Deep learning-based segmentation of subcellular organelles in high-resolution phase-contrast images.

Journal: Cell structure and function
PMID:

Abstract

Although quantitative analysis of biological images demands precise extraction of specific organelles or cells, it remains challenging in broad-field grayscale images, where traditional thresholding methods have been hampered due to complex image features. Nevertheless, rapidly growing artificial intelligence technology is overcoming obstacles. We previously reported the fine-tuned apodized phase-contrast microscopy system to capture high-resolution, label-free images of organelle dynamics in unstained living cells (Shimasaki, K. et al. (2024). Cell Struct. Funct., 49: 21-29). We here showed machine learning-based segmentation models for subcellular targeted objects in phase-contrast images using fluorescent markers as origins of ground truth masks. This method enables accurate segmentation of organelles in high-resolution phase-contrast images, providing a practical framework for studying cellular dynamics in unstained living cells.Key words: label-free imaging, organelle dynamics, apodized phase contrast, deep learning-based segmentation.

Authors

  • Kentaro Shimasaki
    Department of Biochemistry and Cell Biology, National Institute of Infectious Diseases.
  • Yuko Okemoto-Nakamura
    Department of Biochemistry and Cell Biology, National Institute of Infectious Diseases.
  • Kyoko Saito
    Department of Biochemistry and Cell Biology, National Institute of Infectious Diseases.
  • Masayoshi Fukasawa
    Department of Biochemistry and Cell Biology, National Institute of Infectious Diseases.
  • Kaoru Katoh
    Biomedical Research Institute, National Institute of Advanced Industrial Science and Technology (AIST).
  • Kentaro Hanada
    Center for Quality Management Systems, National Institute of Infectious Diseases.