Hierarchical Classification for Improved Histopathology Image Analysis
- URL: http://arxiv.org/abs/2603.00504v1
- Date: Sat, 28 Feb 2026 07:01:04 GMT
- Title: Hierarchical Classification for Improved Histopathology Image Analysis
- Authors: Keunho Byeon, Jinsol Song, Seong Min Hong, Yosep Chong, Jin Tae Kwak,
- Abstract summary: HiClass is a hierarchical classification framework for improved histopathology image analysis.<n>Built upon a multiple instance learning approach, HiClass extends it by introducing bidirectional feature integration.<n>We assess the performance of HiClass on a gastric biopsy dataset with 4 coarse-grained and 14 fine-grained classes.
- Score: 7.036962871076997
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Whole-slide image analysis is essential for diagnostic tasks in pathology, yet existing deep learning methods primarily rely on flat classification, ignoring hierarchical relationships among class labels. In this study, we propose HiClass, a hierarchical classification framework for improved histopathology image analysis, that enhances both coarse-grained and fine-grained WSI classification. Built based upon a multiple instance learning approach, HiClass extends it by introducing bidirectional feature integration that facilitates information exchange between coarse-grained and fine-grained feature representations, effectively learning hierarchical features. Moreover, we introduce tailored loss functions, including hierarchical consistency loss, intra- and inter-class distance loss, and group-wise cross-entropy loss, to further optimize hierarchical learning. We assess the performance of HiClass on a gastric biopsy dataset with 4 coarse-grained and 14 fine-grained classes, achieving superior classification performance for both coarse-grained classification and fine-grained classification. These results demonstrate the effectiveness of HiClass in improving WSI classification by capturing coarse-grained and fine-grained histopathological characteristics.
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