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Subvoxel Accurate Graph Search Using Non-Euclidean Graph Space

机译:使用非欧图空间的亚体素精确图搜索

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摘要

Graph search is attractive for the quantitative analysis of volumetric medical images, and especially for layered tissues, because it allows globally optimal solutions in low-order polynomial time. However, because nodes of graphs typically encode evenly distributed voxels of the volume with arcs connecting orthogonally sampled voxels in Euclidean space, segmentation cannot achieve greater precision than a single unit, i.e. the distance between two adjoining nodes, and partial volume effects are ignored. We generalize the graph to non-Euclidean space by allowing non-equidistant spacing between nodes, so that subvoxel accurate segmentation is achievable. Because the number of nodes and edges in the graph remains the same, running time and memory use are similar, while all the advantages of graph search, including global optimality and computational efficiency, are retained. A deformation field calculated from the volume data adaptively changes regional node density so that node density varies with the inverse of the expected cost. We validated our approach using optical coherence tomography (OCT) images of the retina and 3-D MR of the arterial wall, and achieved statistically significant increased accuracy. Our approach allows improved accuracy in volume data acquired with the same hardware, and also, preserved accuracy with lower resolution, more cost-effective, image acquisition equipment. The method is not limited to any specific imaging modality and readily extensible to higher dimensions.
机译:图形搜索对于定量医学图像(尤其是分层组织)的定量分析具有吸引力,因为它允许在低阶多项式时间内实现全局最优解。但是,由于图的节点通常使用连接欧氏空间中正交采样的体素的圆弧来编码体积均匀分布的体素,因此分割无法获得比单个单位更高的精度,即两个相邻节点之间的距离,并且忽略了部分体积效应。我们通过允许节点之间的等距间隔将图推广到非欧几里得空间,从而可以实现亚体素精确分割。由于图中的节点和边的数量保持相同,因此运行时间和内存使用情况相似,而图搜索的所有优势(包括全局最优性和计算效率)都得以保留。根据体积数据计算出的变形场会自适应地更改区域节点的密度,以使节点密度随预期成本的倒数而变化。我们使用视网膜的光学相干断层扫描(OCT)图像和动脉壁的3-D MR验证了我们的方法,并在统计学上提高了准确性。我们的方法可以提高使用相同硬件采集的体数据的精度,还可以通过较低的分辨率,更具成本效益的图像采集设备来保持精度。该方法不限于任何特定的成像模态,并且可以容易地扩展到更高的尺寸。

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