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首页> 外文期刊>Journal of Theoretical Biology >Mathematical modelling of glioma growth: The use of Diffusion Tensor Imaging (DTI) data to predict the anisotropic pathways of cancer invasion
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Mathematical modelling of glioma growth: The use of Diffusion Tensor Imaging (DTI) data to predict the anisotropic pathways of cancer invasion

机译:神经胶质瘤生长的数学模型:使用扩散张量成像(DTI)数据预测癌症侵袭的各向异性途径

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摘要

The nonuniform growth of certain forms of cancer can present significant complications for their treatment, a particularly acute problem in gliomas. A number of experimental results have suggested that invasion is facilitated by the directed movement of cells along the aligned neural fibre tracts that form a large component of the white matter. Diffusion tensor imaging (DTI) provides a window for visualising this anisotropy and gaining insight on the potential invasive pathways. In this paper we develop a mesoscopic model for glioma invasion based on the individual migration pathways of invading cells along the fibre tracts. Via scaling we obtain a macroscopic model that allows us to explore the overall growth of a tumour. To connect DTI data to parameters in the macroscopic model we assume that directional guidance along fibre tracts is described by a bimodal von Mises-Fisher distribution (a normal distribution on a unit sphere) and parametrised according to the directionality and degree of anisotropy in the diffusion tensors. We demonstrate the results in a simple model for glioma growth, exploiting both synthetic and genuine DTI datasets to reveal the potentially crucial role of anisotropic structure on invasion.
机译:某些形式的癌症的不均匀生长会为其治疗带来严重的并发症,这在神经胶质瘤中尤其严重。许多实验结果表明,细胞沿着排列的神经纤维束的定向运动促进了浸润,排列的神经纤维束形成了白质的很大一部分。扩散张量成像(DTI)提供了一个窗口,用于可视化这种各向异性并获得有关潜在侵入途径的见识。在本文中,我们基于侵袭细胞沿纤维束的单个迁移路径,开发了一种胶质瘤侵袭的介观模型。通过缩放,我们获得了宏观模型,该模型使我们能够探索肿瘤的整体生长。为了将DTI数据与宏观模型中的参数联系起来,我们假设沿着纤维束的方向引导由双峰von Mises-Fisher分布(单位球面上的正态分布)描述,并根据扩散的方向性和各向异性程度进行参数化张量。我们在胶质瘤生长的简单模型中证明了结果,同时利用合成的和真实的DTI数据集揭示了各向异性结构对入侵的潜在关键作用。

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