Virtual Staining of Photon Absorption Remote Sensing Histology Images: A Promising Approach for Label-Free Histological Imaging

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Date

2023-09-26

Authors

Boktor, Marian

Advisor

Haji Reza, Parsin
Fieguth, Paul

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Publisher

University of Waterloo

Abstract

Histology is a crucial diagnostic tool in medicine and biological research, providing valuable insights into tissue morphology and cellular structures. However, conventional histological staining methods are time-consuming. In recent years, label-free microscopy such as photon absorption remote sensing (PARS) has emerged as a promising alternative. PARS microscope utilizes the optical absorption properties of target absorbers to capture high-resolution images of tissues at various wavelengths. This thesis focuses on the development of virtual staining pipelines for PARS histology images. First, a hematoxylin and eosin (H&E) virtual staining pipeline is introduced utilizing state-of-the-art image-to-image translation models, namely pix2pix and cycleGAN. The pipeline consists of preprocessing, image registration, model training, and model testing stages. The trained models facilitate the translation of PARS images into stained versions, replicating the appearance of H&E-stained histology images. The results demonstrate a strong concordance between virtually stained images and true H&E, with pathologists reviewing the results of one of the studies and confirming that the diagnostic quality of the virtually stained PARS images closely resemble that of gold standard H&E. While PARS has made substantial progress in virtual staining, certain challenges persist, particularly regarding model confusion between tissue structures, which results in colorization ambiguity. To enhance structure distinction, we propose expanding the number of input channels in the virtual staining models. This involves introducing a multi-channel virtual staining pipeline that includes feature extraction from PARS time-resolved signals using an existing modified K-means algorithm and a proposed feature selection method based on metrics like the Structural Similarity Index (SSIM). This pipeline aims to enhance the virtual staining process through feature labeling prior to model training. The results show that optimized feature combinations outperform conventional PARS channels in virtually staining human skin and mouse brain tissue, yielding a significant visual and quantitative agreement with gold-standard H&E images. Finally, the proposed virtual staining frameworks are modified to accommodate a broader range of stains and tissue types. In order to showcase the versatility of the frameworks, we apply them to datasets containing Periodic Acid-Schiff (PAS) stain in addition to H&E, specifically using a human fungus tissue sample. The experimental results show that incorporating additional features outperforms conventional PARS channels in both H&E and PAS stains, suggesting the potential of this approach to enhance tissue structure labeling and improve different staining techniques. Moreover, this approach demonstrates the feasibility of using PARS to generate different virtual stains from the same data sources. Throughout the thesis, extensive experimentation and evaluation are conducted using diverse PARS datasets and ground truth histology images. Performance metrics, such as accuracy and visual fidelity, in addition to clinical validation, are employed to assess the effectiveness of the virtual staining pipelines. The findings presented in this thesis demonstrate the efficacy and versatility of the proposed approaches, contributing to the advancement of slide-free histological imaging, which promises to dramatically reduce the time from specimen resection to histological imaging.

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Keywords

histology, virtual staining, photon absorption remote sensing, deep learning, generative models, feature extraction, multi-channel colorization

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