A large open access dataset of brain metastasis 3D segmentations on MRI with clinical and imaging information

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作者
Divya Ramakrishnan
Leon Jekel
Saahil Chadha
Anastasia Janas
Harrison Moy
Nazanin Maleki
Matthew Sala
Manpreet Kaur
Gabriel Cassinelli Petersen
Sara Merkaj
Marc von Reppert
Ujjwal Baid
Spyridon Bakas
Claudia Kirsch
Melissa Davis
Khaled Bousabarah
Wolfgang Holler
MingDe Lin
Malte Westerhoff
Sanjay Aneja
Fatima Memon
Mariam S. Aboian
机构
[1] Yale School of Medicine,Division of Computational Pathology, Department of Pathology & Laboratory Medicine
[2] Department of Radiology and Biomedical Imaging,Department of Radiology and Department of Pathology & Laboratory Medicine, Perelman School of Medicine
[3] University of Essen School of Medicine,School of Clinical Dentistry
[4] Charité University School of Medicine,Diagnostic, Molecular and Interventional Radiology, Biomedical Engineering Imaging
[5] Wesleyan University,Department of Therapeutic Radiology
[6] Tulane University School of Medicine,Center for Outcomes Research and Evaluation (CORE)
[7] Ludwig Maximilian University School of Medicine,undefined
[8] University of Göttingen School of Medicine,undefined
[9] Ulm University School of Medicine,undefined
[10] University of Leipzig School of Medicine,undefined
[11] Indiana University School of Medicine,undefined
[12] University of Pennsylvania,undefined
[13] University of Sheffield,undefined
[14] Mount Sinai Hospital,undefined
[15] Visage Imaging,undefined
[16] GmbH,undefined
[17] Visage Imaging,undefined
[18] Inc.,undefined
[19] Yale School of Medicine,undefined
[20] Yale School of Medicine,undefined
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摘要
Resection and whole brain radiotherapy (WBRT) are standard treatments for brain metastases (BM) but are associated with cognitive side effects. Stereotactic radiosurgery (SRS) uses a targeted approach with less side effects than WBRT. SRS requires precise identification and delineation of BM. While artificial intelligence (AI) algorithms have been developed for this, their clinical adoption is limited due to poor model performance in the clinical setting. The limitations of algorithms are often due to the quality of datasets used for training the AI network. The purpose of this study was to create a large, heterogenous, annotated BM dataset for training and validation of AI models. We present a BM dataset of 200 patients with pretreatment T1, T1 post-contrast, T2, and FLAIR MR images. The dataset includes contrast-enhancing and necrotic 3D segmentations on T1 post-contrast and peritumoral edema 3D segmentations on FLAIR. Our dataset contains 975 contrast-enhancing lesions, many of which are sub centimeter, along with clinical and imaging information. We used a streamlined approach to database-building through a PACS-integrated segmentation workflow.
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