Computational tissue staining of non-linear multimodal imaging using supervised and unsupervised deep learning

Abstract

Hematoxylin and Eosin (H&E) staining is the 'gold-standard' method in histopathology. However, standard H&E staining of high-quality tissue sections requires long sample preparation times including sample embedding, which restricts its application for 'real-time' disease diagnosis. Due to this reason, a label-free alternative technique like non-linear multimodal (NLM) imaging, which is the combination of three non-linear optical modalities including coherent anti-Stokes Raman scattering, two-photon excitation fluorescence and second-harmonic generation, is proposed in this work. To correlate the information of the NLM images with H&E images, this work proposes computational staining of NLM images using deep learning models in a supervised and an unsupervised approach. In the supervised and the unsupervised approach, conditional generative adversarial networks (CGANs) and cycle conditional generative adversarial networks (cycle CGANs) are used, respectively. Both CGAN and cycle CGAN models generate pseudo H&E images, which are quantitatively analyzed based on mean squared error, structure similarity index and color shading similarity index. The mean of the three metrics calculated for the computationally generated H&E images indicate significant performance. Thus, utilizing CGAN and cycle CGAN models for computational staining is beneficial for diagnostic applications without performing a laboratory-based staining procedure. To the author's best knowledge, it is the first time that NLM images are computationally stained to H&E images using GANs in an unsupervised manner.

Description
Keywords
Coherent scattering, Image denoising, ulcerative colitis, Mean square error, Nonlinear optics, Raman spectroscopy, Adversarial networks, Coherent anti Stokes Raman scattering, staining, second harmonic generation microscopy, Diagnostic applications, Multi-modal imaging, Structure similarity, Two photon excitation fluorescence, Unsupervised approaches, hematoxylin, Crohn disease, cycle conditional generative adversarial network, deep learning, fluorescence microscopy, quantitative analysis, nonlinear optical microscopy, histopathology, network analysis, multimodal imaging, mathematical model, human tissue, image analysis, image processing, image quality, image segmentation, machine learning
Citation
Pradhan, P., Meyer, T., Vieth, M., Stallmach, A., Waldner, M., Schmitt, M., et al. (2021). Computational tissue staining of non-linear multimodal imaging using supervised and unsupervised deep learning. 12(4). https://doi.org//10.1364/BOE.415962
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License
CC BY 4.0 Unported