Organ approximation in μCT data with low soft tissue contrast using an articulated whole-body atlas

M. Baiker, J. Dijkstra, I. Que, C. Löwik, J. Reiber, B. Lelieveldt
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引用次数: 17

Abstract

In this article, we present an approach for organ approximation in low contrast muCT data of mice using a whole-body mouse atlas (Segars et al. [1]). Starting from a set of landmarks on bone and joint locations, further correspondences are derived on surface representations of the lung by atlas-based registration and on the skin by employing a local geodesic shape context. Subsequently, landmarks on the skeleton, the lung and the skin are used to constrain a Thin-Plate-Spline (TPS) based mapping of major organs from the atlas to the subject domain. The feasibility of the method has been tested by means of 26 CT mouse datasets and a different whole-body mouse atlas (Digimouse [2]). Proper mapping of the lung and the skin as well as major organs could be achieved in all cases yielding a mean Euclidean distance between surface nodes of 0.42 plusmn 0.068 mm for the lung and 0.34 plusmn 0.036 mm for the skin. The performance of the organ interpolation has been assessed on basis of manual segmentations of two CT datasets of mice with injected contrast agent and the Digimouse. The calculated dice indices of volume overlap show significant improvement compared to earlier studies.
利用关节式全身图谱在低软组织对比度的μCT数据中进行器官近似
在本文中,我们提出了一种利用小鼠全身图谱对小鼠低对比度muCT数据进行器官近似的方法(Segars等人[1])。从骨骼和关节位置的一组地标开始,通过基于地图集的配准在肺的表面表示上得到进一步的对应,并通过采用局部测地线形状上下文在皮肤上得到进一步的对应。随后,使用骨骼、肺和皮肤上的标记来约束基于薄板样条(TPS)的主要器官从图谱到主题域的映射。该方法的可行性已通过26个CT小鼠数据集和不同的全身小鼠图谱进行了测试(Digimouse[2])。在所有病例中,肺和皮肤以及主要器官的正确映射都可以实现,肺表面节点之间的平均欧氏距离为0.42 plusmn 0.068 mm,皮肤为0.34 plusmn 0.036 mm。通过对注射造影剂和Digimouse的两组小鼠CT数据集进行人工分割,评估了器官插值的性能。计算得到的骰子体积重叠指数与前期研究相比有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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