Semi-supervised Tissue Segmentation of 3D Brain MR Images

Xiangrong Zhang, F. Dong, G. Clapworthy, Youbing Zhao, L. Jiao
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引用次数: 7

Abstract

Clustering algorithms have been popularly applied in tissue segmentation in MRI. However, traditional clustering algorithms could not take advantage of some prior knowledge of data even when it does exist. In this paper, we propose a new approach to tissue segmentation of 3D brain MRI using semi-supervised spectral clustering. Spectral clustering algorithm is more powerful than traditional clustering algorithms since it models the voxel-to-voxel relationship as opposed to voxel-to-cluster relationships. In the semi-supervised spectral clustering, two types of instance-level constraints: must-link and cannot-link as background prior knowledge are incorporated into spectral clustering, and the self-tuning parameter is applied to avoid the selection of the scaling parameter of spectral clustering. The semi-supervised spectral clustering is an effective tissue segmentation method because of its advantages in (1) better discovery of real data structure since there is no cluster shape restriction, (2) high quality segmentation results as it can obtain the global optimal solutions in the relaxed continuous domain by eigen-decomposition and combines the pairwise constraints information. Experimental results on simulated and real MRI data demonstrate its effectiveness.
半监督的3D脑MR图像组织分割
聚类算法在MRI组织分割中得到了广泛的应用。然而,传统的聚类算法无法利用数据中存在的某些先验知识。本文提出了一种基于半监督谱聚类的三维脑MRI组织分割新方法。光谱聚类算法比传统的聚类算法更强大,因为它模拟体素到体素的关系,而不是体素到聚类的关系。在半监督谱聚类中,将必须链接和不能链接两种实例级约束作为背景先验知识引入到谱聚类中,并采用自调整参数来避免谱聚类尺度参数的选择。半监督谱聚类是一种有效的组织分割方法,具有以下优点:(1)不受聚类形状限制,能更好地发现真实数据结构;(2)结合两两约束信息,通过特征分解得到松弛连续域中的全局最优解,分割结果高质量。仿真和真实MRI数据的实验结果验证了该方法的有效性。
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