An artificial intelligence-based platform for automatically estimating time-averaged wall shear stress in the ascending aorta.

IF 3.9 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS European heart journal. Digital health Pub Date : 2022-12-01 DOI:10.1093/ehjdh/ztac058
Lei Lv, Haotian Li, Zonglv Wu, Weike Zeng, Ping Hua, Songran Yang
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引用次数: 5

Abstract

Aims: Aortopathies are a series of disorders requiring multiple indicators to assess risk. Time-averaged wall shear stress (TAWSS) is currently considered as the primary indicator of aortopathies progression, which can only be calculated by Computational Fluid Dynamics (CFD). However, CFD's complexity and high computational cost, greatly limit its application. The study aimed to construct a deep learning platform which could accurately estimate TAWSS in ascending aorta.

Methods and results: A total of 154 patients who had thoracic computed tomography angiography were included and randomly divided into two parts: training set (90%, n = 139) and testing set (10%, n = 15). TAWSS were calculated via CFD. The artificial intelligence (AI)-based model was trained and assessed using the dice coefficient (DC), normalized mean absolute error (NMAE), and root mean square error (RMSE). Our AI platform brought into correspondence with the manual segmentation (DC = 0.86) and the CFD findings (NMAE, 7.8773% ± 4.7144%; RMSE, 0.0098 ± 0.0097), while saving 12000-fold computational cost.

Conclusion: The high-efficiency and robust AI platform can automatically estimate value and distribution of TAWSS in ascending aorta, which may be suitable for clinical applications and provide potential ideas for CFD-based problem solving.

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基于人工智能的升主动脉壁时间平均剪应力自动估计平台。
目的:主动脉病变是一系列疾病,需要多种指标来评估风险。时间平均壁剪切应力(TAWSS)目前被认为是主动脉病变进展的主要指标,只能通过计算流体力学(CFD)来计算。然而,CFD的复杂性和高昂的计算成本极大地限制了其应用。本研究旨在构建一个能够准确估计升主动脉TAWSS的深度学习平台。方法与结果:共纳入154例胸部ct血管造影患者,随机分为训练组(90%,n = 139)和测试组(10%,n = 15)。通过CFD计算TAWSS。使用骰子系数(DC)、归一化平均绝对误差(NMAE)和均方根误差(RMSE)对基于人工智能(AI)的模型进行训练和评估。我们的AI平台将人工分割结果(DC = 0.86)与CFD结果(NMAE, 7.873%±4.7144%;RMSE为0.0098±0.0097),同时节省了12000倍的计算成本。结论:高效鲁棒的人工智能平台可自动估计升主动脉TAWSS的值和分布,适合临床应用,为基于cfd的问题解决提供潜在思路。
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