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计算流体动力学和形状分析可增强动脉瘤破裂风险分层。

Computational fluid dynamics and shape analysis enhance aneurysm rupture risk stratification.

作者信息

Benemerito Ivan, Ewbank Frederick, Narracott Andrew, Villa-Uriol Maria-Cruz, Narata Ana Paula, Patel Umang, Bulters Diederik, Marzo Alberto

机构信息

INSIGNEO Institute for in Silico Medicine, University of Sheffield, Sheffield, UK.

Department of Mechanical Engineering, University of Sheffield, Sheffield, UK.

出版信息

Int J Comput Assist Radiol Surg. 2025 Jan;20(1):31-41. doi: 10.1007/s11548-024-03289-7. Epub 2024 Nov 17.

Abstract

PURPOSE

Accurately quantifying the rupture risk of unruptured intracranial aneurysms (UIAs) is crucial for guiding treatment decisions and remains an unmet clinical challenge. Computational Flow Dynamics and morphological measurements have been shown to differ between ruptured and unruptured aneurysms. It is not clear if these provide any additional information above routinely available clinical observations or not. Therefore, this study investigates whether incorporating image-derived features into the established PHASES score can improve the classification of aneurysm rupture status.

METHODS

A cross-sectional dataset of 170 patients (78 with ruptured aneurysm) was used. Computational fluid dynamics (CFD) and shape analysis were performed on patients' images to extract additional features. These derived features were combined with PHASES variables to develop five ridge constrained logistic regression models for classifying the aneurysm rupture status. Correlation analysis and principal component analysis were employed for image-derived feature reduction. The dataset was split into training and validation subsets, and a ten-fold cross validation strategy with grid search optimisation and bootstrap resampling was adopted for determining the models' coefficients. Models' performances were evaluated using the area under the receiver operating characteristic curve (AUC).

RESULTS

The logistic regression model based solely on PHASES achieved AUC of 0.63. All models incorporating derived features from CFD and shape analysis demonstrated improved performance, reaching an AUC of 0.71. Non-sphericity index (shape variable) and maximum oscillatory shear index (CFD variable) were the strongest predictors of a ruptured status.

CONCLUSION

This study demonstrates the benefits of integrating image-based fluid dynamics and shape analysis with clinical data for improving the classification accuracy of aneurysm rupture status. Further evaluation using longitudinal data is needed to assess the potential for clinical integration.

摘要

目的

准确量化未破裂颅内动脉瘤(UIA)的破裂风险对于指导治疗决策至关重要,并且仍然是一项未得到满足的临床挑战。计算流体动力学和形态学测量已显示在破裂和未破裂的动脉瘤之间存在差异。尚不清楚这些测量是否能提供超出常规临床观察的额外信息。因此,本研究调查将图像衍生特征纳入既定的PHASES评分是否能改善动脉瘤破裂状态的分类。

方法

使用了一个包含170名患者(78名患有破裂动脉瘤)的横断面数据集。对患者图像进行计算流体动力学(CFD)和形状分析以提取额外特征。这些衍生特征与PHASES变量相结合,开发了五个岭约束逻辑回归模型来对动脉瘤破裂状态进行分类。采用相关分析和主成分分析来减少图像衍生特征。将数据集分为训练和验证子集,并采用具有网格搜索优化和自助重采样的十折交叉验证策略来确定模型系数。使用受试者操作特征曲线下面积(AUC)评估模型性能。

结果

仅基于PHASES的逻辑回归模型的AUC为0.63。所有纳入CFD和形状分析衍生特征的模型均表现出性能提升,AUC达到0.71。非球形指数(形状变量)和最大振荡剪切指数(CFD变量)是破裂状态的最强预测因子。

结论

本研究证明了将基于图像的流体动力学和形状分析与临床数据相结合对于提高动脉瘤破裂状态分类准确性的益处。需要使用纵向数据进行进一步评估以评估临床整合的潜力。

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