Automatic symmetry-integrated brain injury detection in MRI sequences

Yu Sun, B. Bhanu, Shiv Bhanu
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引用次数: 31

Abstract

This paper presents a fully automated symmetry-integrated brain injury detection method for magnetic resonance imaging (MRI) sequences. One of the limitations of current injury detection methods often involves a large amount of training data or a prior model that is only applicable to a limited domain of brain slices, with low computational efficiency and robustness. Our proposed approach can detect injuries from a wide variety of brain images since it makes use of symmetry as a dominant feature, and does not rely on any prior models and training phases. The approach consists of the following steps: (a) symmetry integrated segmentation of brain slices based on symmetry affinity matrix, (b) computation of kurtosis and skewness of symmetry affinity matrix to find potential asymmetric regions, (c) clustering of the pixels in symmetry affinity matrix using a 3D relaxation algorithm, (d) fusion of the results of (b) and (c) to obtain refined asymmetric regions, (e) Gaussian mixture model for unsupervised classification of potential asymmetric regions as the set of regions corresponding to brain injuries. Experimental results are carried out to demonstrate the efficacy of the approach.
MRI序列中对称性集成脑损伤自动检测
提出了一种基于磁共振成像(MRI)序列的全自动对称集成脑损伤检测方法。当前损伤检测方法的局限性之一,往往是训练数据量大,或先验模型仅适用于脑切片的有限区域,计算效率低,鲁棒性差。我们提出的方法可以从各种各样的大脑图像中检测损伤,因为它利用对称作为主要特征,并且不依赖于任何先前的模型和训练阶段。该方法包括以下步骤:(a)基于对称亲和矩阵的脑切片对称集成分割,(b)计算对称亲和矩阵的峰度和偏度,寻找潜在的不对称区域,(c)使用三维松弛算法对对称亲和矩阵中的像素进行聚类,(d)将(b)和(c)的结果融合,得到精细的不对称区域。(e)高斯混合模型将潜在不对称区域作为脑损伤对应的区域集进行无监督分类。实验结果验证了该方法的有效性。
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