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GAFR-Net: A Graph Attention and Fuzzy-Rule Network for Interpretable Breast Cancer Image Classification

About

Accurate classification of breast cancer histopathology images is pivotal for early oncological diagnosis and therapeutic intervention.However, conventional deep learning architectures often encounter performance degradation under limited annotations and suffer from a "blackbox" nature, hindering their clinical integration. To mitigate these limitations, we propose GAFRNet, a robust and interpretable Graph Attention and FuzzyRule Network specifically engineered for histopathology image classification with scarce supervision. GAFRNet constructs a similarity-driven graph representation to model intersample relationships and employs a multihead graph attention mechanism to capture complex relational features across heterogeneous tissue structures.Concurrently, a differentiable fuzzy-rule module encodes intrinsic topological descriptorsincluding node degree, clustering coefficient, and label consistencyinto explicit, human-understandable diagnostic logic. This design establishes transparent "IF-THEN" mappings that mimic the heuristic deduction process of medical experts, providing clear reasoning behind each prediction without relying on post-hoc attribution methods. Extensive evaluations on three benchmark datasets (BreakHis, Mini-DDSM, and ICIAR2018) demonstrate that GAFR-Net consistently outperforms various state-of-the-art methods across multiple magnifications and classification tasks. These results validate the superior generalization and practical utility of GAFR-Net as a reliable decision-support tool for weakly supervised medical image analysis.

Lin-Guo Gao, Suxing Liu• 2026

Related benchmarks

TaskDatasetResultRank
Breast Cancer ClassificationBreakHis 40X
Sensitivity91.24
11
Breast Cancer ClassificationBreakHis 100X
Sensitivity95.32
11
Breast Cancer ClassificationBreakHis 200X
Sensitivity95.32
11
Breast Cancer ClassificationMini-DDSM (3-Cls)
Sensitivity78.42
11
Breast Cancer ClassificationICIAR 4-Cls 2018
Sensitivity80.24
11
Two-Class ClassificationBreakHis 40x magnification (test)
AUC-ROC93.87
11
Two-Class ClassificationBreakHis 100x magnification (test)
AUC-ROC96.41
11
Two-Class ClassificationBreakHis 200x magnification (test)
AUC-ROC95.28
11
Two-Class ClassificationBreakHis 400x magnification (test)
AUC-ROC0.8945
11
Breast Cancer ClassificationBreakHis 400X
Sensitivity81.36
11
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