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Detection and 3D representation of pulmonary air bubbles in HRCT volumes

机译:HRCT体积中肺气泡的检测和3D表示

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摘要

Bubble emphysema is a disease characterized by the presence of air bubbles within the lungs. With the purpose of identifying pulmonary air bubbles, two alternative methods were developed, using High Resolution Computer Tomography (HRCT) exams. The search volume is confined to the pulmonary volume through a previously developed pulmonary contour detection algorithm. The first detection method follows a slice by slice approach and uses selection criteria based on the Hounsfield levels, dimensions, shape and localization of the bubbles. Candidate regions that do not exhibit axial coherence along at least two sections are excluded. Intermediate sections are interpolated for a more realistic representation of lungs and bubbles. The second detection method, after the pulmonary volume delimitation, follows a fully 3D approach. A global threshold is applied to the entire lung volume returning candidate regions. 3D morphologic operators are used to remove spurious structures and to circumscribe the bubbles. Bubble representation is accomplished by two alternative methods. The first generates bubble surfaces based on the voxel volumes previously detected; the second method assumes that bubbles are approximately spherical. In order to obtain better 3D representations, fits super-quadrics to bubble volume. The fitting process is based on non-linear least squares optimization method, where a super-quadric is adapted to a regular grid of points defined on each bubble. All methods were applied to real and semi-synthetical data where artificial and randomly deformed bubbles were embedded in the interior of healthy lungs. Quantitative results regarding bubble geometric features are either similar to a priori known values used in simulation tests, or indicate clinically acceptable dimensions and locations when dealing with real data.
机译:气泡性肺气肿是以肺内气泡的存在为特征的疾病。为了识别肺气泡,使用高分辨率计算机断层扫描(HRCT)考试开发了两种替代方法。通过先前开发的肺部轮廓检测算法,将搜索量限制在肺部体积内。第一种检测方法采用逐层方法,并根据Hounsfield的液位,尺寸,形状和气泡位置使用选择标准。排除沿至少两个部分没有表现出轴向连贯性的候选区域。对中间部分进行插值以更真实地表示肺和气泡。在肺容量限制之后,第二种检测方法遵循完全3D方法。将全局阈值应用于整个肺体积返回候选区域。 3D形态运算符用于去除伪造结构并限制气泡。气泡表示是通过两种替代方法完成的。第一种基于先前检测到的体素体积生成气泡表面;第二种基于气泡体积生成气泡表面。第二种方法假定气泡近似球形。为了获得更好的3D表示,请将超二次方程拟合到气泡体积。拟合过程基于非线性最小二乘法优化方法,其中超二次方适用于每个气泡上定义的点的规则网格。所有方法都应用于真实和半合成的数据,其中人造气泡和随机变形的气泡嵌入了健康肺部内部。有关气泡几何特征的定量结果要么类似于模拟测试中使用的先验已知值,要么表明在处理真实数据时临床可接受的尺寸和位置。

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