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Spatially informed cell-type deconvolution for spatial transcriptomics.

Ying MaXiang Zhou
Published in: Nature biotechnology (2022)
Many spatially resolved transcriptomic technologies do not have single-cell resolution but measure the average gene expression for each spot from a mixture of cells of potentially heterogeneous cell types. Here, we introduce a deconvolution method, conditional autoregressive-based deconvolution (CARD), that combines cell-type-specific expression information from single-cell RNA sequencing (scRNA-seq) with correlation in cell-type composition across tissue locations. Modeling spatial correlation allows us to borrow the cell-type composition information across locations, improving accuracy of deconvolution even with a mismatched scRNA-seq reference. CARD can also impute cell-type compositions and gene expression levels at unmeasured tissue locations to enable the construction of a refined spatial tissue map with a resolution arbitrarily higher than that measured in the original study and can perform deconvolution without an scRNA-seq reference. Applications to four datasets, including a pancreatic cancer dataset, identified multiple cell types and molecular markers with distinct spatial localization that define the progression, heterogeneity and compartmentalization of pancreatic cancer.
Keyphrases
  • single cell
  • rna seq
  • gene expression
  • high throughput
  • dna methylation
  • single molecule
  • induced apoptosis
  • poor prognosis
  • health information
  • cell cycle arrest
  • stem cells
  • signaling pathway
  • cell therapy
  • bone marrow