MED-PHCVJul 13, 2022

RESECT-SEG: Open access annotations of intra-operative brain tumor ultrasound images

arXiv:2207.07494v110 citationsh-index: 44
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This provides a resource for researchers in medical imaging to improve validation of image processing methods, though it is incremental as it builds on an existing dataset.

The authors addressed the scarcity of publicly accessible ground truth data for validating registration and segmentation techniques in brain tumor surgery by releasing RESECT-SEG, a dataset of tumor tissue and resection cavity annotations from intra-operative ultrasound images for 23 patients, validated by neurosurgeons and made available online.

Purpose: Registration and segmentation of magnetic resonance (MR) and ultrasound (US) images play an essential role in surgical planning and resection of brain tumors. However, validating these techniques is challenging due to the scarcity of publicly accessible sources with high-quality ground truth information. To this end, we propose a unique annotation dataset of tumor tissues and resection cavities from the previously published RESECT dataset (Xiao et al. 2017) to encourage a more rigorous assessments of image processing techniques. Acquisition and validation methods: The RESECT database consists of MR and intraoperative US (iUS) images of 23 patients who underwent resection surgeries. The proposed dataset contains tumor tissues and resection cavity annotations of the iUS images. The quality of annotations were validated by two highly experienced neurosurgeons through several assessment criteria. Data format and availability: Annotations of tumor tissues and resection cavities are provided in 3D NIFTI formats. Both sets of annotations are accessible online in the \url{https://osf.io/6y4db}. Discussion and potential applications: The proposed database includes tumor tissue and resection cavity annotations from real-world clinical ultrasound brain images to evaluate segmentation and registration methods. These labels could also be used to train deep learning approaches. Eventually, this dataset should further improve the quality of image guidance in neurosurgery.

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