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Accurate and efficient separation of left and right lungs from 3D CT scans: A generic hysteresis approach

机译:通过3D CT扫描准确,有效地分离左右肺:通用滞后方法

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Separation of left and right lungs from binary segmentation is often necessary for quantitative image-based pulmonary disease evaluation. In this article, we present a new fully automated approach for accurate, robust, and efficient lung separation using 3-D CT scans. Our method follows a hysteresis setting that utilizes information from both lung regions and background gaps. First, original segmentation is separated by subtracting the gaps between left and right lungs, which are enhanced with Hessian filtering. Second, the 2-D separation manifold in 3-D image space is estimated based on the distance information from the two subsets. Finally, the separation manifold is projected back to the original segmentation in order to produce the separated lungs through optimization for addressing minor local variations. An evaluation on over 400 human and 100 small animal 3-D CT images with various abnormalities is performed. The proposed scheme successfully separated all connections on the candidate CT images. Using hysteresis mechanism, each phase is performed robustly and 3-D information is utilized to achieve a generic, efficient, and accurate solution.
机译:对于基于图像的定量肺部疾病评估,通常需要将左肺和右肺与二元分割区分开来。在本文中,我们介绍了一种使用3-D CT扫描实现准确,稳健和有效的肺分离的新型全自动方法。我们的方法遵循磁滞设置,该设置利用了来自肺区域和背景间隙的信息。首先,通过减去左右肺之间的间隙来分离原始分割,并通过Hessian过滤增强了这些间隙。第二,基于来自两个子集的距离信息,估计3-D图像空间中的2-D分离歧管。最后,将分离歧管投影回原始分割,以便通过优化解决局部细微变化来产生分离的肺。对具有各种异常的400幅人类和100幅小动物3-D CT图像进行了评估。所提出的方案成功地分离了候选CT图像上的所有连接。使用磁滞机制,可以稳健地执行每个阶段,并利用3-D信息来实现通用,高效和准确的解决方案。

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