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Combining Spatial and Non-spatial Dictionary Learning for Automated Labeling of Intra-ventricular Hemorrhage in Neonatal Brain MRI

机译:结合空间和非空间字典学习在新生儿脑MRI中自动标记脑室内出血

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A specific challenge to accurate tissue quantification in premature neonatal MRI data is posed by Intra-Ventricular Hemorrhage (IVH), where severe cases can be accompanied by extreme and complex Ventriculomegaly (VM). IVH is apparent on MRI as bright signal pooling within the ventricular space in locations related to the original bleed and how the blood pools and clots due to gravity. High variability in the location and extent of IVH and in the shape and size of the ventricles due to ventriculomegaly (VM), combined with a lack of large sets of training images covering all possible configurations, mean it is not feasible to approach the problem using whole brain dictionary learning. Here, we propose a novel sparse dictionary approach that utilizes a spatial dictionary for normal tissues structures, and a non-spatial component to delineate IVH and VM structure. We examine the behavior of this approach using a dataset of premature neonatal MRI scans with severe IVH and VM, finding improvements in the segmentation accuracy compared to the conventional segmentation. This approach provides the first automatic whole-brain segmentation framework for severe IVH and VM in premature neonatal brain MRIs.
机译:早产新生儿MRI数据对准确组织定量的具体挑战是脑室出血(IVH),严重病例可能伴有极端复杂的脑室扩大(VM)。 IVH在MRI上很明显,表现为与原始出血以及与重力有关的血池和血凝块相关位置的心室腔内明亮的信号池。由于心室肥大(VM),IVH的位置和范围以及心室的形状和大小的高度可变性,再加上缺乏涵盖所有可能配置的大量训练图像集,这意味着使用以下方法来解决该问题是不可行的全脑词典学习。在这里,我们提出了一种新颖的稀疏字典方法,该方法将空间字典用于正常组织结构,并使用非空间成分来描述IVH和VM结构。我们使用严重IVH和VM的早产新生儿MRI扫描数据集检查了这种方法的行为,发现与传统分割相比,分割精度有所提高。这种方法为早产新生儿脑部MRI中的严重IVH和VM提供了第一个自动全脑分割框架。

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