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基于径向基函数的可变形模型对脑区进行准确且稳健的提取。

Accurate and robust extraction of brain regions using a deformable model based on radial basis functions.

作者信息

Liu Jia-Xiu, Chen Yong-Sheng, Chen Li-Fen

机构信息

Department of Computer Science, National Chiao Tung University, Hsinchu, Taiwan.

出版信息

J Neurosci Methods. 2009 Oct 15;183(2):255-66. doi: 10.1016/j.jneumeth.2009.05.011. Epub 2009 May 23.

DOI:10.1016/j.jneumeth.2009.05.011
PMID:19467263
Abstract

Brain extraction from head magnetic resonance (MR) images is a classification problem of segmenting image volumes into brain and non-brain regions. It is a difficult task due to the convoluted brain surface and the inapparent brain/non-brain boundaries in images. This paper presents an automated, robust, and accurate brain extraction method which utilizes a new implicit deformable model to well represent brain contours and to segment brain regions from MR images. This model is described by a set of Wendland's radial basis functions (RBFs) and has the advantages of compact support property and low computational complexity. Driven by the internal force for imposing the smoothness constraint and the external force for considering the intensity contrast across boundaries, the deformable model of a brain contour can efficiently evolve from its initial state toward its target by iteratively updating the RBF locations. In the proposed method, brain contours are separately determined on 2D coronal and sagittal slices. The results from these two views are generally complementary and are thus integrated to obtain a complete 3D brain volume. The proposed method was compared to four existing methods, Brain Surface Extractor, Brain Extraction Tool, Hybrid Watershed Algorithm, and Model-based Level Set, by using two sets of MR images as well as manual segmentation results obtained from the Internet Brain Segmentation Repository. Our experimental results demonstrated that the proposed approach outperformed these four methods when jointly considering extraction accuracy and robustness.

摘要

从头部磁共振(MR)图像中提取脑组织是一个将图像体积分割为脑区和非脑区的分类问题。由于脑表面复杂且图像中脑/非脑边界不明显,这是一项艰巨的任务。本文提出了一种自动化、稳健且准确的脑提取方法,该方法利用一种新的隐式可变形模型来很好地表示脑轮廓,并从MR图像中分割出脑区。该模型由一组温德兰径向基函数(RBF)描述,具有紧支性和低计算复杂度的优点。在用于施加平滑约束的内力和用于考虑边界强度对比度的外力驱动下,脑轮廓的可变形模型可以通过迭代更新RBF位置从其初始状态有效地向目标状态演化。在所提出的方法中,分别在二维冠状面和矢状面上确定脑轮廓。这两个视图的结果通常是互补的,因此将它们整合以获得完整的三维脑体积。通过使用两组MR图像以及从互联网脑分割库获得的手动分割结果,将所提出的方法与四种现有方法进行了比较,这四种方法分别是脑表面提取器、脑提取工具、混合分水岭算法和基于模型的水平集方法。我们的实验结果表明,在综合考虑提取准确性和稳健性时,所提出的方法优于这四种方法。

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