Boundary-Emphasized Weight Maps for Distal Airway Segmentation
Journal:
arXiv
Published Date:
Feb 28, 2025
Abstract
Automated airway segmentation from lung CT scans is vital for diagnosing and
monitoring pulmonary diseases. Despite advancements, challenges like leakage,
breakage, and class imbalance persist, particularly in capturing small airways
and preserving topology. We propose the Boundary-Emphasized Loss (BEL), which
enhances boundary preservation using a boundary-based weight map and an
adaptive weight refinement strategy. Unlike centerline-based approaches, BEL
prioritizes boundary voxels to reduce misclassification, improve topology, and
enhance structural consistency, especially on distal airway branches. Evaluated
on ATM22 and AIIB23, BEL outperforms baseline loss functions, achieving higher
topology-related metrics and comparable overall-based measures. Qualitative
results further highlight BEL's ability to capture fine anatomical details and
reduce segmentation errors, particularly in small airways. These findings
establish BEL as a promising solution for accurate and topology-enhancing
airway segmentation in medical imaging.