The Australian School of Advanced Medicine, Macquarie University, 2 Technology Place, Sydney, NSW 2109, Australia.
The Australian School of Advanced Medicine, Macquarie University, 2 Technology Place, Sydney, NSW 2109, Australia.
J Biomech. 2014 Mar 21;47(5):1014-9. doi: 10.1016/j.jbiomech.2013.12.035. Epub 2014 Jan 11.
Patient-specific haemodynamic technology is being increasingly utilised in clinical applications. Under normal circumstances, computational haemodynamic simulation is performed using geometric results obtained via medical image segmentation. However, even when employed upon the same set of medical imaging data, both the geometry and volume of intracranial aneurysm models are highly dependent upon varying insufficiently validated vascular segmentation methods. In this study, we compared three segmentation methods to segment the geometry of the aneurysm. These include: the Region Growing Threshold (RGT), Chan-Vese model (CV) and Threshold-Based Level Set (TLS). The results obtained were evaluated via measurement of arterial volume differences (VD), local geometric shapes, and haemodynamic simulation results. In total, 45 patient-specific aneurysm cases with three different anatomy locations were assessed in this study. From this, we discovered that the average VD of all three segmentation methods lay in the vicinity of 9.3% (SD= ± 4.6%). The computational haemodynamic simulation was performed via the use of the vessel geometries. Analyses produced an average of 23.2% (SD= ± 8.7%) difference in energy loss (EL) between the varying segmentation methods, with the difference in Wall Shear Stress (WSS) averaging 24.0% (SD= ± 8.5%) and 126.4% (SD= ± 124.4%) for the highest and lowest volumes of WSS respectively. The results of the lowest WSS, was seen to be significantly dependent upon the geometry of the aneurysm surface. It is therefore essential, in order to confirm the quality of segmentation processes in the application of patient-specific analyses of cerebrovascular haemodynamics - to validate these individual segmentation methods.
个体化血流动力学技术正越来越多地应用于临床实践中。在正常情况下,计算血流动力学模拟是使用通过医学图像分割获得的几何结果进行的。然而,即使使用相同的一组医学成像数据,颅内动脉瘤模型的几何形状和体积也高度依赖于不同的、验证不足的血管分割方法。在本研究中,我们比较了三种分割方法来分割动脉瘤的几何形状。这些方法包括:区域生长阈值法(RGT)、Chan-Vese 模型(CV)和基于阈值的水平集法(TLS)。通过测量动脉体积差异(VD)、局部几何形状和血流动力学模拟结果来评估获得的结果。总共评估了 45 个具有三种不同解剖位置的患者特定动脉瘤病例。结果发现,所有三种分割方法的平均 VD 均接近 9.3%(SD=±4.6%)。通过使用血管几何形状进行计算血流动力学模拟。分析产生了三种分割方法之间平均 23.2%(SD=±8.7%)的能量损失(EL)差异,壁面切应力(WSS)的差异平均为 24.0%(SD=±8.5%)和 126.4%(SD=±124.4%),分别为 WSS 的最高和最低体积。WSS 的最低值的结果被认为高度依赖于动脉瘤表面的几何形状。因此,为了确认在脑血管血流动力学个体化分析中应用的分割过程的质量,有必要验证这些个体化分割方法。