Li Shidong, Liu Jianwei, Song Zhanjie
Department of Mathematics, San Francisco University, San Francisco, CA 94132 USA.
School of Mathematics, Tianjin University, Tianjin, 300354 China.
Int J Mach Learn Cybern. 2022;13(9):2435-2445. doi: 10.1007/s13042-022-01536-4. Epub 2022 Mar 31.
Since magnetic resonance imaging (MRI) has superior soft tissue contrast, contouring (brain) tumor accurately by MRI images is essential in medical image processing. Segmenting tumor accurately is immensely challenging, since tumor and normal tissues are often inextricably intertwined in the brain. It is also extremely time consuming manually. Late deep learning techniques start to show reasonable success in brain tumor segmentation automatically. The purpose of this study is to develop a new region-of-interest-aided (ROI-aided) deep learning technique for automatic brain tumor MRI segmentation. The method consists of two major steps. Step one is to use a 2D network with U-Net architecture to localize the tumor ROI, which is to reduce the impact of normal tissue's disturbance. Then a 3D U-Net is performed in step 2 for tumor segmentation within identified ROI. The proposed method is validated on MICCAI BraTS 2015 Challenge with 220 high Gliomas grade (HGG) and 54 low Gliomas grade (LGG) patients' data. The Dice similarity coefficient and the Hausdorff distance between the manual tumor contour and that segmented by the proposed method are 0.876 ±0.068 and 3.594±1.347 mm, respectively. These numbers are indications that our proposed method is an effective ROI-aided deep learning strategy for brain MRI tumor segmentation, and a valid and useful tool in medical image processing.
由于磁共振成像(MRI)具有出色的软组织对比度,因此通过MRI图像精确勾勒(脑部)肿瘤轮廓在医学图像处理中至关重要。准确分割肿瘤极具挑战性,因为肿瘤和正常组织在大脑中常常紧密交织在一起。手动分割也极其耗时。近年来,深度学习技术在自动脑部肿瘤分割方面开始取得合理的成功。本研究的目的是开发一种新的感兴趣区域辅助(ROI辅助)深度学习技术,用于自动脑部肿瘤MRI分割。该方法包括两个主要步骤。第一步是使用具有U-Net架构的2D网络来定位肿瘤ROI,这是为了减少正常组织干扰的影响。然后在第二步中使用3D U-Net在已识别的ROI内进行肿瘤分割。所提出的方法在MICCAI BraTS 2015挑战赛中使用220例高分级胶质瘤(HGG)和54例低分级胶质瘤(LGG)患者的数据进行了验证。手动肿瘤轮廓与所提出方法分割的轮廓之间的Dice相似系数和豪斯多夫距离分别为0.876±0.068和3.594±1.347毫米。这些数据表明,我们提出的方法是一种用于脑部MRI肿瘤分割的有效的ROI辅助深度学习策略,并且是医学图像处理中一种有效且有用的工具。