基于先验知识的模糊c均值聚类方法在脑磁共振图像分割中的应用

M. Yazdi, Mohammad Khalilzadeh, M. Foroughipour
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引用次数: 2

摘要

图像分割是医学图像处理的一个基本步骤,特别是在磁共振脑图像的临床分析中。模糊c均值(Fuzzy c-means, FCM)算法是一种被广泛使用的分割方法,但由于空间复杂性,该算法在将模拟MR图像分割成具有不同噪声水平的大量聚类和真实图像时存在一定的问题。解剖分割通常需要专家手工分割得到的信息,先验知识可以用来修改图像分割方法。本文提出了一种利用专家人工分割作为先验知识对FCM算法进行改进的方法。针对高噪声和高空间复杂度的脑磁共振图像,提出了FCM算法与先验知识相结合的分割方法。在真实图像中,我们在白质、灰质、脑脊液三个类别的相似指数上有了较大的提高,在不同噪声水平的模拟图像中,我们改进了白质和灰质的评价标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy c-means clustering method based on prior knowledge for brain MR image segmentation
Image segmentation is mostly used as a fundamental step in medical image processing, especially for clinical analysis of magnetic resonance (MR) brain images. Fuzzy c-means (FCM) algorithm is one of the well known and widely used segmentation methods, but this algorithm has some problem for segmenting simulated MR images to high number of clusters with different noise levels and real images because of spatial complexities. Anatomical segmentation usually requires information derived from the manual segmentation done by experts, prior knowledge can be useful to modify image segmentation methods. In this article we proposed a method to modify FCM algorithm using expert manual segmentation as prior knowledge. We developed combination of FCM algorithm and prior knowledge in order to modify segmentation of brain MR images with high noise level and spatial complexities. In real images, we had considerable improvement in similarity index of three classes (white matter, gray matter, cerebrospinal fluid) and in simulated images with different noise levels evaluation criteria of white matter and gray matter improved.
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