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首页> 外文期刊>Medical Imaging, IEEE Transactions on >Image Guided Personalization of Reaction-Diffusion Type Tumor Growth Models Using Modified Anisotropic Eikonal Equations
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Image Guided Personalization of Reaction-Diffusion Type Tumor Growth Models Using Modified Anisotropic Eikonal Equations

机译:修正各向异性各向异性方程的反应扩散型肿瘤生长模型的图像引导个性化

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Reaction-diffusion based tumor growth models have been widely used in the literature for modeling the growth of brain gliomas. Lately, recent models have started integrating medical images in their formulation. Including different tissue types, geometry of the brain and the directions of white matter fiber tracts improved the spatial accuracy of reaction-diffusion models. The adaptation of the general model to the specific patient cases on the other hand has not been studied thoroughly yet. In this paper, we address this adaptation. We propose a parameter estimation method for reaction-diffusion tumor growth models using time series of medical images. This method estimates the patient specific parameters of the model using the images of the patient taken at successive time instances. The proposed method formulates the evolution of the tumor delineation visible in the images based on the reaction-diffusion dynamics; therefore, it remains consistent with the information available. We perform thorough analysis of the method using synthetic tumors and show important couplings between parameters of the reaction-diffusion model. We show that several parameters can be uniquely identified in the case of fixing one parameter, namely the proliferation rate of tumor cells. Moreover, regardless of the value the proliferation rate is fixed to, the speed of growth of the tumor can be estimated in terms of the model parameters with accuracy. We also show that using the model-based speed, we can simulate the evolution of the tumor for the specific patient case. Finally, we apply our method to two real cases and show promising preliminary results.
机译:基于反应扩散的肿瘤生长模型已在文献中广泛用于模拟脑胶质瘤的生长。最近,最近的模型已经开始将医学图像集成到其配方中。包括不同的组织类型,大脑的几何形状和白质纤维束的方向,提高了反应扩散模型的空间准确性。另一方面,尚未对通用模型对特定患者病例的适应性进行彻底研究。在本文中,我们解决了这种适应问题。我们提出了使用医学图像的时间序列的反应扩散肿瘤生长模型的参数估计方法。该方法使用在连续时间实例处拍摄的患者图像来估计模型的患者特定参数。所提出的方法基于反应扩散动力学来制定图像中可见肿瘤轮廓的演变;因此,它与可用信息保持一致。我们对使用合成肿瘤的方法进行了详尽的分析,并显示了反应扩散模型参数之间的重要耦合。我们表明,在固定一个参数的情况下,可以唯一标识几个参数,即肿瘤细胞的增殖率。此外,不管增殖率固定为多少,都可以根据模型参数准确地估计肿瘤的生长速度。我们还表明,使用基于模型的速度,我们可以针对特定患者情况模拟肿瘤的演变。最后,我们将我们的方法应用于两个实际案例,并显示出令人鼓舞的初步结果。

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