HaN-Seg: The head and neck organ-at-risk CT and MR segmentation dataset

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Standard

HaN-Seg : The head and neck organ-at-risk CT and MR segmentation dataset. / Podobnik, Gašper; Strojan, Primož; Peterlin, Primož; Ibragimov, Bulat; Vrtovec, Tomaž.

I: Medical Physics, Bind 50, Nr. 3, 2023.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Podobnik, G, Strojan, P, Peterlin, P, Ibragimov, B & Vrtovec, T 2023, 'HaN-Seg: The head and neck organ-at-risk CT and MR segmentation dataset', Medical Physics, bind 50, nr. 3. https://doi.org/10.1002/mp.16197

APA

Podobnik, G., Strojan, P., Peterlin, P., Ibragimov, B., & Vrtovec, T. (2023). HaN-Seg: The head and neck organ-at-risk CT and MR segmentation dataset. Medical Physics, 50(3). https://doi.org/10.1002/mp.16197

Vancouver

Podobnik G, Strojan P, Peterlin P, Ibragimov B, Vrtovec T. HaN-Seg: The head and neck organ-at-risk CT and MR segmentation dataset. Medical Physics. 2023;50(3). https://doi.org/10.1002/mp.16197

Author

Podobnik, Gašper ; Strojan, Primož ; Peterlin, Primož ; Ibragimov, Bulat ; Vrtovec, Tomaž. / HaN-Seg : The head and neck organ-at-risk CT and MR segmentation dataset. I: Medical Physics. 2023 ; Bind 50, Nr. 3.

Bibtex

@article{fc76e88ea08a48158fa4290da2d4a561,
title = "HaN-Seg: The head and neck organ-at-risk CT and MR segmentation dataset",
abstract = "Purpose: For the cancer in the head and neck (HaN), radiotherapy (RT) represents an important treatment modality. Segmentation of organs-at-risk (OARs) is the starting point of RT planning, however, existing approaches are focused on either computed tomography (CT) or magnetic resonance (MR) images, while multimodal segmentation has not been thoroughly explored yet. We present a dataset of CT and MR images of the same patients with curated reference HaN OAR segmentations for an objective evaluation of segmentation methods. Acquisition and validation methods: The cohort consists of HaN images of 56 patients that underwent both CT and T1-weighted MR imaging for image-guided RT. For each patient, reference segmentations of up to 30 OARs were obtained by experts performing manual pixel-wise image annotation. By maintaining the distribution of patient age and gender, and annotation type, the patients were randomly split into training Set 1 (42 cases or 75%) and test Set 2 (14 cases or 25%). Baseline auto-segmentation results are also provided by training the publicly available deep nnU-Net architecture on Set 1, and evaluating its performance on Set 2. Data format and usage notes: The data are publicly available through an open-access repository under the name HaN-Seg: The Head and Neck Organ-at-Risk CT & MR Segmentation Dataset. Images and reference segmentations are stored in the NRRD file format, where the OAR filenames correspond to the nomenclature recommended by the American Association of Physicists in Medicine, and OAR and demographics information is stored in separate comma-separated value files. Potential applications: The HaN-Seg: The Head and Neck Organ-at-Risk CT & MR Segmentation Challenge is launched in parallel with the dataset release to promote the development of automated techniques for OAR segmentation in the HaN. Other potential applications include out-of-challenge algorithm development and benchmarking, as well as external validation of the developed algorithms.",
keywords = "auto-segmentation, computed tomography, head and neck cancer, image dataset, magnetic resonance, radiation therapy",
author = "Ga{\v s}per Podobnik and Primo{\v z} Strojan and Primo{\v z} Peterlin and Bulat Ibragimov and Toma{\v z} Vrtovec",
note = "Publisher Copyright: {\textcopyright} 2023 The Authors. Medical Physics published by Wiley Periodicals LLC on behalf of American Association of Physicists in Medicine.",
year = "2023",
doi = "10.1002/mp.16197",
language = "English",
volume = "50",
journal = "Medical Physics",
issn = "0094-2405",
publisher = "John Wiley and Sons, Inc.",
number = "3",

}

RIS

TY - JOUR

T1 - HaN-Seg

T2 - The head and neck organ-at-risk CT and MR segmentation dataset

AU - Podobnik, Gašper

AU - Strojan, Primož

AU - Peterlin, Primož

AU - Ibragimov, Bulat

AU - Vrtovec, Tomaž

N1 - Publisher Copyright: © 2023 The Authors. Medical Physics published by Wiley Periodicals LLC on behalf of American Association of Physicists in Medicine.

