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Unsupervised brain tissue segmentation in MRI images

机译:MRI图像中的无监督脑组织细分

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During brain Magnetic Resonance Imaging (MRI) analysis, image segmentation provides information for the measurement and visualization of anatomical structures of the brain. Currently, segmentation performed by human experts is the gold standard method for such task, but it presents bias and variability dependence of the observer, due to issues as imaging device configurations, complex anatomical shape of tissues and captured noise. In this paper, we introduce a new unsupervised segmentation algorithm for brain tissue segmentation, which incorporates prior knowledge of the brain structure and 3D features of the image, to tackle some of these problems. To evaluate our algorithm, we built a synthetic brain MRI database of 20 subjects, which is also described here. Our algorithm obtained better performance than other three popular state-of-the-art methods.
机译:在脑磁共振成像(MRI)分析期间,图像分割提供了用于脑解剖结构的测量和可视化的信息。目前,人类专家执行的分割是此类任务的金标准方法,但由于成像装置配置,组织的复杂解剖形状,捕获噪声复杂的解剖形状,呈现出观察者的偏差和可变性依赖性。在本文中,我们介绍了一种新的无调节分段算法,用于脑组织分割,其结合了脑结构和图像的3D特征的先验知识,以解决一些问题。为了评估我们的算法,我们构建了20个科目的合成脑MRI数据库,这里也在这里描述。我们的算法获得的性能比其他三种最新的方法更好。

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