Techniques
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