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Automatic Segmentation of Neonatal Images Using Convex Optimization and Coupled Level Set Method

机译:使用凸优化和耦合级别设置自动分割新生儿图像

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Accurate segmentation of neonatal brain MR images remains challenging mainly due to poor spatial resolution, low tissue contrast, high intensity inhomogeneity. Most existing methods for neonatal brain segmentation are atlas-based and voxel-wise. Although parametric or geometric deformable models have been successfully applied to adult brain segmentation, to the best of our knowledge, they are not explored in neonatal images. In this paper, we propose a novel neonatal image segmentation method, combining local intensity information, atlas spatial prior and cortical thickness constraint, in a level set framework. Besides, we also provide a robust and reliable tissue surfaces initialization for our proposed level set method by using a convex optimization technique. Validation is performed on 10 neonatal brain images with promising results.
机译:新生儿脑的准确细分图像MR图像仍然挑战,主要是由于空间分辨率差,组织对比度低,强度不均匀性。最现有的新生儿脑细分方法是基于阿特拉斯和体素的。尽管参数或几何可变形模型已成功应用于成人脑细分,但据我们所知,但他们在新生儿图像中没有探索。在本文中,我们提出了一种新的新生儿图像分割方法,在级别集框架中结合局部强度信息,地图集空间和皮质厚度约束。此外,我们还通过使用凸优化技术为我们所提出的水平集方法提供鲁棒且可靠的组织表面初始化。验证在10个新生脑图像上进行,具有有前途的结果。

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