Automated classification of multiphoton microscopy images of ovarian tissue using deep learning.

Journal: Journal of biomedical optics
Published Date:

Abstract

Histopathological image analysis of stained tissue slides is routinely used in tumor detection and classification. However, diagnosis requires a highly trained pathologist and can thus be time-consuming, labor-intensive, and potentially risk bias. Here, we demonstrate a potential complementary approach for diagnosis. We show that multiphoton microscopy images from unstained, reproductive tissues can be robustly classified using deep learning techniques. We fine-train four pretrained convolutional neural networks using over 200 murine tissue images based on combined second-harmonic generation and two-photon excitation fluorescence contrast, to classify the tissues either as healthy or associated with high-grade serous carcinoma with over 95% sensitivity and 97% specificity. Our approach shows promise for applications involving automated disease diagnosis. It could also be readily applied to other tissues, diseases, and related classification problems.

Authors

  • Mikko J Huttunen
    Laboratory of Photonics, Physics Unit, Tampere University, FI-33014, Tampere, Finland.
  • Abdurahman Hassan
    University of Ottawa, Department of Physics, Ottawa, Ontario, Canada.
  • Curtis W McCloskey
    University of Ottawa, Department of Cellular and Molecular Medicine, Ottawa, Ontario, Canada.
  • Sijyl Fasih
    University of Ottawa, Department of Physics, Ottawa, Ontario, Canada.
  • Jeremy Upham
    University of Ottawa, Department of Physics, Ottawa, Ontario, Canada.
  • Barbara C Vanderhyden
    University of Ottawa, Department of Cellular and Molecular Medicine, Ottawa, Ontario, Canada.
  • Robert W Boyd
    University of Ottawa, Department of Physics, Ottawa, Ontario, Canada.
  • Sangeeta Murugkar
    Carleton University, Department of Physics, Ottawa, Ontario, Canada.