Nature Communications (Feb 2025)

Automated cytometric gating with human-level performance using bivariate segmentation

  • Jiong Chen,
  • Matei Ionita,
  • Yanbo Feng,
  • Yinfeng Lu,
  • Patryk Orzechowski,
  • Sumita Garai,
  • Kenneth Hassinger,
  • Jingxuan Bao,
  • Junhao Wen,
  • Duy Duong-Tran,
  • Joost Wagenaar,
  • Michelle L. McKeague,
  • Mark M. Painter,
  • Divij Mathew,
  • Ajinkya Pattekar,
  • Nuala J. Meyer,
  • E. John Wherry,
  • Allison R. Greenplate,
  • Li Shen

DOI
https://doi.org/10.1038/s41467-025-56622-2
Journal volume & issue
Vol. 16, no. 1
pp. 1 – 15

Abstract

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Abstract Recent advances in cytometry have enabled high-throughput data collection with multiple single-cell protein expression measurements. The significant biological and technical variance in cytometry has posed a formidable challenge during the gating process, especially for the initial pre-gates which deal with unpredictable events, such as debris and technical artifacts. To mitigate the labor-intensive manual gating process, we propose UNITO, a framework to rigorously identify the hierarchical cytometric subpopulations. UNITO transforms a cell-level classification task into an image-based segmentation problem. The framework is validated on three independent cohorts (two mass cytometry and one flow cytometry datasets). We compare its results with previous automated methods using the consensus of at least four experienced immunologists. UNITO outperforms existing methods and deviates from human consensus by no more than any individual does. UNITO can reproduce a similar contour compared to manual gating for post-hoc inspection, and it also allows parallelization of samples for faster processing.