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首页> 外文期刊>Computerized Medical Imaging and Graphics: The Official Jounal of the Computerized Medical Imaging Society >A combined region growing and deformable model method for extraction of closed surfaces in 3D CT and MRI scans.
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A combined region growing and deformable model method for extraction of closed surfaces in 3D CT and MRI scans.

机译:一种在3D CT和MRI扫描中提取闭合表面的组合区域增长和可变形模型方法。

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摘要

Image segmentation of 3D medical images is a challenging problem with several still not totally solved practical issues, such as noise interference, variable object structures and image artifacts. This paper describes a hybrid 3D image segmentation method which combines region growing and deformable models to obtain accurate and topologically preserving surface structures of anatomical objects of interest. The proposed strategy starts by determining a rough but robust approximation of the objects using a region-growing algorithm. Then, the closed surface mesh that encloses the region is constructed and used as the initial geometry of a deformable model for the final refinement. This integrated strategy provides an alternative solution to one of the flaws of traditional deformable models, achieving good refinements of internal surfaces in few steps. Experimental segmentation results of complex anatomical structures on both simulated and real data from MRI scans are presented, and the method is assessed by comparing with standard reference segmentations of head MRI. The evaluation was mainly based on the average overlap measure, which was tested on the segmentation of white matter, corresponding to a simulated brain data set, showing excellent performance exceeding 90% accuracy. In addition, the algorithm was applied to the detection of anatomical head structures on two real MRI and one CT data set. The final reconstructions resulting from the deformable models produce high quality meshes suitable for 3D visualization and further numerical analysis. The obtained results show that the approach achieves high quality segmentations with low computational complexity.
机译:3D医学图像的图像分割是一个具有挑战性的问题,其中一些仍未完全解决的实际问题,例如噪声干扰,可变对象结构和图像伪影。本文介绍了一种混合3D图像分割方法,该方法结合了区域增长和可变形模型,从而获得了感兴趣的解剖对象的精确且拓扑保存的表面结构。所提出的策略开始于使用区域增长算法确定对象的粗略但鲁棒的近似值。然后,构造封闭区域的封闭表面网格,并将其用作可变形模型的初始几何形状,以进行最终细化。这种集成策略为传统可变形模型的缺陷之一提供了替代解决方案,只需几步即可实现内表面的良好精修。给出了复杂解剖结构在MRI扫描的模拟和真实数据上的实验分割结果,并通过与头部MRI的标准参考分割进行比较来评估该方法。评估主要基于平均重叠量度,该平均量度对白质的分割进行了测试,与模拟的大脑数据集相对应,显示出超过90%的准确性。此外,该算法还应用于在两个真实MRI和一个CT数据集上检测解剖头部结构。由可变形模型产生的最终重建产生适用于3D可视化和进一步数值分析的高质量网格。所获得的结果表明,该方法实现了具有低计算复杂度的高质量分割。

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