2022
DOI: 10.1101/2022.08.31.506101
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Artificial Intelligence based Liver Portal Tract Region Identification and Quantification with Transplant Biopsy Whole-Slide Images

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… Show more

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“…7 In addition, Sirius Red staining is a selective dye for collagen fibers 8 and has been established as the most stable method of visualizing fibrosis in liver biopsies. 9 Computer-assisted image analysis (CAIA), as well as Masson's trichrome, [10][11][12] reticulin, 13 Sirius Red, [14][15][16] and Elastica van Gieson staining, [17][18][19] is used widely for liver fibrosis assessment.…”
Section: Introductionmentioning
confidence: 99%
“…7 In addition, Sirius Red staining is a selective dye for collagen fibers 8 and has been established as the most stable method of visualizing fibrosis in liver biopsies. 9 Computer-assisted image analysis (CAIA), as well as Masson's trichrome, [10][11][12] reticulin, 13 Sirius Red, [14][15][16] and Elastica van Gieson staining, [17][18][19] is used widely for liver fibrosis assessment.…”
Section: Introductionmentioning
confidence: 99%