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Main Authors: Xiao, Ying, Tang, Shimiao, Ling, Xitong, Chen, Weiming, Wang, Jun, Li, Jiawen, Yuan, Huaitian, Yang, Jianghui, Li, Bowen, Li, Huan, Meng, Yiting, Guan, Tian, He, Yonghong, Yin, Hongfang
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.22858
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author Xiao, Ying
Tang, Shimiao
Ling, Xitong
Chen, Weiming
Wang, Jun
Li, Jiawen
Yuan, Huaitian
Yang, Jianghui
Li, Bowen
Li, Huan
Meng, Yiting
Guan, Tian
He, Yonghong
Yin, Hongfang
author_facet Xiao, Ying
Tang, Shimiao
Ling, Xitong
Chen, Weiming
Wang, Jun
Li, Jiawen
Yuan, Huaitian
Yang, Jianghui
Li, Bowen
Li, Huan
Meng, Yiting
Guan, Tian
He, Yonghong
Yin, Hongfang
contents Liver cancer, especially hepatocellular carcinoma (HCC), imposes a substantial global disease burden. Accurate diagnosis and prognostic assessment directly influence treatment selection and patient survival, and pathological examination remains the gold standard for liver cancer diagnosis. Identifying diverse tissue components and pathological subtypes on histopathology slides is crucial for estimating postoperative recurrence risk and overall prognosis. However, most publicly available resources are still provided at the whole-slide image (WSI) level, and well-annotated datasets for fine-grained tissue component identification in liver cancer are scarce, which hinders reproducible model development and the deployment of quantitative analysis tools. To address this gap, we release HepatoBench, a patch-level image database for liver cancer with annotations for seven key tissue categories. Based on HepatoBench, we train and open-source a deep learning classification model as a tissue recognition tool. Furthermore, we train a WSI-level tumor/non-tumor segmentation model to automatically localize lesion regions across entire slides. By integrating the patch-level tissue classifier with the WSI-level segmentation model, we build HepatoQuant, an end-to-end, disease-specific regional quantification tool for liver cancer, enabling a unified workflow from WSIs to tissue composition parsing and quantitative statistics. We also open-source HepatoBench, the benchmarking protocol, and supporting tools, providing a solid foundation for automated regional quantification and fair method comparison in liver cancer pathology.
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spellingShingle A Digital Pathology Resource for Liver Cancer Quantification with Datasets, Benchmarks, and Tools
Xiao, Ying
Tang, Shimiao
Ling, Xitong
Chen, Weiming
Wang, Jun
Li, Jiawen
Yuan, Huaitian
Yang, Jianghui
Li, Bowen
Li, Huan
Meng, Yiting
Guan, Tian
He, Yonghong
Yin, Hongfang
Computer Vision and Pattern Recognition
Liver cancer, especially hepatocellular carcinoma (HCC), imposes a substantial global disease burden. Accurate diagnosis and prognostic assessment directly influence treatment selection and patient survival, and pathological examination remains the gold standard for liver cancer diagnosis. Identifying diverse tissue components and pathological subtypes on histopathology slides is crucial for estimating postoperative recurrence risk and overall prognosis. However, most publicly available resources are still provided at the whole-slide image (WSI) level, and well-annotated datasets for fine-grained tissue component identification in liver cancer are scarce, which hinders reproducible model development and the deployment of quantitative analysis tools. To address this gap, we release HepatoBench, a patch-level image database for liver cancer with annotations for seven key tissue categories. Based on HepatoBench, we train and open-source a deep learning classification model as a tissue recognition tool. Furthermore, we train a WSI-level tumor/non-tumor segmentation model to automatically localize lesion regions across entire slides. By integrating the patch-level tissue classifier with the WSI-level segmentation model, we build HepatoQuant, an end-to-end, disease-specific regional quantification tool for liver cancer, enabling a unified workflow from WSIs to tissue composition parsing and quantitative statistics. We also open-source HepatoBench, the benchmarking protocol, and supporting tools, providing a solid foundation for automated regional quantification and fair method comparison in liver cancer pathology.
title A Digital Pathology Resource for Liver Cancer Quantification with Datasets, Benchmarks, and Tools
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.22858