首页> 外文会议>International Conference on Medical Image Computing and Computer-Assisted Intervention >Unsupervised Learning and Statistical Shape Modeling of the Morphometry and Hemodynamics of Coarctation of the Aorta
【24h】

Unsupervised Learning and Statistical Shape Modeling of the Morphometry and Hemodynamics of Coarctation of the Aorta

机译:无监督的学习与统计形状建模的形态学和谐波谐析的血流动力学

获取原文

摘要

Image-based patient-specific modeling of blood flow is a current state of the art approach in cardiovascular research proposed to support diagnosis and treatment decision. However, the approach is time-consuming, and the absence of large data sets limits the applicability of Machine Learning (ML) technology. This study employs Statistical Shape Models (SSM) and unsupervised ML to interconnect the morphometry and hemodynamics for the congenital heart disease coarctation of the aorta (CoA). Based on magnetic resonance imaging (MRI) data of 154 subjects, an SSM of the stenosed aorta was developed using principal component analysis, and three clusters were identified using agglomerative hierarchical clustering. An additional statistical model describing inlet boundary velocity fields was developed based on 4D-flow MRI measurements. A synthetic database with shape and flow parameters based on statistic characteristics of the patient population was generated and pressure gradients (dP), wall shear stress (WSS), kinetic energy (KE) and secondary flow degree (SFD) were simulated using Computational Fluid Dynamics (STAR CCM +). The synthetic population with 2652 cases had similar shape and hemodynamic properties compared to a real patient cohort. Using Kruskal Wallis test we found significant differences between clusters in real and synthetic data for morphologic measures (H/W-ratio and stenosis degree) and for hemodynamic parameters of mean WSS, dP, KE sum and mean SFD. Synthetic data for anatomy and hemodynamics based on statistical shape analysis is a powerful methodology in cardiovascular research allowing to close a gap of data availability for ML.
机译:基于图像的血流患者特异性建模是血管研究中的现有技术的现状,提出支持诊断和治疗决策。然而,该方法是耗时的,并且没有大数据集限制了机器学习(ML)技术的适用性。本研究采用统计形状模型(SSM)和无监督ML,以互连模象的形态学和血流动力学,以进行主动脉(COA)的先天性心脏病缩窄。基于154个受试者的磁共振成像(MRI)数据,使用主成分分析开发狭窄的主动脉的SSM,并使用聚集分层聚类鉴定了三种簇。基于4D流动MRI测量开发了描述入口边界速度场的额外统计模型。使用计算流体动力学模拟了基于患者群体的统计特征的具有形状和流量参数的合成数据库,以及压力梯度(DP),壁剪切应力(WSS),动能(SFD) (明星CCM +)。与真正的患者队列相比,具有2652例的合成群具有相似的形状和血液动力学性质。使用Kruskal Wallis测试,我们发现了实际和合成数据的簇之间的显着差异,用于形态学措施(H / W比和狭窄程度)和平均WSS,DP,KE和和平均SFD的血液动力学参数。基于统计形状分析的解剖学和血流动力学的合成数据是心血管研究中的强大方法,允许缩小ML的数据可用性差距。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号