Artificial Intelligence Techniques for Segmentation and Classification of Renal Tumors Using EfficientNet-Based U-Net and Epistemic Neural Networks: Trends and Challenges

Main Article Content

Wariya Petropoulos

Abstract

Renal tumor detection and classification play a crucial role in early diagnosis and treatment planning for kidney cancer. With the advancement of Artificial Intelligence (AI), deep learning-based approaches have significantly improved the accuracy and efficiency of medical image analysis. This paper presents a comprehensive review of AI techniques for renal tumor segmentation and classification, focusing on EfficientNet-based U-Net architectures and epistemic neural networks. EfficientNet enhances feature extraction through compound scaling, while U-Net provides precise localization via encoder–decoder structures. The integration of epistemic uncertainty modeling further improves reliability by quantifying prediction confidence, which is essential for clinical decision-making.


Recent studies (2020–2023) demonstrate that hybrid U-Net architectures, attention mechanisms, and transformer-based enhancements achieve high Dice coefficients and Intersection-over-Union (IoU) scores for kidney tumor segmentation . Additionally, uncertainty-aware models improve robustness in heterogeneous medical datasets. This review analyzes recent advancements, compares state-of-the-art models, and highlights challenges such as data scarcity, computational complexity, and model interpretability.


The study concludes that combining EfficientNet-based U-Net with epistemic neural networks offers a promising direction for accurate, reliable, and clinically applicable renal tumor diagnosis systems.

Article Details

How to Cite
Petropoulos, W. (2025). Artificial Intelligence Techniques for Segmentation and Classification of Renal Tumors Using EfficientNet-Based U-Net and Epistemic Neural Networks: Trends and Challenges. International Journal on Advanced Electrical and Computer Engineering, 14(2), 45–50. Retrieved from https://journals.mriindia.com/index.php/ijaece/article/view/1997
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