Back to all papers

Explainable benchmarking of U-Net variants for lung segmentation on chest radiographs.

June 27, 2026pubmed logopapers

Authors

Abushahla KH,Arslan H

Affiliations (1)

  • Biomedical Technologies Application and Research Center (BİYOTAM), Sakarya University of Applied Sciences, Sakarya, Türkiye.

Abstract

Accurate lung field segmentation in chest radiographs is essential for reliable computer-aided diagnosis of pulmonary diseases. This study aimed to systematically benchmark baseline, lightweight, and attention-based U-Net architectures while integrating explainable artificial intelligence (AI) to evaluate both segmentation performance and anatomical focus. We conducted a comparative evaluation of three U-Net variants-baseline U-Net, attention U-Net, and shallow U-Net-using the chest X-ray Masks and Labels dataset. All models were trained under identical conditions with five-fold cross-validation and evaluated using accuracy, Intersection over Union (IoU), and Dice coefficient. Gradient-weighted Class Activation Mapping (Grad-CAM) was applied to visualize model attention and assess whether network activations were anatomically localized within lung regions. All architectures were implemented in TensorFlow. U-Net and attention U-Net achieved the highest segmentation performance (Dice ≈ 0.97, IoU ≈ 0.94), with Grad-CAM activations consistently localized to lung fields, indicating reliable anatomical focus. The shallow U-Net showed slightly lower accuracy (Dice= 0.96, IoU= 0.92) but demonstrated faster inference and broader sensitivity to internal parenchymal structures, which may facilitate future disease-focused pulmonary analysis. This study highlights the trade-offs between segmentation accuracy, computational efficiency, and model interpretability across U-Net variants. By combining quantitative benchmarking with explainable AI-based analysis, our results provide performance insights, supporting the development of trustworthy AI tools for chest radiograph analysis.

Topics

Journal Article

Ready to Sharpen Your Edge?

Subscribe to join 11k+ peers who rely on RadAI Slice. Get the essential weekly briefing that empowers you to navigate the future of radiology.

We respect your privacy. Unsubscribe at any time.