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Unsupervised MRI segmentation of brain tissues using a local linear model and level set

机译:使用局部线性模型和水平集对脑组织进行无监督MRI分割

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摘要

Real-world magnetic resonance imaging of the brain is affected by intensity nonuniformity (INU) phenomena which makes it difficult to fully automate the segmentation process. This difficult task is accomplished in this work by using a new method with two original features: (1) each brain tissue class is locally modeled using a local linear region representative, which allows us to account for the INU in an implicit way and to more accurately position the region's boundaries; and (2) the region models are embedded in the level set framework, so that the spatial coherence of the segmentation can be controlled in a natural way. Our new method has been tested on the ground-truthed Internet Brain Segmentation Repository (IBSR) database and gave promising results, with Tanimoto indexes ranging from 0.61 to 0.79 for the classification of the white matter and from 0.72 to 0.84 for the gray matter. To our knowledge, this is the first time a region-based level set model has been used to perform the segmentation of real-world MRI brain scans with convincing results.
机译:大脑的现实世界磁共振成像会受到强度不均匀(INU)现象的影响,这使得很难完全自动化分割过程。在这项工作中,这项艰巨的任务是通过使用具有两个原始特征的新方法来完成的:(1)使用局部线性区域代表对每个脑组织类别进行局部建模,这使我们能够以隐式方式解释INU,甚至更多。准确定位区域边界; (2)将区域模型嵌入到水平集框架中,从而可以自然地控制分割的空间连贯性。我们的新方法已经在真实的互联网大脑分段存储库(IBSR)数据库上进行了测试,并给出了可喜的结果,其中Tanimoto指数对白质的分类范围为0.61至0.79,对灰质的分类范围为0.72至0.84。据我们所知,这是首次使用基于区域的水平集模型对真实世界的MRI脑部扫描进行分割,并得出令人信服的结果。

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