Automated Detection and Grading of Renal Cell Carcinoma in Histopathological Images via Efficient Attention Transformer Networkopen access
- Authors
- Hissa Al-kuwari; Belqes Alshami; Aisha Al-Khinji; Haider, Adnan; Arsalan, Muhammad
- Issue Date
- Nov-2025
- Publisher
- MDPI
- Keywords
- deep learning; efficientNet; histopathology; medical image classification; renal cell carcinoma; vision transformer
- Citation
- Medical Sciences, v.13, no.4, pp 1 - 16
- Pages
- 16
- Indexed
- SCOPUS
ESCI
- Journal Title
- Medical Sciences
- Volume
- 13
- Number
- 4
- Start Page
- 1
- End Page
- 16
- URI
- https://scholarworks.dongguk.edu/handle/sw.dongguk/62254
- DOI
- 10.3390/medsci13040257
- ISSN
- 2076-3271
2076-3271
- Abstract
- Background: Renal Cell Carcinoma (RCC) is the most common type of kidney cancer and requires accurate histopathological grading for effective prognosis and treatment planning. However, manual grading is time-consuming, subjective, and susceptible to inter-observer variability. Objective: This study proposes EAT-Net (Efficient Attention Transformer Network), a dual-stream deep learning model designed to automate and enhance RCC grade classification from histopathological images. Method: EAT-Net integrates EfficientNetB0 for local feature extraction and a Vision Transformer (ViT) stream for capturing global contextual dependencies. The architecture incorporates Squeeze-and-Excitation (SE) modules to recalibrate feature maps, improving focus on informative regions. The model was trained and evaluated on two publicly available datasets, KMC-RENAL and RCCG-Net. Standard preprocessing was applied, and the model's performance was assessed using accuracy, precision, recall, and F1-score. Results: EAT-Net achieved superior results compared to state-of-the-art models, with an accuracy of 92.25%, precision of 92.15%, recall of 92.12%, and F1-score of 92.25%. Ablation studies demonstrated the complementary value of the EfficientNet and ViT streams. Additionally, Grad-CAM visualizations confirmed that the model focuses on diagnostically relevant areas, supporting its interpretability and clinical relevance. Conclusion: EAT-Net offers an accurate, and explainable framework for RCC grading. Its lightweight architecture and high performance make it well-suited for clinical deployment in digital pathology workflows.
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