Spatial charting of single-cell transcriptomes in tissues

被引:0
作者
Runmin Wei
Siyuan He
Shanshan Bai
Emi Sei
Min Hu
Alastair Thompson
Ken Chen
Savitri Krishnamurthy
Nicholas E. Navin
机构
[1] UT MD Anderson Cancer Center,Department of Genetics
[2] University of Texas MD Anderson Cancer Center,Graduate School of Biomedical Sciences
[3] Baylor College of Medicine,Department of Surgery
[4] UT MD Anderson Cancer Center,Department of Bioinformatics and Computational Biology
[5] UT MD Anderson Cancer Center,Department of Pathology
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摘要
Single-cell RNA sequencing methods can profile the transcriptomes of single cells but cannot preserve spatial information. Conversely, spatial transcriptomics assays can profile spatial regions in tissue sections, but do not have single-cell resolution. Here, we developed a computational method called CellTrek that combines these two datasets to achieve single-cell spatial mapping through coembedding and metric learning approaches. We benchmarked CellTrek using simulation and in situ hybridization datasets, which demonstrated its accuracy and robustness. We then applied CellTrek to existing mouse brain and kidney datasets and showed that CellTrek can detect topological patterns of different cell types and cell states. We performed single-cell RNA sequencing and spatial transcriptomics experiments on two ductal carcinoma in situ tissues and applied CellTrek to identify tumor subclones that were restricted to different ducts, and specific T cell states adjacent to the tumor areas. Our data show that CellTrek can accurately map single cells in diverse tissue types to resolve their spatial organization.
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页码:1190 / 1199
页数:9
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共 91 条
  • [1] Lim B(2020)Advancing cancer research and medicine with single-cell genomics Cancer Cell 37 456-470
  • [2] Lin Y(2017)Scaling single-cell genomics from phenomenology to mechanism Nature 541 331-338
  • [3] Navin N(2017)The human cell atlas eLife 6 e27041-609
  • [4] Tanay A(2015)Advances and applications of single-cell sequencing technologies Mol. Cell 58 598-45
  • [5] Regev A(2018)Single-cell RNA sequencing to explore immune cell heterogeneity Nat. Rev. Immunol. 18 35-644
  • [6] Regev A(2021)Integrating single-cell and spatial transcriptomics to elucidate intercellular tissue dynamics Nat. Rev. Genet. 22 627-2039
  • [7] Wang Y(2017)Quantitative approaches for investigating the spatial context of gene expression Wiley Interdiscip. Rev. Syst. Biol. Med. 9 e1369-82
  • [8] Navin NE(2020)The microcosmos of intratumor heterogeneity: the space-time of cancer evolution Oncogene 39 2031-1467
  • [9] Papalexi E(2016)Visualization and analysis of gene expression in tissue sections by spatial transcriptomics Science 353 78-342
  • [10] Satija R(2019)Slide-seq: a scalable technology for measuring genome-wide expression at high spatial resolution Science 363 1463-346