2024
DOI: 10.1117/1.jmi.11.2.024501
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Automatic hepatic tumor segmentation in intra-operative ultrasound: a supervised deep-learning approach

Tiziano Natali,
Andrey Zhylka,
Karin Olthof
et al.

Abstract: Training and evaluation of the performance of a supervised deep-learning model for the segmentation of hepatic tumors from intraoperative US (iUS) images, with the purpose of improving the accuracy of tumor margin assessment during liver surgeries and the detection of lesions during colorectal surgeries.Approach: In this retrospective study, a U-Net network was trained with the nnU-Net framework in different configurations for the segmentation of CRLM from iUS. The model was trained on B-mode intraoperative he… Show more

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