Efficient and explainable histopathology for cancer detection using dual-teacher distillation and integrated gradients

Citation

Ahmad, Khubab and Arif, Saad and Hanif, Muhammad and Alturki, Nazik and Asghar, Muhammad Nabeel and Shah, Munam Ali (2026) Efficient and explainable histopathology for cancer detection using dual-teacher distillation and integrated gradients. Frontiers in Medicine, 13. ISSN 2296-858X

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Abstract

Gastric cancer remains one of the most common malignancies worldwide. The timely and accurate histopathological diagnosis plays a critical role in effective treatment. Manual interpretation of histology slides is time consuming and requires considerable expertise. To address these challenges, this study introduces a two-teacher one-student (2T–1S) knowledge distillation framework for gastric cancer classification using the GasHisSDB dataset. The framework leverages DenseNet-121 and ResNet-50 as teacher networks to guide a lightweight MobileNet-V2 student. This approach provided high accuracy with significantly reduced computational cost. Experiments on multi-resolution patches (80 × 80, 120 × 120, and 160 × 160) show that the MobileNetV2 student achieved accuracies of 95.78%, 97.46%, and 98.33%, respectively. Also, the teacher model DenseNet-121 achieved the accuracies of 96.44%, 98.75% and 98.19% and the ResNet-50 teacher reached 96.63%, 97.87% and 98.31% respectively. In addition, the student network was more than thirty times smaller and nearly twice as fast during inference. This fast light-weight model is well-suited for real-time inference on resource-constrained devices. Integrated Gradients were applied to explain the model was paying attention to actual features and focus on meaningful regions like nuclei clusters and gland boundaries. Compared with many existing techniques this framework act as balance trade-off between accuracy, speed and interpretability. This balance positions the framework as a viable tool for digital pathology workflows and further refinement could extend its utility to clinical decision support.

Item Type: Article
Uncontrolled Keywords: Deep learning, digital pathology
Subjects: R Medicine > R Medicine (General) > R858-859.7 Computer applications to medicine. Medical informatics
Divisions: Faculty of Engineering and Technology (FET)
Depositing User: Ms Rosnani Abd Wahab
Date Deposited: 02 Apr 2026 03:19
Last Modified: 06 Apr 2026 05:31
URII: http://shdl.mmu.edu.my/id/eprint/15636

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