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Overview of the Head and Neck Tumor Segmentation for Magnetic Resonance Guided Applications (HNTS-MRG) 2024 Challenge

Authors :
Wahid, Kareem A.
Dede, Cem
El-Habashy, Dina M.
Kamel, Serageldin
Rooney, Michael K.
Khamis, Yomna
Abdelaal, Moamen R. A.
Ahmed, Sara
Corrigan, Kelsey L.
Chang, Enoch
Dudzinski, Stephanie O.
Salzillo, Travis C.
McDonald, Brigid A.
Mulder, Samuel L.
McCullum, Lucas
Alakayleh, Qusai
Sjogreen, Carlos
He, Renjie
Mohamed, Abdallah S. R.
Lai, Stephen Y.
Christodouleas, John P.
Schaefer, Andrew J.
Naser, Mohamed A.
Fuller, Clifton D.
Publication Year :
2024

Abstract

Magnetic resonance (MR)-guided radiation therapy (RT) is enhancing head and neck cancer (HNC) treatment through superior soft tissue contrast and longitudinal imaging capabilities. However, manual tumor segmentation remains a significant challenge, spurring interest in artificial intelligence (AI)-driven automation. To accelerate innovation in this field, we present the Head and Neck Tumor Segmentation for MR-Guided Applications (HNTS-MRG) 2024 Challenge, a satellite event of the 27th International Conference on Medical Image Computing and Computer Assisted Intervention. This challenge addresses the scarcity of large, publicly available AI-ready adaptive RT datasets in HNC and explores the potential of incorporating multi-timepoint data to enhance RT auto-segmentation performance. Participants tackled two HNC segmentation tasks: automatic delineation of primary gross tumor volume (GTVp) and gross metastatic regional lymph nodes (GTVn) on pre-RT (Task 1) and mid-RT (Task 2) T2-weighted scans. The challenge provided 150 HNC cases for training and 50 for testing, hosted on Grand Challenge using a Docker submission framework. In total, 19 independent teams from across the world qualified by submitting both their algorithms and corresponding papers, resulting in 18 submissions for Task 1 and 15 submissions for Task 2. Evaluation using the mean aggregated Dice Similarity Coefficient showed top-performing AI methods achieved scores of 0.825 in Task 1 and 0.733 in Task 2. These results surpassed clinician interobserver variability benchmarks, marking significant strides in automated tumor segmentation for MR-guided RT applications in HNC.<br />Comment: For HNTS-MRG 2024 volume of Lecture Notes in Computer Science

Subjects

Subjects :
Physics - Medical Physics

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2411.18585
Document Type :
Working Paper