脑MR图像贝叶斯分割中脑组织模糊建模

A. Farzan, Abd Rahman Ramli, S. Mashohor, R. Mahmud
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引用次数: 2

摘要

脑MRI图像分割是众多医学图像处理方法中的核心部分。由于MR图像存在组织强度不均匀性、部分体积效应、噪声等成像伪影,基于体素灰度值的脑MRI分割容易出现误差。因此,在设计分割算法时,涉及问题特定信息和专家知识似乎是有用的。提出了一种基于贝叶斯方法的二次模糊分割算法。贝叶斯部分利用体素的灰度值对图像进行分割,将分割后的图像作为模糊分类器的输入,以改善体素的误分类,特别是组织间边界的误分类。用相似度指数将本文算法与用统计参数映射(SPM)软件实现的著名的Ashburner方法进行比较。使用两种不同的脑MRI数据集来评估该算法。作为模拟脑MRI数据集的Brainweb和作为真实脑MRI数据集的ADNI是经过练习的图像。结果表明,与SPM中实现的算法相比,我们的算法具有良好的性能。结果表明,在分割过程中结合专家知识和问题具体信息可以提高分割效果。该方法的主要优点是可以通过添加新的模糊规则来更新知识库并将新的信息纳入到分割过程中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy modeling of brain tissues in Bayesian segmentation of brain MR images
Segmentation of brain MRI is the core part in plenty of medical image processing methods. Due to some properties of MR images such as intensity inhomogeneity of tissues, partial volume effect, noise and some other imaging artifacts, segmentation of brain MRI based on voxel gray values is prone to error. Hence involving problem specific information and expert knowledge in designing segmentation algorithms seems to be useful. A two-fold fuzzy segmentation algorithm based on Bayesian method is proposed in this paper. The Bayesian part uses the gray value of voxels in segmenting images and the segmented image is used as the input to fuzzy classifier to improve the misclassified voxels especially in borders between tissues. Similarity index is used to compare our algorithm with the well known method of Ashburner which has been implemented by Statistical Parametric Mapping (SPM) software. Two different brain MRI datasets are used to evaluate the algorithm. Brainweb as a simulated brain MRI dataset and ADNI as real brain MRI dataset are practiced images. Results show that our algorithm performs well in comparison with the one implemented in SPM. It can be concluded that incorporating expert knowledge and problem specific information in segmentation process improve segmentation result. The major advantage of proposed method is that one can update the knowledge base and incorporate new information into segmentation process by adding new fuzzy rules.
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