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Spaciousness Filters for Non-contrast CT Volume Segmentation of the Intestine Region for Emergency Ileus Diagnosis

机译:用于肠道肠道区域的非对比度CT体积分割的宽敞过滤器进行急救肝脏诊断

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This paper proposes enhancement filters for shape-specific regions, based on radial structure tensor (RST) analysis, which we name "spaciousness filters". RST analysis can be used in a similar way to Hessian analysis for classifying intensity structures. However, RST is insufficient for enhancing regions having little contrast or non-typical morphology. Our proposed filters enhance such regions by extending the ray search scheme of RST analysis to work as a filter evaluating spaciousness. We show applications to the abdominal CT of ileus patients having specific shapes. The intestines (including small intestines) of those patients consist of air, liquid and feces portions, and are not contrast-enhanced by barium. Enhancement of liquid and walls play key roles in the sufficient segmentation of intestines and division between neighboring regions. Experimental results on 7 clinical cases showed that the proposed intestine segmentation method produced higher Dice score (0.68) than traditional RST analysis (0.44), even without specific refinement processes like machine-learning-based false positive reduction.
机译:本文提出了基于径向结构张量(RST)分析的形状特异性地区的增强过滤器,我们命名为“宽敞过滤器”。 RST分析可以以类似的方式使用与对均匀结构进行分类的Hessian分析。然而,RST不足以增强具有较小对比或非典型形态的区域。我们所提出的过滤器通过扩展RST分析的Ray搜索方案来增强这些区域,以作为评估宽敞性的过滤器。我们向患有特定形状的腹部CT显示腹部CT的应用。这些患者的肠道(包括小肠)由空气,液体和粪便部分组成,并且通过钡形成对比增强。液体和墙壁的增强在邻近地区的肠道和分裂的足够分割中发挥关键作用。 7临床病例的实验结果表明,所提出的肠道分割方法比传统的RST分析(0.44)产生更高的骰子分数(0.68),即使没有基于机器学习的假正向减少的特定细化过程。

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