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Multi-structure Atlas-Based Segmentation Using Anatomical Regions of Interest

机译:基于多结构地图集的使用感兴趣的解剖区域的分割

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The Visceral project organizes a benchmark on multiple anatomical structure segmentation. A training set is provided to the participants that includes a sample of the manual annotations of these structures. To evaluate different segmentation approaches a testing set of volumes must be segmented automatically in a limited period of time. A multi-atlas based segmentation approach is proposed. This technique can be implemented automatically and applied to different anatomical structures with a large enough training set. The addition of a hierarchical local alignment based on anatomical knowledge and local contrast is explained in the approach. An initial experiment to evaluate the impact of using a local alignment and its results show a higher overlap (>9.7%) of the structures measured with the Jaccard coefficient. The approach is an effective and easy to implement method that adjusts well to the Visceral benchmark.
机译:内脏项目组织了多个解剖结构细分的基准。向参与者提供培训集,包括这些结构的手动注释样本。为了评估不同的分割方法,必须在有限的时间段内自动分割一组卷的测试集。提出了一种基于多标准的分段方法。该技术可以自动实现并应用于具有足够大的训练集的不同解剖结构。在方法中解释了基于解剖学知识和局部对比度的分层局部对准。评估使用局部对准的影响的初始实验及其结果显示了用Jaccard系数测量的结构的较高重叠(> 9.7%)。该方法是一种有效且易于实现对内脏基准测试的方法。

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