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Shape-based multi-region segmentation framework: application to 3D infants MRI data

机译:基于形状的多区分割框架:应用于3D婴儿MRI数据

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This paper presents a novel shape-guided multi-region variational region growing framework for extracting simultaneously thoracic and abdominal organs on 3D infants whole body MRI. Due to the inherent low quality of these data, classical segmentation methods tend to fail at the multi-segmentation task. To compensate for the low resolution and the lack of contrast and to enable the simultaneous segmentation of multiple organs, we introduce a segmentation framework on a graph of supervoxels that combines supervoxels intensity distribution weighted by gradient vector flow value and a shape prior per tissue. The intensity-based homogeneity criteria and the shape prior, encoded using Legendre moments, are added as energy terms in the functional to be optimized. The intensity-based energy is computed using both local (voxel value) and global (neighboring regions mean values, adjacent voxels values and distance to the neighboring regions) criteria. Inter-region conflict resolution is handled using a weighted Voronoi decomposition method, the weights being determined using tissues densities. The energy terms of the global energy equation are weighted using an information on growth direction and on gradient vector flow value. This allows us to either guide the segmentation toward the image natural edges if it is consistent with image and shape prior terms, or enforce the shape prior term otherwise. Results on 3D infants MRI data are presented and compared to a set of manual segmentations. Both visual comparison and quantitative measurements show good results.
机译:本文介绍了一种新型形状引导的多区域变分区域,用于在3D婴幼儿全身MRI上同时提取胸腔和腹部器官的同时提取框架。由于这些数据的固有的低质量,经典分段方法倾向于在多分割任务中失败。为了弥补低分辨率和缺乏对比度并使多个器官的同时分割,我们在超级曲线图上引入分割框架,其将来自梯度向量流量值的超级素强度分布和每个组织的形状相结合。使用LegendRe矩的基于强度的均匀性标准和形状编码,作为能量术语在要优化的功能中添加。使用局部(体素值)和全局(相邻区域的平均值,相邻的体素值和与相邻区域的距离)计算基于强度的能量。区域间冲突分辨率由加权voronoi分解方法处理,使用组织密度确定权重。使用关于生长方向和梯度矢量流量值的信息来加权全局能量方程的能量术语。这允许我们向图像自然边导指导分割,如果它与图像和形状一致,或者以其他方式强制执行形状。结果介绍了3D婴儿MRI数据,并与一组手动分段进行了相比。视觉比较和定量测量都显示出良好的效果。

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