首页> 外文期刊>Medical image analysis >Automatic rib segmentation and labeling in computed tomography scans using a general framework for detection, recognition and segmentation of objects in volumetric data.
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Automatic rib segmentation and labeling in computed tomography scans using a general framework for detection, recognition and segmentation of objects in volumetric data.

机译:使用用于检测,识别和分割体积数据中对象的通用框架,在计算机断层扫描中自动进行肋骨分割和标记。

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摘要

A system for automatic segmentation and labeling of the complete rib cage in chest CT scans is presented. The method uses a general framework for automatic detection, recognition and segmentation of objects in three-dimensional medical images. The framework consists of five stages: (1) detection of relevant image structures, (2) construction of image primitives, (3) classification of the primitives, (4) grouping and recognition of classified primitives and (5) full segmentation based on the obtained groups. For this application, first 1D ridges are extracted in 3D data. Then, primitives in the form of line elements are constructed from the ridge voxels. Next a classifier is trained to classify the primitives in foreground (ribs) and background. In the grouping stage centerlines are formed from the foreground primitives and rib numbers are assigned to the centerlines. In the final segmentation stage, the centerlines act as initialization for a seeded region growing algorithm. The method is tested on 20 CT-scans. Of the primitives, 97.5% is classified correctly (sensitivity is 96.8%, specificity is 97.8%). After grouping, 98.4% of the ribs are recognized. The final segmentation is qualitatively evaluated and is very accurate for over 80% of all ribs, with slight errors otherwise.
机译:提出了一种在胸部CT扫描中自动分割和标记整个肋骨的系统。该方法使用通用框架来自动检测,识别和分割三维医学图像中的对象。该框架包括五个阶段:(1)相关图像结构的检测,(2)图像基元的构造,(3)基元的分类,(4)分类基元的分组和识别以及(5)基于图像的完整分割获得的团体。对于此应用程序,首先在3D数据中提取1D脊。然后,从山脊体素构造线元素形式的图元。接下来,训练分类器以对前景(肋骨)和背景中的图元进行分类。在分组阶段,中心线由前景图元形成,并且肋骨编号分配给中心线。在最后的分割阶段,中心线充当种子区域增长算法的初始化。该方法在20次CT扫描中进行了测试。在这些原语中,正确分类的比率为97.5%(敏感性为96.8%,特异性为97.8%)。分组后,识别出98.4%的肋骨。定性评估最终的分割结果,对所有肋骨的80%以上都非常准确,否则会有些许误差。

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