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Head and neck tumor segmentation in PET/CT: The HECKTOR challenge
195
Zitationen
27
Autoren
2021
Jahr
Abstract
This paper relates the post-analysis of the first edition of the HEad and neCK TumOR (HECKTOR) challenge. This challenge was held as a satellite event of the 23rd International Conference on Medical Image Computing and Computer-Assisted Intervention (MICCAI) 2020, and was the first of its kind focusing on lesion segmentation in combined FDG-PET and CT image modalities. The challenge's task is the automatic segmentation of the Gross Tumor Volume (GTV) of Head and Neck (H&N) oropharyngeal primary tumors in FDG-PET/CT images. To this end, the participants were given a training set of 201 cases from four different centers and their methods were tested on a held-out set of 53 cases from a fifth center. The methods were ranked according to the Dice Score Coefficient (DSC) averaged across all test cases. An additional inter-observer agreement study was organized to assess the difficulty of the task from a human perspective. 64 teams registered to the challenge, among which 10 provided a paper detailing their approach. The best method obtained an average DSC of 0.7591, showing a large improvement over our proposed baseline method and the inter-observer agreement, associated with DSCs of 0.6610 and 0.61, respectively. The automatic methods proved to successfully leverage the wealth of metabolic and structural properties of combined PET and CT modalities, significantly outperforming human inter-observer agreement level, semi-automatic thresholding based on PET images as well as other single modality-based methods. This promising performance is one step forward towards large-scale radiomics studies in H&N cancer, obviating the need for error-prone and time-consuming manual delineation of GTVs.
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Autoren
- Valentin Oreiller
- Vincent Andrearczyk
- Mario Jreige
- Sarah Boughdad
- Hesham Elhalawani
- J. Castelli
- Martin Vallières
- Simeng Zhu
- Juanying Xie
- Ying Peng
- Andrei Iantsen
- Mathieu Hatt
- Yading Yuan
- Jun Ma
- Xiaoping Yang
- Chinmay Rao
- Suraj Pai
- Kanchan Ghimire
- Xue Feng
- Mohamed A. Naser
- Clifton D. Fuller
- Fereshteh Yousefirizi
- Arman Rahmim
- Huai Chen
- Lisheng Wang
- John O. Prior
- Adrien Depeursinge
Institutionen
- HES-SO University of Applied Sciences and Arts Western Switzerland(CH)
- University Hospital of Lausanne(CH)
- HES-SO Valais-Wallis(CH)
- Dana-Farber Cancer Institute(US)
- Dana-Farber Brigham Cancer Center(US)
- Brigham and Women's Hospital(US)
- Harvard University(US)
- Centre Eugène Marquis(FR)
- Université de Sherbrooke(CA)
- Henry Ford Hospital(US)
- Shaanxi Normal University(CN)
- Laboratoire de Traitement de l'Information Médicale(FR)
- Inserm(FR)
- Icahn School of Medicine at Mount Sinai(US)
- Nanjing University of Science and Technology(CN)
- Nanjing University(CN)
- Maastro Clinic(NL)
- Maastricht University Medical Centre(NL)
- Maastricht University(NL)
- University of Virginia(US)
- The University of Texas MD Anderson Cancer Center(US)
- BC Cancer Agency(CA)
- Shanghai Jiao Tong University(CN)