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    Artificial intelligence based liver portal tract region identification and quantification with transplant biopsy whole-slide images

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    Author
    Yu, Hanyi
    Sharifai, Nima
    Jiang, Kun
    Wang, Fusheng
    Teodoro, George
    Farris, Alton B.
    Kong, Jun
    Date
    2022-11-01
    Journal
    Computers in Biology and Medicine
    Type
    Article
    
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    https://doi.org/10.1016/j.compbiomed.2022.106089
    Abstract
    Liver fibrosis staging is clinically important for liver disease progression prediction. As the portal tract fibrotic quantity and size in a liver biopsy correlate with the fibrosis stage, an accurate analysis of portal tract regions is clinically critical. Manual annotations of portal tract regions, however, are time-consuming and subject to large inter- and intra-observer variability. To address such a challenge, we develop a Multiple Up-sampling and Spatial Attention guided UNet model (MUSA-UNet) to segment liver portal tract regions in whole-slide images of liver tissue slides. To enhance the segmentation performance, we propose to use depth-wise separable convolution, the spatial attention mechanism, the residual connection, and multiple up-sampling paths in the developed model. This study includes 53 histopathology whole slide images from patients who received liver transplantation. In total, 6,012 patches derived from 30 images are used for our deep learning model training and validation. The remaining 23 whole slide images are utilized for the model testing. The average liver portal tract segmentation performance of the developed MUSA-UNet is 0.94 (Precision), 0.85 (Recall), 0.89 (F1 Score), 0.89 (Accuracy), 0.80 (Jaccard Index), and 0.91 (Fowlkes–Mallows Index), respectively. The clinical Scheuer fibrosis stage presents a strong correlation with the resulting average portal tract fibrotic area (R = 0.681, p<0.001) and portal tract percentage (R = 0.335, p = 0.02) computed from the MUSA-UNet segmentation results. In conclusion, our developed deep learning model MUSA-UNet can accurately segment portal tract regions from whole-slide images of liver tissue biopsies, presenting its promising potential to assist liver disease diagnosis in a computational manner. © 2022 Elsevier Ltd
    Sponsors
    National Science Foundation
    Keyword
    Attention mechanism
    Deep learning
    Image segmentation
    Liver fibrosis staging
    Liver portal tract
    Identifier to cite or link to this item
    http://hdl.handle.net/10713/19880
    ae974a485f413a2113503eed53cd6c53
    10.1016/j.compbiomed.2022.106089
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