2024
DOI: 10.1002/acm2.14371
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A deep learning‐based 3D Prompt‐nnUnet model for automatic segmentation in brachytherapy of postoperative endometrial carcinoma

Xian Xue,
Dazhu Liang,
Kaiyue Wang
et al.

Abstract: PurposeTo create and evaluate a three‐dimensional (3D) Prompt‐nnUnet module that utilizes the prompts‐based model combined with 3D nnUnet for producing the rapid and consistent autosegmentation of high‐risk clinical target volume (HR CTV) and organ at risk (OAR) in high‐dose‐rate brachytherapy (HDR BT) for patients with postoperative endometrial carcinoma (EC).Methods and materialsOn two experimental batches, a total of 321 computed tomography (CT) scans were obtained for HR CTV segmentation from 321 patients … Show more

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