Shape-Based Registration of Kidneys Across Differently Contrasted CT Scans

F. Flores-Mangas, A. Jepson, M. Haider
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Abstract

We present a method to register kidneys from Computed Tomography (CT) scans with and without contrast enhancement. The method builds a patient-specific kidney shape model from the contrast enhanced image, and then matches it against automatically segmented candidate surfaces extracted from the pre-contrast image to find the alignment. Only the object of interest is used to drive the alignment, providing results that are robust to near-rigid relative motions of the kidney with respect to the surrounding tissues. Shape-based features are used, as opposed to intensity-based ones, and consequently the resulting registration is invariant to the inherent contrast variations. The contributions of this work are: a surface grouping and segmentation algorithm driven by smooth curvature constraints, and a framework to register image volumes under contrast variation, relative motion and local deformation with minimal user intervention. Encouraging experimental results with real patient images, all with various kinds and sizes of kidney lesions, validate the approach.
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不同对比CT扫描中基于形状的肾脏配准
我们提出了一种方法,以登记肾脏从计算机断层扫描(CT)与没有对比增强。该方法从增强后的图像中建立患者肾脏形状模型,然后将其与从增强前图像中提取的自动分割的候选表面进行匹配,以找到匹配对象。只有感兴趣的对象被用来驱动对齐,提供的结果对肾脏相对于周围组织的近刚性相对运动是稳健的。使用基于形状的特征,而不是基于强度的特征,因此所得到的配准对固有的对比度变化是不变的。这项工作的贡献是:由光滑曲率约束驱动的表面分组和分割算法,以及在对比度变化,相对运动和局部变形下以最小用户干预进行图像体积配准的框架。令人鼓舞的实验结果与真实的病人图像,所有不同类型和大小的肾脏病变,验证了该方法。
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