An algorithm for the surgical planning of hepatic resections

F. M. Rodrigues, J. S. Silva, T. Rodrigues
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引用次数: 5

Abstract

The aim of this work is to determine the optimal location for the hepatic resection. Initially, a hepatic segmentation method based in region growing was implemented from CT images with and without contrast. This algorithm was evaluated comparing its contours with the manual contours drawn by two physicians. The identification of the hepatic vessels is a fundamental step for surgical planning. The developed method is based in two segmentation techniques: region growing and threshold. By successive application of region growths, was computed the distribution of the number of voxels in terms of intensity. From this distribution, the information about the optimal threshold value for vessel segmentation was obtained. Finally, the eight liver segments were located, according Couinaud's classification, by a method that includes knowledge of the anatomy and differential geometry. The results show similarities between the volumes computed by the algorithm and the volumes used as reference.
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肝切除手术计划的一种算法
这项工作的目的是确定肝切除术的最佳位置。首先,对有对比度和无对比度的CT图像进行了基于区域生长的肝脏分割方法。将该算法的轮廓与两位医生绘制的手工轮廓进行了比较。肝血管的识别是手术计划的基本步骤。该方法基于两种分割技术:区域增长和阈值分割。通过连续应用区域增长,计算了体素数在强度方面的分布。从这个分布中,得到了血管分割的最优阈值信息。最后,根据Couinaud的分类,通过一种包括解剖学和微分几何知识的方法,确定了八个肝段的位置。结果表明,该算法计算的体积与参考体积相似。
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