Taebi Amirtaha, Vu Catherine T, Roncali Emilie
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:4974-4977. doi: 10.1109/EMBC44109.2020.9176328.
Yttrium-90 (Y) radioembolization is a liver cancer therapy based on Y microspheres injected into the hepatic artery. Current dosimetry methods used to estimate the absorbed dose in order to prescribe the Y activity to inject are not accurate, which can affect the treatment effectiveness. A new dosimetry based on the hemodynamics simulation of the hepatic arterial tree, CFDose, aimed at overcoming some of the limitations of the current methods. However, due to the expensive computational cost of computational fluid dynamics (CFD) simulations, this method needs to be accelerated before it can be used in real-time during treatment planning. In this paper, we introduce a convolutional neural network model trained with the CFD results of a patient with hepatocellular carcinoma to predict the Y distribution under different downstream vasculature resistance conditions. The model performance was evaluated using two metrics, the mean squared error and prediction accuracy. The prediction accuracy showed that the average difference between the actual and predicted data was less than 1%. The proposed model could estimate the Y distribution significantly faster than a CFD simulation.
钇-90(Y)放射性栓塞是一种基于将Y微球注入肝动脉的肝癌治疗方法。当前用于估计吸收剂量以确定要注入的Y活度的剂量测定方法并不准确,这可能会影响治疗效果。一种基于肝动脉树血流动力学模拟的新剂量测定法CFDose,旨在克服当前方法的一些局限性。然而,由于计算流体动力学(CFD)模拟的计算成本高昂,该方法需要加速,才能在治疗规划期间实时使用。在本文中,我们介绍了一种卷积神经网络模型,该模型使用一名肝细胞癌患者的CFD结果进行训练,以预测不同下游血管阻力条件下的Y分布。使用均方误差和预测准确率这两个指标对模型性能进行了评估。预测准确率表明,实际数据与预测数据之间的平均差异小于1%。所提出的模型能够比CFD模拟更快地估计Y分布。