Nature Communications (Jun 2021)

Cell segmentation-free inference of cell types from in situ transcriptomics data

  • Jeongbin Park,
  • Wonyl Choi,
  • Sebastian Tiesmeyer,
  • Brian Long,
  • Lars E. Borm,
  • Emma Garren,
  • Thuc Nghi Nguyen,
  • Bosiljka Tasic,
  • Simone Codeluppi,
  • Tobias Graf,
  • Matthias Schlesner,
  • Oliver Stegle,
  • Roland Eils,
  • Naveed Ishaque

DOI
https://doi.org/10.1038/s41467-021-23807-4
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 13

Abstract

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Inaccurate cell segmentation has been the major problem for cell-type identification and tissue characterization of the in situ spatially resolved transcriptomics data. Here we show a robust cell segmentation-free computational framework (SSAM), for identifying cell types and tissue domains in 2D and 3D.