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一种机械耦合的反应扩散模型,该模型纳入肿瘤内异质性以预测神经胶质瘤的生长。

A mechanically coupled reaction-diffusion model that incorporates intra-tumoural heterogeneity to predict glioma growth.

作者信息

Hormuth David A, Weis Jared A, Barnes Stephanie L, Miga Michael I, Rericha Erin C, Quaranta Vito, Yankeelov Thomas E

机构信息

Institute for Computational and Engineering Sciences, The University of Texas at Austin, Austin, TX, USA

Department of Biomedical Engineering, Vanderbilt University, Nashville, TN, USA.

出版信息

J R Soc Interface. 2017 Mar;14(128). doi: 10.1098/rsif.2016.1010.

Abstract

While gliomas have been extensively modelled with a reaction-diffusion (RD) type equation it is most likely an oversimplification. In this study, three mathematical models of glioma growth are developed and systematically investigated to establish a framework for accurate prediction of changes in tumour volume as well as intra-tumoural heterogeneity. Tumour cell movement was described by coupling movement to tissue stress, leading to a mechanically coupled (MC) RD model. Intra-tumour heterogeneity was described by including a voxel-specific carrying capacity (CC) to the RD model. The MC and CC models were also combined in a third model. To evaluate these models, rats ( = 14) with C6 gliomas were imaged with diffusion-weighted magnetic resonance imaging over 10 days to estimate tumour cellularity. Model parameters were estimated from the first three imaging time points and then used to predict tumour growth at the remaining time points which were then directly compared to experimental data. The results in this work demonstrate that mechanical-biological effects are a necessary component of brain tissue tumour modelling efforts. The results are suggestive that a variable tissue carrying capacity is a needed model component to capture tumour heterogeneity. Lastly, the results advocate the need for additional effort towards capturing tumour-to-tissue infiltration.

摘要

虽然胶质瘤已广泛地用反应扩散(RD)型方程进行建模,但这很可能是一种过度简化。在本研究中,开发了三种胶质瘤生长的数学模型并进行系统研究,以建立一个准确预测肿瘤体积变化以及肿瘤内异质性的框架。通过将细胞运动与组织应力耦合来描述肿瘤细胞运动,从而得到一个机械耦合(MC)的RD模型。通过在RD模型中纳入体素特异性承载能力(CC)来描述肿瘤内异质性。MC模型和CC模型也被合并到第三个模型中。为了评估这些模型,对14只患有C6胶质瘤的大鼠在10天内进行扩散加权磁共振成像以估计肿瘤细胞密度。从最初三个成像时间点估计模型参数,然后用于预测其余时间点的肿瘤生长情况,随后将其与实验数据直接比较。这项工作的结果表明,机械生物学效应是脑组织肿瘤建模工作的必要组成部分。结果表明,可变的组织承载能力是捕捉肿瘤异质性所需的模型组成部分。最后,结果表明需要做出更多努力来捕捉肿瘤对组织的浸润情况。

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本文引用的文献

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Selection, calibration, and validation of models of tumor growth.肿瘤生长模型的选择、校准与验证。
Math Models Methods Appl Sci. 2016 Nov;26(12):2341-2368. doi: 10.1142/S021820251650055X. Epub 2016 Oct 3.
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The mechanical microenvironment in cancer: How physics affects tumours.癌症的机械微环境:物理如何影响肿瘤。
Semin Cancer Biol. 2015 Dec;35:62-70. doi: 10.1016/j.semcancer.2015.09.001. Epub 2015 Sep 5.
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The role of mechanical forces in tumor growth and therapy.机械力在肿瘤生长和治疗中的作用。
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