PY - 2023

Y1 - 2023

N2 - Purpose: For the cancer in the head and neck (HaN), radiotherapy (RT) represents an important treatment modality. Segmentation of organs-at-risk (OARs) is the starting point of RT planning, however, existing approaches are focused on either computed tomography (CT) or magnetic resonance (MR) images, while multimodal segmentation has not been thoroughly explored yet. We present a dataset of CT and MR images of the same patients with curated reference HaN OAR segmentations for an objective evaluation of segmentation methods. Acquisition and validation methods: The cohort consists of HaN images of 56 patients that underwent both CT and T1-weighted MR imaging for image-guided RT. For each patient, reference segmentations of up to 30 OARs were obtained by experts performing manual pixel-wise image annotation. By maintaining the distribution of patient age and gender, and annotation type, the patients were randomly split into training Set 1 (42 cases or 75%) and test Set 2 (14 cases or 25%). Baseline auto-segmentation results are also provided by training the publicly available deep nnU-Net architecture on Set 1, and evaluating its performance on Set 2. Data format and usage notes: The data are publicly available through an open-access repository under the name HaN-Seg: The Head and Neck Organ-at-Risk CT & MR Segmentation Dataset. Images and reference segmentations are stored in the NRRD file format, where the OAR filenames correspond to the nomenclature recommended by the American Association of Physicists in Medicine, and OAR and demographics information is stored in separate comma-separated value files. Potential applications: The HaN-Seg: The Head and Neck Organ-at-Risk CT & MR Segmentation Challenge is launched in parallel with the dataset release to promote the development of automated techniques for OAR segmentation in the HaN. Other potential applications include out-of-challenge algorithm development and benchmarking, as well as external validation of the developed algorithms.

AB - Purpose: For the cancer in the head and neck (HaN), radiotherapy (RT) represents an important treatment modality. Segmentation of organs-at-risk (OARs) is the starting point of RT planning, however, existing approaches are focused on either computed tomography (CT) or magnetic resonance (MR) images, while multimodal segmentation has not been thoroughly explored yet. We present a dataset of CT and MR images of the same patients with curated reference HaN OAR segmentations for an objective evaluation of segmentation methods. Acquisition and validation methods: The cohort consists of HaN images of 56 patients that underwent both CT and T1-weighted MR imaging for image-guided RT. For each patient, reference segmentations of up to 30 OARs were obtained by experts performing manual pixel-wise image annotation. By maintaining the distribution of patient age and gender, and annotation type, the patients were randomly split into training Set 1 (42 cases or 75%) and test Set 2 (14 cases or 25%). Baseline auto-segmentation results are also provided by training the publicly available deep nnU-Net architecture on Set 1, and evaluating its performance on Set 2. Data format and usage notes: The data are publicly available through an open-access repository under the name HaN-Seg: The Head and Neck Organ-at-Risk CT & MR Segmentation Dataset. Images and reference segmentations are stored in the NRRD file format, where the OAR filenames correspond to the nomenclature recommended by the American Association of Physicists in Medicine, and OAR and demographics information is stored in separate comma-separated value files. Potential applications: The HaN-Seg: The Head and Neck Organ-at-Risk CT & MR Segmentation Challenge is launched in parallel with the dataset release to promote the development of automated techniques for OAR segmentation in the HaN. Other potential applications include out-of-challenge algorithm development and benchmarking, as well as external validation of the developed algorithms.

KW - auto-segmentation

KW - computed tomography

KW - head and neck cancer

KW - image dataset

KW - magnetic resonance

KW - radiation therapy

U2 - 10.1002/mp.16197

DO - 10.1002/mp.16197

M3 - Journal article

C2 - 36594372

AN - SCOPUS:85146339771

VL - 50

JO - Medical Physics

JF - Medical Physics

SN - 0094-2405

IS - 3

ER -

ID: 334654920