Bioengineering Department, Volgenau School of Engineering, George Mason University, 4400 University Drive, Fairfax, VA, 22030, USA.
Department of Bioengineering, University of Utah, Salt Lake City, UT, USA.
Acta Neurochir (Wien). 2018 Aug;160(8):1643-1652. doi: 10.1007/s00701-018-3595-8. Epub 2018 Jun 20.
Intracranial aneurysms at the posterior communicating artery (PCOM) are known to have high rupture rates compared to other locations. We developed and internally validated a statistical model discriminating between ruptured and unruptured PCOM aneurysms based on hemodynamic and geometric parameters, angio-architectures, and patient age with the objective of its future use for aneurysm risk assessment.
A total of 289 PCOM aneurysms in 272 patients modeled with image-based computational fluid dynamics (CFD) were used to construct statistical models using logistic group lasso regression. These models were evaluated with respect to discrimination power and goodness of fit using tenfold nested cross-validation and a split-sample approach to mimic external validation.
The final model retained maximum and minimum wall shear stress (WSS), mean parent artery WSS, maximum and minimum oscillatory shear index, shear concentration index, and aneurysm peak flow velocity, along with aneurysm height and width, bulge location, non-sphericity index, mean Gaussian curvature, angio-architecture type, and patient age. The corresponding area under the curve (AUC) was 0.8359. When omitting data from each of the three largest contributing hospitals in turn, and applying the corresponding model on the left-out data, the AUCs were 0.7507, 0.7081, and 0.5842, respectively.
Statistical models based on a combination of patient age, angio-architecture, hemodynamics, and geometric characteristics can discriminate between ruptured and unruptured PCOM aneurysms with an AUC of 84%. It is important to include data from different hospitals to create models of aneurysm rupture that are valid across hospital populations.
与其他部位相比,后交通动脉(PCOM)的颅内动脉瘤破裂率较高。我们开发并内部验证了一种基于血流动力学和几何参数、血管结构和患者年龄的统计模型,用于区分破裂和未破裂的 PCOM 动脉瘤,旨在未来用于评估动脉瘤风险。
共使用 272 名患者的 289 个 PCOM 动脉瘤的基于图像的计算流体动力学(CFD)模型,使用逻辑群组套索回归构建统计模型。使用十折嵌套交叉验证和拆分样本方法模拟外部验证,评估这些模型的区分能力和拟合优度。
最终模型保留了最大和最小壁面剪切应力(WSS)、母体动脉平均 WSS、最大和最小振荡剪切指数、剪切浓度指数和动脉瘤峰值流速,以及动脉瘤高度和宽度、隆起位置、非球形指数、平均高斯曲率、血管结构类型和患者年龄。相应的曲线下面积(AUC)为 0.8359。当依次从三个最大贡献医院中的每个医院中排除数据,并将相应的模型应用于遗漏的数据时,AUC 分别为 0.7507、0.7081 和 0.5842。
基于患者年龄、血管结构、血流动力学和几何特征的组合的统计模型可以区分破裂和未破裂的 PCOM 动脉瘤,AUC 为 84%。重要的是要包含来自不同医院的数据,以创建适用于整个医院人群的动脉瘤破裂模型。