MasHeNe: A Benchmark for Head and Neck CT Mass Segmentation using Window-Enhanced Mamba with Frequency-Domain Integration
PositiveArtificial Intelligence
- A new dataset named MasHeNe has been introduced, comprising 3,779 contrast-enhanced CT slices that include both tumors and cysts, complete with pixel-level annotations. This initiative aims to fill the gap in existing public datasets that primarily focus on malignant lesions in head and neck imaging. The Windowing-Enhanced Mamba with Frequency integration (WEMF) model has been proposed, achieving a Dice score of 70.4, marking it as the top performer among evaluated methods.
- The development of MasHeNe is significant as it provides a comprehensive resource for researchers and clinicians, facilitating improved segmentation of head and neck masses. By addressing the limitations of current datasets, it enhances the potential for accurate diagnosis and treatment planning, ultimately benefiting patient care in this critical area of medical imaging.
- This advancement aligns with ongoing efforts in the medical imaging field to enhance segmentation techniques across various modalities. The introduction of benchmarks like MasHeNe and others, such as MedSeg-TTA, reflects a growing recognition of the need for robust evaluation methods in medical image segmentation. These initiatives are crucial for advancing the accuracy and reliability of diagnostic tools in diverse clinical settings.
— via World Pulse Now AI Editorial System
