Liu Jimin, Huang Su, Nowinski Wieslaw L
Singapore BioImaging Consortium (SBIC), Singapore, Singapore.
Neuroinformatics. 2009 Jun;7(2):131-46. doi: 10.1007/s12021-009-9046-1. Epub 2009 May 16.
Automatic segmentation of the human brain ventricular system from MR images is useful in studies of brain anatomy and its diseases. Existing intensity-based segmentation methods are adaptive to large shape and size variations of the ventricular system, but may leak to the non-ventricular regions due to the non-homogeneity, noise and partial volume effect in the images. Deformable model-based methods are more robust to noise and alleviate the leakage problem, but may generate wrong results when the shape or size of the ventricle to be segmented in the images has a large difference in comparison to its model. In this paper, we propose a knowledge-based region growing and trimming approach where: (1) a model of a ventricular system is used to define regions of interest (ROI) for the four ventricles (i.e., left, right, third and fourth); (2) to segment a ventricle in its ROI, a region growing procedure is first applied to obtain a connected region that contains the ventricle, and (3) a region trimming procedure is then employed to trim the non-ventricle regions. A hysteretic thresholding is developed for the region growing procedure to cope with the partial volume effect and minimize non-ventricular regions. The domain knowledge on the shape and intensity features of the ventricular system is used for the region trimming procedure. Due to the joint use of the model-based and intensity-based approaches, our method is robust to noise and large shape and size variations. Experiments on 18 simulated and 58 clinical MR images show that the proposed approach is able to segment the ventricular system accurately with the dice similarity coefficient ranging from 91% to 99%.
从磁共振成像(MR图像)中自动分割人脑心室系统,在脑解剖学及其疾病研究中具有重要作用。现有的基于强度的分割方法能够适应心室系统较大的形状和尺寸变化,但由于图像中的非均匀性、噪声和部分容积效应,可能会泄漏到非心室区域。基于可变形模型的方法对噪声更具鲁棒性,并能减轻泄漏问题,但当图像中要分割的心室形状或尺寸与其模型有较大差异时,可能会产生错误结果。在本文中,我们提出了一种基于知识的区域生长和修剪方法,其中:(1)使用心室系统模型来定义四个心室(即左、右、第三和第四心室)的感兴趣区域(ROI);(2)为了在其ROI中分割心室,首先应用区域生长过程以获得包含心室的连通区域,并且(3)然后采用区域修剪过程来修剪非心室区域。为区域生长过程开发了一种滞后阈值处理,以应对部分容积效应并最小化非心室区域。将心室系统的形状和强度特征方面的领域知识用于区域修剪过程。由于联合使用了基于模型和基于强度的方法,我们的方法对噪声以及较大的形状和尺寸变化具有鲁棒性。对18幅模拟MR图像和58幅临床MR图像进行的实验表明,所提出的方法能够准确分割心室系统,骰子相似系数范围为91%至99%。