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Segmentation of Brain MR Images Using a Charged Fluid Model

机译:使用带电流体模型对脑MR图像进行分割

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摘要

In this paper, we developed a new deformable model, the charged fluid model (CFM), that uses the simulation of a charged fluid to segment anatomic structures in magnetic resonance (MR) images of the brain. Conceptually, the charged fluid behaves like a liquid such that it flows through and around different obstacles. The simulation evolves in two steps governed by Poisson’s equation. The first step distributes the elements of the charged fluid within the propagating interface until an electrostatic equilibrium is achieved. The second step advances the propagating front of the charged fluid such that it deforms into a new shape in response to the image gradient. This approach required no prior knowledge of anatomic structures, required the use of only one parameter, and provided subpixel precision in the region of interest. We demonstrated the performance of this new algorithm in the segmentation of anatomic structures on simulated and real brain MR images of different subjects. The CFM was compared to the level-set-based methods [Caselles et al. (1993) and Malladi et al. (1995)] in segmenting difficult objects in a variety of brain MR images. The experimental results in different types of MR images indicate that the CFM algorithm achieves good segmentation results and is of potential value in brain image processing applications.
机译:在本文中,我们开发了一种新的可变形模型,即带电流体模型(CFM),该模型使用带电流体的模拟来分割大脑磁共振(MR)图像中的解剖结构。从概念上讲,带电流体的行为就像液体,使其流过并绕过不同的障碍物。该模拟分为两步,由泊松方程决定。第一步是将带电流体的元素分布在传播界面中,直到达到静电平衡为止。第二步推进带电流体的传播前沿,以使其响应图像梯度变形为新形状。这种方法不需要先验的解剖结构知识,只需要使用一个参数,并在感兴趣的区域提供子像素精度。我们在不同对象的模拟和真实大脑MR图像上的解剖结构分割中证明了这种新算法的性能。将CFM与基于水平集的方法进行了比较[Caselles等。 (1993年)和Malladi等。 (1995)]分割各种脑部MR图像中的困难对象。在不同类型的MR图像中的实验结果表明,CFM算法取得了良好的分割效果,在脑图像处理应用中具有潜在的价值。

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