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Brain extraction using isodata clustering algorithm aided by histogram analysis

机译:使用直方图分析的isodata聚类算法提取大脑

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Magnetic resonance (MR) imaging has a broad application in diagnosis and detection process of different brain related diseases. Manual analysis of MR images is a cumbersome and time consuming task. In order to automatically analyze the brain tissue accurately, non-brain compartments must be removed from magnetic resonance images. This task is known as brain extraction or skull stripping. In this study a brain extraction method is proposed. The proposed method formulates segmentation problem as a clustering problem and its core component is isodata clustering algorithm. Application of isodata algorithm reveals five distinct clusters. Two of these clusters contain voxels belonging to tissues of interest and three of them belongs to non-brain compartments. In order to produce an accurate brain mask, isodata cluster representatives are initialized by histogram analysis of MR volume of the brain. These representatives are mods of histogram of MR volume. The second stage of the proposed method leads to produce more accurate brain mask by somehow removing outliers. In this case, isodata algorithm performs better. Performance of the proposed method is measured by popular performance measures such as Dice similarity coefficient (Dice), Jaccard similarity index (J), sensitivity, and specificity. The proposed method outperforms BET, BSE, and HWA as popular methods by Dice = 0.959 (0.008) and J = 0.921 (0.168). These results are obtained based on BrainWeb dataset.
机译:磁共振(MR)成像在各种脑部相关疾病的诊断和检测过程中具有广泛的应用。手动分析MR图像是一项繁琐且耗时的任务。为了准确地自动分析脑组织,必须从磁共振图像中去除无脑隔室。此任务称为脑提取或颅骨剥离。在这项研究中,提出了一种脑部提取方法。提出的方法将分割问题表述为聚类问题,其核心成分是isodata聚类算法。 isodata算法的应用揭示了五个不同的簇。这些簇中的两个包含属于感兴趣组织的体素,其中三个属于非脑室。为了产生准确的脑罩,通过对大脑的MR量进行直方图分析来初始化isodata集群代表。这些代表是MR体积直方图的mod。拟议方法的第二阶段通过以某种方式消除离群值而产生了更准确的脑罩。在这种情况下,isodata算法的性能会更好。所提出的方法的性能是通过常用的性能指标来衡量的,例如Dice相似系数(Dice),Jaccard相似指数(J),敏感性和特异性。拟议的方法通过流行的方法Dice = 0.959(0.008)和J = 0.921(0.168)胜过BET,BSE和HWA。这些结果是基于BrainWeb数据集获得的。

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