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Efficient Abdominal Segmentation on Clinically Acquired CT with SIMPLE Context Learning

机译:用简单的背景学习在临床上获得CT的高效腹部分割

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Abdominal segmentation on clinically acquired computed tomography (CT) has been a challenging problem given the inter-subject variance of human abdomens and complex 3-D relationships among organs. Multi-atlas segmentation (MAS) provides a potentially robust solution by leveraging label atlases via image registration and statistical fusion. We posit that the efficiency of atlas selection requires further exploration in the context of substantial registration errors. The selective and iterative method for performance level estimation (SIMPLE) method is a MAS technique integrating atlas selection and label fusion that has proven effective for prostate radiotherapy planning. Herein, we revisit atlas selection and fusion techniques for segmenting 12 abdominal structures using clinically acquired CT. Using a re-derived SIMPLE algorithm, we show that performance on multi-organ classification can be improved by accounting for exogenous information through Bayesian priors (so called context learning). These innovations are integrated with the joint label fusion (JLF) approach to reduce the impact of correlated errors among selected atlases for each organ, and a graph cut technique is used to regularize the combined segmentation. In a study of 100 subjects, the proposed method outperformed other comparable MAS approaches, including majority vote, SIMPLE, JLF, and the Wolz locally weighted vote technique. The proposed technique provides consistent improvement over state-of-the-art approaches (median improvement of 7.0% and 16.2% in DSC over JLF and Wolz, respectively) and moves toward efficient segmentation of large-scale clinically acquired CT data for biomarker screening, surgical navigation, and data mining.
机译:临床上获得的计算机断层摄影腹部分割(CT)已给定的人的腹部和器官之间的复杂3-d的关系的学科间方差一个具有挑战性的问题。多图谱分割(MAS)提供了一种通过经由图像配准和融合的统计利用标签地图集潜在强大的解决方案。我们断定,阿特拉斯选择的效率,需要大量的中登记错误的情况下进一步探索。性能水平估计(SIMPLE)方法的选择性和迭代方法是MAS技术图谱选择和标签的融合已被证明有效的前列腺放射治疗计划积分。在此,我们重新审视图谱选择和融合技术用于分割使用临床上获得的CT 12层腹部结构。使用重新获得的算法简单,我们显示在多器官分类,业绩可以通过考虑通过贝叶斯先验外生信息(所谓的情境学习)得到改善。这些创新是集成在关节标签融合(JLF)方法,以减少相关误差的每个器官选择图谱中的影响,和图切割技术来正规化所述组合分割。在100名受试者的研究中,所提出的方法优于其它相当的MAS方法,包括多数表决,SIMPLE金六福和Wolz局部加权表决技术。所提出的技术提供了优于国家的最先进的方法一致的改善(7.0%中位数的改善和16.2%在DSC上金六福和Wolz,分别地)和向着大型化的有效分割移动临床获取生物标志物筛选CT数据,手术导航和数据挖掘。

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