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SMART: spatial transcriptomics deconvolution using marker-gene-assisted topic model

Chen Xi Yang, Don D. Sin, Raymond T. Ng

2024Genome biology11 citationsDOIOpen Access PDF

Abstract

While spatial transcriptomics offer valuable insights into gene expression patterns within the spatial context of tissue, many technologies do not have a single-cell resolution. Here, we present SMART, a marker gene-assisted deconvolution method that simultaneously infers the cell type-specific gene expression profile and the cellular composition at each spot. Using multiple datasets, we show that SMART outperforms the existing methods in realistic settings. It also provides a two-stage approach to enhance its performance on cell subtypes. The covariate model of SMART enables the identification of cell type-specific differentially expressed genes across conditions, elucidating biological changes at a single-cell-type resolution.

Topics & Concepts

DeconvolutionBiologyComputational biologyContext (archaeology)Identification (biology)TranscriptomeGeneCell typeGene expressionGeneticsCellComputer scienceAlgorithmPaleontologyBotanySingle-cell and spatial transcriptomicsExtracellular vesicles in diseaseGene expression and cancer classification