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Geometric Deep Learning for the Assessment of Thrombosis Risk in the Left Atrial Appendage

机译:几何深度学习,用于评估左心房附属物的血栓形成风险

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The assessment of left atrial appendage (LAA) thrombogene-sis has experienced major advances with the adoption of patient-specific computational fluid dynamics (CFD) simulations. Nonetheless, due to the vast computational resources and long execution times required by fluid dynamics solvers, there is an ever-growing body of work aiming to develop surrogate models of fluid flow simulations based on neural networks. The present study builds on this foundation by developing a deep learning (DL) framework capable of predicting the endothelial cell activation potential (ECAP), linked to the risk of thrombosis, solely from the patient-specific LAA geometry. To this end, we leveraged recent advancements in Geometric DL, which seamlessly extend the unparalleled potential of convolutional neural networks (CNN), to non-Euclidean data such as meshes. The model was trained with a dataset combining 202 synthetic and 54 real LAA, predicting the ECAP distributions instantaneously, with an average mean absolute error of 0.563. Moreover, the resulting framework manages to predict the anatomical features related to higher ECAP values even when trained exclusively on synthetic cases.
机译:左心房附属物(LAA)血栓转酶的评估经历了采用患者特定的计算流体动力学(CFD)模拟的主要进步。尽管如此,由于流体动力学求解器所需的巨大计算资源和长期执行时间,旨在产生基于神经网络的流体流模拟的替代模型的成长工作体。本研究通过开发能够预测内皮细胞活化电位(ECAP)的深度学习(DL)框架来构建该基础,仅从患者特定的LAA几何形状与血栓形成的风险相关联。为此,我们利用了几何DL的最近进步,这无缝地扩展了卷积神经网络(CNN)的无与伦比的电位,到诸如网格的非欧几里德数据。该模型通过组合202种合成和54真实LAA的数据集接受培训,瞬间预测ECAP分布,平均平均误差为0.563。此外,所得到的框架管理以预测即使在合成案例上训练的情况下,也可以预测与更高的ECAP值相关的解剖学特征。

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