Bruno Oliveira, Helena R. Torres, Sandro Queirós, P. Morais, J. Fonseca, J. D’hooge, N. Rodrigues, J. Vilaça
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引用次数: 4
Abstract
Surgical training for minimal invasive kidney interventions (MIKI) has huge importance within the urology field. Within this topic, simulate MIKI in a patient-specific virtual environment can be used for pre-operative planning using the real patient's anatomy, possibly resulting in a reduction of intra-operative medical complications. However, the validated VR simulators perform the training in a group of standard models and do not allow patient-specific training. For a patient-specific training, the standard simulator would need to be adapted using personalized models, which can be extracted from pre-operative images using segmentation strategies. To date, several methods have already been proposed to accurately segment the kidney in computed tomography (CT) images. However, most of these works focused on kidney segmentation only, neglecting the extraction of its internal compartments. In this work, we propose to adapt a coupled formulation of the B-Spline Explicit Active Surfaces (BEAS) framework to simultaneously segment the kidney and the renal collecting system (CS) from CT images. Moreover, from the difference of both kidney and CS segmentations, one is able to extract the renal parenchyma also. The segmentation process is guided by a new energy functional that combines both gradient and region-based energies. The method was evaluated in 10 kidneys from 5 CT datasets, with different image properties. Overall, the results demonstrate the accuracy of the proposed strategy, with a Dice overlap of 92.5%, 86.9% and 63.5%, and a point-to-surface error around 1.6 mm, 1.9 mm and 4 mm for the kidney, renal parenchyma and CS, respectively.
微创肾介入(MIKI)的外科培训在泌尿外科领域具有重要意义。在本主题中,在患者特定的虚拟环境中模拟MIKI可以使用真实患者的解剖结构用于术前计划,可能会减少术中医疗并发症。然而,经过验证的VR模拟器在一组标准模型中执行训练,不允许针对患者的训练。对于特定患者的训练,标准模拟器需要使用个性化模型进行调整,这些模型可以使用分割策略从术前图像中提取。迄今为止,已经提出了几种方法来准确地分割计算机断层扫描(CT)图像中的肾脏。然而,这些工作大多只关注肾脏分割,而忽略了其内部区室的提取。在这项工作中,我们建议采用b样条显式活动曲面(BEAS)框架的耦合公式,同时从CT图像中分割肾脏和肾脏收集系统(CS)。此外,由于肾和CS分割的不同,也可以提取肾实质。分割过程由一种结合梯度和区域能量的新能量函数来指导。该方法在5个CT数据集的10个肾脏中进行了评估,这些数据集具有不同的图像属性。总体而言,结果证明了所提出策略的准确性,Dice重叠率为92.5%,86.9%和63.5%,肾脏,肾实质和CS的点面误差分别约为1.6 mm, 1.9 mm和4 mm。