Nature Communications (May 2023)

MetaTiME integrates single-cell gene expression to characterize the meta-components of the tumor immune microenvironment

  • Yi Zhang,
  • Guanjue Xiang,
  • Alva Yijia Jiang,
  • Allen Lynch,
  • Zexian Zeng,
  • Chenfei Wang,
  • Wubing Zhang,
  • Jingyu Fan,
  • Jiajinlong Kang,
  • Shengqing Stan Gu,
  • Changxin Wan,
  • Boning Zhang,
  • X. Shirley Liu,
  • Myles Brown,
  • Clifford A. Meyer

DOI
https://doi.org/10.1038/s41467-023-38333-8
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 12

Abstract

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Abstract Recent advances in single-cell RNA sequencing have shown heterogeneous cell types and gene expression states in the non-cancerous cells in tumors. The integration of multiple scRNA-seq datasets across tumors can indicate common cell types and states in the tumor microenvironment (TME). We develop a data driven framework, MetaTiME, to overcome the limitations in resolution and consistency that result from manual labelling using known gene markers. Using millions of TME single cells, MetaTiME learns meta-components that encode independent components of gene expression observed across cancer types. The meta-components are biologically interpretable as cell types, cell states, and signaling activities. By projecting onto the MetaTiME space, we provide a tool to annotate cell states and signature continuums for TME scRNA-seq data. Leveraging epigenetics data, MetaTiME reveals critical transcriptional regulators for the cell states. Overall, MetaTiME learns data-driven meta-components that depict cellular states and gene regulators for tumor immunity and cancer immunotherapy.