Single-shot multispectral quantitative phase imaging of biological samples using deep learning.

Journal: Applied optics
PMID:

Abstract

Multispectral quantitative phase imaging (MS-QPI) is a high-contrast label-free technique for morphological imaging of the specimens. The aim of the present study is to extract spectral dependent quantitative information in single-shot using a highly spatially sensitive digital holographic microscope assisted by a deep neural network. There are three different wavelengths used in our method: =532, 633, and 808 nm. The first step is to get the interferometric data for each wavelength. The acquired datasets are used to train a generative adversarial network to generate multispectral (MS) quantitative phase maps from a single input interferogram. The network was trained and validated on two different samples: the optical waveguide and MG63 osteosarcoma cells. Validation of the present approach is performed by comparing the predicted MS phase maps with numerically reconstructed ( + ) phase maps and quantifying with different image quality assessment metrices.

Authors

  • Sunil Bhatt
  • Ankit Butola
  • Anand Kumar
    Departments of Laboratory Medicine, Jai Prakash Narayan Apex Trauma Centre, New Delhi, India.
  • Pramila Thapa
  • Akshay Joshi
  • Suyog Jadhav
  • Neetu Singh
  • Dilip K Prasad
    Department of Computer Science, UiT The Arctic University of Norway, Tromsø, Norway.
  • Krishna Agarwal
    Department of Physics and Technology, UiT The Arctic University of Norway; krishna.agarwal@uit.no.
  • Dalip Singh Mehta