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FEM Based 3D Tumor Growth Prediction for Kidney Tumor

机译:基于FEM的肾肿瘤3D肿瘤生长预测

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It is important to predict the tumor growth so that appropriate treatment can be planned especially in the early stage. In this paper, we propose a finite element method (FEM) based 3D tumor growth prediction system using longitudinal kidney tumor images, To the best of our knowledge, this is the first kidney tumor growth prediction system. The kidney tissues are classified into three types: renal cortex, renal medulla and renal pelvis. The reaction-diffusion model is applied as the tumor growth model. Different diffusion properties are considered in the model: the diffusion for renal medulla is considered as anisotropic, while those of renal cortex and renal pelvis are considered as isotropic. The FEM is employed to simulate the diffusion model. Automated estimation of the model parameters is performed via optimization of an objective function reflecting overlap accuracy, which is optimized in parallel via HOPSPACK (hybrid optimization parallel search). An exponential curve fitting based on the non-linear least squares method is used for multi-time point model parameters prediction. The proposed method was tested on the seven time points longitudinal kidney tumor CT studies from two patients with five tumors. The experimental results showed the feasibility and efficacy of the proposed method.
机译:重要的是要预测肿瘤生长,因此可以特别在早期阶段计划适当治疗。本文提出了一种基于有限元方法(FEM)的3D肿瘤生长预测系统,致纵肾肿瘤图像,据我们所知,这是第一个肾肿瘤生长预测系统。肾脏组织分为三种类型:肾皮质,肾髓质和肾盂。将反应扩散模型应用于肿瘤生长模型。在模型中考虑了不同的扩散性质:肾髓的扩散被认为是各向异性的,而肾皮质和肾盂的扩散被认为是各向同性的。采用有限元素模拟扩散模型。通过对反射重叠精度的物体函数的优化来执行模型参数的自动估计,该目标函数通过HOPSPACK并行优化(混合优化并​​行搜索)进行优化。基于非线性最小二乘法的指数曲线拟合用于多时间点模型参数预测。在七次肾肿瘤CT研究中测试了所提出的方法,来自两名肿瘤患者。实验结果表明,该方法的可行性和功效。

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