Song Zhuang, Tustison Nicholas, Avants Brian, Gee James C
Penn Image Computing and Science Lab, University of Pennsylvania, USA.
Med Image Comput Comput Assist Interv. 2006;9(Pt 2):831-8. doi: 10.1007/11866763_102.
Brain MRI segmentation remains a challenging problem in spite of numerous existing techniques. To overcome the inherent difficulties associated with this segmentation problem, we present a new method of information integration in a graph based framework. In addition to image intensity, tissue priors and local boundary information are integrated into the edge weight metrics in the graph. Furthermore, inhomogeneity correction is incorporated by adaptively adjusting the edge weights according to the intermediate inhomogeneity estimation. In the validation experiments of simulated brain MRIs, the proposed method outperformed a segmentation method based on iterated conditional modes (ICM), which is a commonly used optimization method in medical image segmentation. In the experiments of real neonatal brain MRIs, the results of the proposed method have good overlap with the manual segmentations by human experts.
尽管现有众多技术,但脑磁共振成像(MRI)分割仍然是一个具有挑战性的问题。为了克服与该分割问题相关的固有困难,我们在基于图的框架中提出了一种新的信息集成方法。除了图像强度外,组织先验和局部边界信息也被集成到图中的边缘权重度量中。此外,通过根据中间不均匀性估计自适应地调整边缘权重来纳入不均匀性校正。在模拟脑MRI的验证实验中,所提出的方法优于基于迭代条件模式(ICM)的分割方法,ICM是医学图像分割中常用的优化方法。在真实新生儿脑MRI的实验中,所提出方法的结果与人类专家的手动分割有很好的重叠。