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首页> 外文期刊>Journal of cardiovascular translational research. >Machine Learning Identification Framework of Hemodynamics of Blood Flow in Patient-Specific Coronary Arteries with Abnormality
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Machine Learning Identification Framework of Hemodynamics of Blood Flow in Patient-Specific Coronary Arteries with Abnormality

机译:异常患者特异性冠状动脉血流血流动力学的机器学习识别框架

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In this study, we put forth a new deep neural network framework to predict flow behavior in a coronary arterial network with different properties in the presence of any abnormality like stenosis. An artificial neural network (ANN) model is trained using synthetic data so that it can predict the pressure and velocity within the arterial network. The data required to train the neural network were obtained from the CFD analysis of several geometries of arteries with specific features in ABAQUS software. The proposed approach precisely predicts the hemodynamic behavior of the blood flow. The average accuracy of the pressure prediction was 98.7, and the average velocity magnitude accuracy was 93.2. Our model can also be used to predict fractional flow reserve (FFR), which is one of the main indices to determine the severity of stenosis, and our model predicts this index successfully based on the artery features.
机译:在这项研究中,我们提出了一种新的深度神经网络框架,用于预测冠状动脉网络中具有不同性质的血流行为,同时存在任何异常(如狭窄)。人工神经网络 (ANN) 模型使用合成数据进行训练,以便它可以预测动脉网络内的压力和速度。训练神经网络所需的数据是通过在 ABAQUS 软件中对具有特定特征的动脉的几种几何形状进行 CFD 分析获得的。所提出的方法精确地预测了血流的血流动力学行为。压力预测的平均精度为98.7%,平均速度大小精度为93.2%。我们的模型还可用于预测血流储备分数(FFR),FFR是确定狭窄严重程度的主要指标之一,我们的模型根据动脉特征成功预测了该指标。

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