Nature Communications (Nov 2023)

Integrating spatial and single-cell transcriptomics data using deep generative models with SpatialScope

  • Xiaomeng Wan,
  • Jiashun Xiao,
  • Sindy Sing Ting Tam,
  • Mingxuan Cai,
  • Ryohichi Sugimura,
  • Yang Wang,
  • Xiang Wan,
  • Zhixiang Lin,
  • Angela Ruohao Wu,
  • Can Yang

DOI
https://doi.org/10.1038/s41467-023-43629-w
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 22

Abstract

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Abstract The rapid emergence of spatial transcriptomics (ST) technologies is revolutionizing our understanding of tissue spatial architecture and biology. Although current ST methods, whether based on next-generation sequencing (seq-based approaches) or fluorescence in situ hybridization (image-based approaches), offer valuable insights, they face limitations either in cellular resolution or transcriptome-wide profiling. To address these limitations, we present SpatialScope, a unified approach integrating scRNA-seq reference data and ST data using deep generative models. With innovation in model and algorithm designs, SpatialScope not only enhances seq-based ST data to achieve single-cell resolution, but also accurately infers transcriptome-wide expression levels for image-based ST data. We demonstrate SpatialScope’s utility through simulation studies and real data analysis from both seq-based and image-based ST approaches. SpatialScope provides spatial characterization of tissue structures at transcriptome-wide single-cell resolution, facilitating downstream analysis, including detecting cellular communication through ligand-receptor interactions, localizing cellular subtypes, and identifying spatially differentially expressed genes.