Stokking R, Vincken K L, Viergever M A
Image Sciences Institute, University Medical Center Utrecht, Room E01.334, Heidelberglaan 100, 3584 CX Utrecht, The Netherlands.
Neuroimage. 2000 Dec;12(6):726-38. doi: 10.1006/nimg.2000.0661.
A method called morphology-based brain segmentation (MBRASE) has been developed for fully automatic segmentation of the brain from T1-weighted MR image data. The starting point is a supervised segmentation technique, which has proven highly effective and accurate for quantitation and visualization purposes. The proposed method automates the required user interaction, i.e., defining a seed point and a threshold range, and is based on the simple operations thresholding, erosion, and geodesic dilation. The thresholds are detected in a region growing process and are defined by connections of the brain to other tissues. The method is first evaluated on three computer simulated datasets by comparing the automated segmentations with the original distributions. The second evaluation is done on a total of 30 patient datasets, by comparing the automated segmentations with supervised segmentations carried out by a neuroanatomy expert. The comparison between two binary segmentations is performed both quantitatively and qualitatively. The automated segmentations are found to be accurate and robust. Consequently, the proposed method can be used as a default segmentation for quantitation and visualization of the human brain from T1-weighted MR images in routine clinical procedures.
一种名为基于形态学的脑部分割(MBRASE)的方法已被开发出来,用于从T1加权磁共振成像(MR)图像数据中全自动分割大脑。该方法的起点是一种监督分割技术,该技术已被证明在定量和可视化方面非常有效且准确。所提出的方法实现了所需的用户交互自动化,即定义一个种子点和一个阈值范围,并且基于阈值处理、腐蚀和测地线膨胀等简单操作。阈值在区域生长过程中被检测到,并由大脑与其他组织的连接来定义。该方法首先在三个计算机模拟数据集上进行评估,通过将自动分割结果与原始分布进行比较。第二次评估是在总共30个患者数据集上进行的,通过将自动分割结果与神经解剖学专家进行的监督分割结果进行比较。两种二值分割之间的比较在定量和定性方面都进行了。结果发现自动分割是准确且稳健的。因此,所提出的方法可以用作常规临床程序中从T1加权MR图像对人脑进行定量和可视化的默认分割方法。