基于3D U-Net的术中超声图像脑肿瘤自动分割

F. Carton, M. Chabanas, B. K. R. Munkvold, I. Reinertsen, J. Noble
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引用次数: 2

摘要

由于在神经外科手术中大脑的变形,术中成像可以用来可视化大脑结构的实际位置。这些图像用于图像引导导航,以及确定切除是否完整和定位剩余肿瘤组织。术中超声(iUS)是一种方便的方式,采集时间短。然而,由于噪声和伪影,iUS图像难以解释。特别是,肿瘤组织很难与健康组织区分,并且很难在iu图像中划分肿瘤。在本文中,我们提出了一种使用二维和三维U-Net自动分割iUS图像中低级别脑肿瘤的方法。我们用12个训练用例和5个测试用例在三层上训练网络。获得的结果是有希望的,Dice得分中位数为0.72。估计和地面真值分割之间的体积差异与内部的体积差异相似。虽然这些结果是初步的,但它们表明深度学习方法可以成功地应用于术中图像的肿瘤分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic segmentation of brain tumor in intraoperative ultrasound images using 3D U-Net
Because of the deformation of the brain during neurosurgery, intraoperative imaging can be used to visualize the actual location of the brain structures. These images are used for image-guided navigation as well as determining whether the resection is complete and localizing the remaining tumor tissue. Intraoperative ultrasound (iUS) is a convenient modality with short acquisition times. However, iUS images are difficult to interpret because of the noise and artifacts. In particular, tumor tissue is difficult to distinguish from healthy tissue and it is very difficult to delimit tumors in iUS images. In this paper, we propose an automatic method to segment low grade brain tumors in iUS images using a 2-D and 3-D U-Net. We trained the networks on three folds with twelve training cases and five test cases each. The obtained results are promising, with a median Dice score of 0.72. The volume differences between the estimated and ground truth segmentations were similar to the intra-rater volume differences. While these results are preliminary, they suggest that deep learning methods can be successfully applied to tumor segmentation in intraoperative images.
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