4.7 Article

Phase Contrast Image Restoration by Formulating Its Imaging Principle and Reversing the Formulation With Deep Neural Networks

Journal

IEEE TRANSACTIONS ON MEDICAL IMAGING
Volume 42, Issue 4, Pages 1068-1082

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMI.2022.3223677

Keywords

Image restoration; Microscopy; Imaging; Image segmentation; Deep learning; Optical microscopy; Neural networks; Phase contrast microscope; imaging process; deep neural network; cell segmentation

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Phase contrast microscopy is a noninvasive imaging technique that can monitor the behavior of transparent cells without staining or altering them. However, the imaging images of phase contrast microscopy contain artifacts that hinder cell segmentation and detection. In this research, we accurately formulated the imaging model of phase contrast microscopy and proposed an image restoration procedure using a deep neural network, which enables high quality cell segmentation.
Phase contrast microscopy, as a noninvasive imaging technique, has been widely used to monitor the behavior of transparent cells without staining or altering them. Due to the optical principle of the specifically-designed microscope, phase contrast microscopy images contain artifacts such as halo and shade-off which hinder the cell segmentation and detection tasks. Some previous works developed simplified computational imaging models for phase contrast microscopes by linear approximations and convolutions. The approximated models do not exactly reflect the imaging principle of the phase contrast microscope and accordingly the image restoration by solving the corresponding deconvolution process is not perfect. In this paper, we revisit the optical principle of the phase contrast microscope to precisely formulate its imaging model without any approximation. Based on this model, we propose an image restoration procedure by reversing this imaging model with a deep neural network, instead of mathematically deriving the inverse operator of the model which is technically impossible. Extensive experiments are conducted to demonstrate the superiority of the newly derived phase contrast microscopy imaging model and the power of the deep neural network on modeling the inverse imaging procedure. Moreover, the restored images enable that high quality cell segmentation task can be easily achieved by simply thresholding methods.

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