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Label-free Cell Tracking Enables Collective Motion Phenotyping in Epithelial Monolayers

ORAL

Abstract

Collective cell migration is an umbrella term for a rich variety of cell behaviors, whose distinct character is essential for biological function, notably for cancer metastasis. One essential feature of collective behavior is the motion of cells relative to their immediate neighbors. We introduce an AI-based pipeline to segment and track cell nuclei from phase-contrast images. Nuclei segmentation is based on a U‐Net convolutional neural network trained on images with nucleus staining. Tracking, based on the Crocker-Grier algorithm, quantifies nuclei movement and allows for robust downstream analysis of collective motion. Since the AI algorithm required no new training data, our approach promises to be applicable to and yield new insights for vast libraries of existing collective motion images. In a systematic analysis of a cell line panel with oncogenic mutations, we find that the collective rearrangement metric, D2min, which reflects non-affine motion, shows promise as an indicator of metastatic potential.

Presenters

  • Shuyao Gu

    University of Maryland, College Park

Authors

  • Shuyao Gu

    University of Maryland, College Park

  • Rachel Lee

    University of Maryland, College Park

  • Zackery A Benson

    University of Maryland, College Park

  • Chenyi Ling

    NIST, Gaithersburg

  • Michele Vitolo

    University of Maryland School of Medicine, Baltimore

  • Stuart Martin

    University of Maryland School of Medicine, Baltimore

  • Joe Chalfoun

    NIST, Gaithersburg

  • Wolfgang Losert

    University of Maryland, College Park, University of Maryland College Park