Carton François-Xavier, Chabanas Matthieu, Le Lann Florian, Noble Jack H
University of Grenoble Alpes, CNRS, Grenoble INP, TIMC-IMAG, Grenoble, France.
Vanderbilt University, Department of Electrical Engineering and Computer Science, Nashville, Tennessee, United States.
J Med Imaging (Bellingham). 2020 May;7(3):031503. doi: 10.1117/1.JMI.7.3.031503. Epub 2020 Feb 18.
To compensate for the intraoperative brain tissue deformation, computer-assisted intervention methods have been used to register preoperative magnetic resonance images with intraoperative images. In order to model the deformation due to tissue resection, the resection cavity needs to be segmented in intraoperative images. We present an automatic method to segment the resection cavity in intraoperative ultrasound (iUS) images. We trained and evaluated two-dimensional (2-D) and three-dimensional (3-D) U-Net networks on two datasets of 37 and 13 cases that contain images acquired from different ultrasound systems. The best overall performing method was the 3-D network, which resulted in a 0.72 mean and 0.88 median Dice score over the whole dataset. The 2-D network also had good results with less computation time, with a median Dice score over 0.8. We also evaluated the sensitivity of network performance to training and testing with images from different ultrasound systems and image field of view. In this application, we found specialized networks to be more accurate for processing similar images than a general network trained with all the data. Overall, promising results were obtained for both datasets using specialized networks. This motivates further studies with additional clinical data, to enable training and validation of a clinically viable deep-learning model for automated delineation of the tumor resection cavity in iUS images.
为了补偿术中脑组织变形,已采用计算机辅助干预方法将术前磁共振图像与术中图像进行配准。为了对组织切除引起的变形进行建模,需要在术中图像中分割切除腔。我们提出了一种在术中超声(iUS)图像中自动分割切除腔的方法。我们在包含从不同超声系统获取的图像的37例和13例两个数据集中训练和评估了二维(2-D)和三维(3-D)U-Net网络。总体表现最佳的方法是3-D网络,在整个数据集中平均Dice评分为0.72,中位数为0.88。2-D网络也有良好的结果,计算时间更短,中位数Dice评分超过0.8。我们还评估了网络性能对使用来自不同超声系统的图像和图像视野进行训练和测试的敏感性。在本应用中,我们发现专门的网络在处理相似图像时比用所有数据训练的通用网络更准确。总体而言,使用专门的网络在两个数据集中都获得了有前景的结果。这激发了使用更多临床数据进行进一步研究的动力,以便能够训练和验证用于自动勾勒iUS图像中肿瘤切除腔的临床可行深度学习模型。