Data for: Patient-derived breast model repository, a tool for hyperthermia treatment planning and applicator design

Developed at Erasmus University Medical Center, the Breast Tumor Patient Models (BTPM) Repository consists of 22 unique breast models that are segmented into six tissues including a tumor tissue [1]. The main goal of this repository is to create a unique platform to advance the field of intact breast hyperthermia by facilitating an objective comparison of the heating quality for different hyperthermia devices using the same set of patient-derived models. The models in this repository offer a large variability of anatomical and pathological characteristics in the intact breast. Two of the models (Models 4 and 20) are also part of the ESHO benchmarks for computational modeling and optimization in hyperthermia therapy [2].

In terms of anatomical characteristics, the breast models range from small volumes (154 ml) to large volumes (1336 ml) and a mean value (591 ml). Another important anatomical characteristic, the breast density, is well covered, with three out of four breast density groups included in this database. The missing type I (almost entirely fat) breast density category is known to have a significantly lower risk of developing breast cancer, and hence does not appear in this database.

In terms of pathological characteristics, all the repository models hold important variations in terms of tumor size, tumor location, and tumor depth. In terms of tumor size, the tumor volumes vary from very small 1.8 ml to 39 ml. The vast majority of tumors are stage T2 (20–50mm) tumors (18/22), but both T1 (<20 mm; 2/22) and T3 (>50 mm; 2/22) staged tumors are also present in this repository. In terms of tumor location, the current repository covers all the areas of the breast, with the most common tumor site being the upper outer region. In terms of tumor depth, the tumor sites cover all ranges from superficially positioned tumors to tumors very close to the breast base, close to the chest wall. This is evident in the large variation of tumor center to skin distance, varying from 12 to 43 mm, with an average of 26 mm.

All models in the BPTM Repository were created from fully anonymized contrast enhanced MRI data of the breast cancer patients undergoing neoadjuvant chemotherapy. All models were segmented into six tissues: skin, bone, muscle, tumor, fibroglandular, and fat. Skin, thoracic bones, pectoralis major muscle, and the tumor lesion were manually contoured. The remaining tissue volume was segmented into fatty and fibroglandular tissue using an automatic segmentation method based on the voxel intensity described in Zastrow et al. [3] and Omer et al. [4].

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Title Data for: Patient-derived breast model repository, a tool for hyperthermia treatment planning and applicator design
Description

Developed at Erasmus University Medical Center, the Breast Tumor Patient Models (BTPM) Repository consists of 22 unique breast models that are segmented into six tissues including a tumor tissue [1]. The main goal of this repository is to create a unique platform to advance the field of intact breast hyperthermia by facilitating an objective comparison of the heating quality for different hyperthermia devices using the same set of patient-derived models. The models in this repository offer a large variability of anatomical and pathological characteristics in the intact breast. Two of the models (Models 4 and 20) are also part of the ESHO benchmarks for computational modeling and optimization in hyperthermia therapy [2].

In terms of anatomical characteristics, the breast models range from small volumes (154 ml) to large volumes (1336 ml) and a mean value (591 ml). Another important anatomical characteristic, the breast density, is well covered, with three out of four breast density groups included in this database. The missing type I (almost entirely fat) breast density category is known to have a significantly lower risk of developing breast cancer, and hence does not appear in this database.

In terms of pathological characteristics, all the repository models hold important variations in terms of tumor size, tumor location, and tumor depth. In terms of tumor size, the tumor volumes vary from very small 1.8 ml to 39 ml. The vast majority of tumors are stage T2 (20–50mm) tumors (18/22), but both T1 (<20 mm; 2/22) and T3 (>50 mm; 2/22) staged tumors are also present in this repository. In terms of tumor location, the current repository covers all the areas of the breast, with the most common tumor site being the upper outer region. In terms of tumor depth, the tumor sites cover all ranges from superficially positioned tumors to tumors very close to the breast base, close to the chest wall. This is evident in the large variation of tumor center to skin distance, varying from 12 to 43 mm, with an average of 26 mm.

All models in the BPTM Repository were created from fully anonymized contrast enhanced MRI data of the breast cancer patients undergoing neoadjuvant chemotherapy. All models were segmented into six tissues: skin, bone, muscle, tumor, fibroglandular, and fat. Skin, thoracic bones, pectoralis major muscle, and the tumor lesion were manually contoured. The remaining tissue volume was segmented into fatty and fibroglandular tissue using an automatic segmentation method based on the voxel intensity described in Zastrow et al. [3] and Omer et al. [4].

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Contact dataset owners via DataverseNL.
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rso@erasmusmc.nl
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https://dataverse.nl/dataset.xhtml?persistentId=doi:10.34894/SP8SMJ
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Erasmus MC
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rso@erasmusmc.nl
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https://www.erasmusmc.nl/en/contact-details-and-directions
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NL-EMC
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Creator 1
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Curto, Sergio
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rso@erasmusmc.nl
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https://dataverse.nl/dataset.xhtml?persistentId=doi:10.34894/SP8SMJ
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https://orcid.org/0000-0002-3073-1117
Creator 2
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Sumser, Kemal
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rso@erasmusmc.nl
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https://dataverse.nl/dataset.xhtml?persistentId=doi:10.34894/SP8SMJ
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https://orcid.org/0000-0002-6695-2659
Creator 3
URI
Name
Androulakis, Ioannis
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rso@erasmusmc.nl
URL
https://dataverse.nl/dataset.xhtml?persistentId=doi:10.34894/SP8SMJ
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https://orcid.org/0000-0003-4816-7048
Landing page https://doi.org/10.34894/SP8SMJ
Release date 2025-02-18T23:00:00+00:00
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    Identifier doi:10.34894/SP8SMJ
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    Spatial resolution in meters
    Access rights http://publications.europa.eu/resource/authority/access-right/PUBLIC
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    1. https://publications.europa.eu/resource/authority/data-theme/HEAL
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    1. http://id.loc.gov/vocabulary/iso639-1/en
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    1. https://doi.org/10.1080/02656736.2022.2121862
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    1. 1.0
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    URI https://fdp.erasmusmc.nl/dataset/444387d8-8901-4b3e-b012-d077d5d94bf1