| Literature DB >> 30728961 |
Yair Rivenson1,2,3, Tairan Liu1,2,3, Zhensong Wei1,2,3, Yibo Zhang1,2,3, Kevin de Haan1,2,3, Aydogan Ozcan1,2,3,4.
Abstract
Using a deep neural network, we demonstrate a digital staining technique, which we term PhaseStain, to transform the quantitative phase images (QPI) of label-free tissue sections into images that are equivalent to the brightfield microscopy images of the same samples that are histologically stained. Through pairs of image data (QPI and the corresponding brightfield images, acquired after staining), we train a generative adversarial network and demonstrate the effectiveness of this virtual-staining approach using sections of human skin, kidney, and liver tissue, matching the brightfield microscopy images of the same samples stained with Hematoxylin and Eosin, Jones' stain, and Masson's trichrome stain, respectively. This digital-staining framework may further strengthen various uses of label-free QPI techniques in pathology applications and biomedical research in general, by eliminating the need for histological staining, reducing sample preparation related costs and saving time. Our results provide a powerful example of some of the unique opportunities created by data-driven image transformations enabled by deep learning.Entities:
Year: 2019 PMID: 30728961 PMCID: PMC6363787 DOI: 10.1038/s41377-019-0129-y
Source DB: PubMed Journal: Light Sci Appl ISSN: 2047-7538 Impact factor: 17.782
Fig. 1PhaseStain workflow.
A quantitative phase image of a label-free specimen is virtually stained by a deep neural network, bypassing the standard histological staining procedure that is used as part of clinical pathology
Fig. 2Virtual H&E staining of label-free skin tissue using the PhaseStain framework.
Top: QPI of a label-free skin tissue section and the resulting network output. Bottom: zoom-in image of a region of interest and its comparison to the histochemically stained gold standard brightfield image
Fig. 3PhaseStain-based virtual staining of label-free kidney tissue (Jones’ stain) and liver tissue (Masson’s Trichrome)
Fig. 4PhaseStain results for noisy phase input images (ground truth shown in Fig. 2).
a Top row: LΔ~0.373 µm; second row: LΔ~3 µm. b Analysis of the impact of phase noise on the inference quality of PhaseStain (quantified using SSIM), as a function of the Gaussian filter length, L (see Eq. (2))
Fig. 5The impact of holographic fringes resulting from out-of-focus particles on the deep neural network’s digital staining performance.
Top row: QPI of a label-free liver tissue section and the resulting network output. Bottom row: zoom-in image of a region of interest where the coherence-related artifact partially degrades the virtual staining performance
Fig. 6Architecture of the generator and discriminator networks within the GAN framework
Training details for the virtual staining of different tissue types using PhaseStain. Following the training, the blind inference takes ~0.617 s for an FOV of ~0.45 mm2, corresponding to ~3.22 megapixels (see the Discussion section)
| Tissue type | # of iterations | # of patches (256 × 256 pixels) | Training time (h) | # of epochs |
|---|---|---|---|---|
| Liver | 7500 | 2500 training/625 validation | 11.076 | 25 |
| Skin | 11000 | 2500 training/625 validation | 11.188 | 18 |
| Kidney | 13600 | 2312 training/578 validation | 13.173 | 39 |
Fig. 7PhaseStain convergence plots for the validation set of the digital H&E staining of the skin tissue.
a L1-loss with respect to the number of iterations. b Generator loss, lgenerator with respect to the number of iterations