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A machine learning approach to investigate the relationship between shape features and numerically predicted risk of ascending aortic aneurysm

机译:一种研究形状特征与数值预测升高动脉瘤的关系的机器学习方法

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Geometric features of the aorta are linked to patient risk of rupture in the clinical decision to electively repair an ascending aortic aneurysm (AsAA). Previous approaches have focused on relationship between intuitive geometric features (e.g., diameter and curvature) and wall stress. This work investigates the feasibility of a machine learning approach to establish the linkages between shape features and FEA-predicted AsAA rupture risk, and it may serve as a faster surrogate for FEA associated with long simulation time and numerical convergence issues. This method consists of four main steps: (1) constructing a statistical shape model (SSM) from clinical 3D CT images of AsAA patients; (2) generating a dataset of representative aneurysm shapes and obtaining FEA-predicted risk scores defined as systolic pressure divided by rupture pressure (rupture is determined by a threshold criterion); (3) establishing relationship between shape features and risk by using classifiers and regressors; and (4) evaluating such relationship in cross-validation. The results show that SSM parameters can be used as strong shape features to make predictions of risk scores consistent with FEA, which lead to an average risk classification accuracy of 95.58% by using support vector machine and an average regression error of 0.0332 by using support vector regression, while intuitive geometric features have relatively weak performance. Compared to FEA, this machine learning approach is magnitudes faster. In our future studies, material properties and inhomogeneous thickness will be incorporated into the models and learning algorithms, which may lead to a practical system for clinical applications.
机译:主动脉的几何特征与临床决策中的患者破裂的风险联系在一起,以便在临床决定中选择升性的主动脉瘤(ASAA)。以前的方法专注于直观几何特征(例如,直径和曲率)和墙应力之间的关系。这项工作调查了机器学习方法的可行性,以建立形状特征和FEA预测的asa破裂风险之间的联系,并且它可以作为与长模拟时间和数值收敛问题相关的FEA更快的代理。该方法由四个主要步骤组成:(1)从ASAA患者的临床3D CT图像构建统计形状模型(SSM); (2)产生代表性动脉瘤形状的数据集,并获得定义为由破裂压力除以裂解压力的收缩压(破裂由阈值标准确定)的预测风险评分; (3)使用分类器和回归方建立形状特征与风险的关系; (4)在交叉验证中评估这种关系。结果表明,SSM参数可用作强大的形状特征,以使风险评分与FEA一致的预测,通过使用支持向量机和使用支持向量的0.0332的平均回归误差导致95.58%的平均风险分类精度。回归,而直观的几何特征具有相对较弱的性能。与FEA相比,该机器学习方法是较快的幅度。在未来的研究中,将纳入模型和学习算法中的材料特性和不均匀厚度,这可能导致临床应用的实用系统。

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