Suppr超能文献

非均匀随机反应扩散系统建模:以吉西他滨治疗非小细胞肺癌生长为例。

Modelling non-homogeneous stochastic reaction-diffusion systems: the case study of gemcitabine-treated non-small cell lung cancer growth.

机构信息

The Microsoft Research - University of Trento Centre for Computational and Systems Biology, Rovereto, Italy.

出版信息

BMC Bioinformatics. 2012;13 Suppl 14(Suppl 14):S14. doi: 10.1186/1471-2105-13-S14-S14. Epub 2012 Sep 7.

Abstract

BACKGROUND

Reaction-diffusion based models have been widely used in the literature for modeling the growth of solid tumors. Many of the current models treat both diffusion/consumption of nutrients and cell proliferation. The majority of these models use classical transport/mass conservation equations for describing the distribution of molecular species in tumor spheroids, and the Fick's law for describing the flux of uncharged molecules (i.e oxygen, glucose). Commonly, the equations for the cell movement and proliferation are first order differential equations describing the rate of change of the velocity of the cells with respect to the spatial coordinates as a function of the nutrient's gradient. Several modifications of these equations have been developed in the last decade to explicitly indicate that the tumor includes cells, interstitial fluids and extracellular matrix: these variants provided a model of tumor as a multiphase material with these as the different phases. Most of the current reaction-diffusion tumor models are deterministic and do not model the diffusion as a local state-dependent process in a non-homogeneous medium at the micro- and meso-scale of the intra- and inter-cellular processes, respectively. Furthermore, a stochastic reaction-diffusion model in which diffusive transport of the molecular species of nutrients and chemotherapy drugs as well as the interactions of the tumor cells with these species is a novel approach. The application of this approach to he scase of non-small cell lung cancer treated with gemcitabine is also novel.

METHODS

We present a stochastic reaction-diffusion model of non-small cell lung cancer growth in the specification formalism of the tool Redi, we recently developed for simulating reaction-diffusion systems. We also describe how a spatial gradient of nutrients and oncological drugs affects the tumor progression. Our model is based on a generalization of the Fick's first diffusion law that allows to model diffusive transport in non-homogeneous media. The diffusion coefficient is explicitly expressed as a function depending on the local conditions of the medium, such as the concentration of molecular species, the viscosity of the medium and the temperature. We incorporated this generalized law in a reaction-based stochastic simulation framework implementing an efficient version of Gillespie algorithm for modeling the dynamics of the interactions between tumor cell, nutrients and gemcitabine in a spatial domain expressing a nutrient and drug concentration gradient.

RESULTS

Using the mathematical framework of model we simulated the spatial growth of a 2D spheroidal tumor model in response to a treatment with gemcitabine and a dynamic gradient of oxygen and glucose. The parameters of the model have been taken from recet literature and also inferred from real tumor shrinkage curves measured in patients suffering from non-small cell lung cancer. The simulations qualitatively reproduce the time evolution of the morphologies of these tumors as well as the morphological patterns follow the growth curves observed in patients.

CONCLUSIONS

s This model is able to reproduce the observed increment/decrement of tumor size in response to the pharmacological treatment with gemcitabine. The formal specification of the model in Redi can be easily extended in an incremental way to include other relevant biophysical processes, such as local extracellular matrix remodelling, active cell migration and traction, and reshaping of host tissue vasculature, in order to be even more relevant to support the experimental investigation of cancer.

摘要

背景

基于反应-扩散的模型在文献中被广泛用于模拟实体瘤的生长。许多当前的模型同时考虑了营养物质的扩散/消耗和细胞增殖。这些模型大多使用经典的传输/质量守恒方程来描述肿瘤球体中分子物种的分布,以及菲克定律来描述不带电荷分子(即氧气、葡萄糖)的通量。通常,细胞运动和增殖的方程是一阶微分方程,描述细胞速度随空间坐标的变化率,作为营养物质梯度的函数。在过去十年中,已经开发了这些方程的几种变体,以明确表示肿瘤包括细胞、细胞间质和细胞外基质:这些变体提供了一种肿瘤作为多相材料的模型,其中这些是不同的相。大多数当前的反应-扩散肿瘤模型是确定性的,并且不将扩散建模为微观和介观尺度上细胞内和细胞间过程中的局部状态相关过程。此外,一种新的方法是使用扩散的分子物种的扩散运输以及肿瘤细胞与这些物质的相互作用的随机反应-扩散模型。将这种方法应用于用吉西他滨治疗的非小细胞肺癌的情况也是新颖的。

方法

我们在我们最近开发的用于模拟反应-扩散系统的工具 Redi 的规范形式中提出了非小细胞肺癌生长的随机反应-扩散模型。我们还描述了营养物质和肿瘤药物的空间梯度如何影响肿瘤的进展。我们的模型基于菲克第一扩散定律的推广,允许在非均匀介质中建模扩散传输。扩散系数明确表示为依赖于介质局部条件的函数,例如分子物种的浓度、介质的粘度和温度。我们将这个广义定律纳入基于反应的随机模拟框架中,为肿瘤细胞、营养物质和吉西他滨在表达营养物质和药物浓度梯度的空间域中的相互作用动力学实施了一种有效的吉列斯皮算法版本。

结果

使用模型的数学框架,我们模拟了 2D 球形肿瘤模型对吉西他滨治疗和氧气和葡萄糖动态梯度的空间生长。模型的参数取自最近的文献,也从患有非小细胞肺癌的患者的实际肿瘤收缩曲线中推断出来。模拟定性地再现了这些肿瘤形态的时间演化,以及形态模式遵循在患者中观察到的生长曲线。

结论

该模型能够再现观察到的肿瘤大小在吉西他滨药物治疗下的增减。模型在 Redi 中的规范说明可以以增量方式轻松扩展,以包括其他相关的生物物理过程,例如局部细胞外基质重塑、细胞主动迁移和牵引,以及宿主组织脉管系统的重塑,以便更能支持癌症的实验研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e037/3439681/157d8d272002/1471-2105-13-S14-S14-1.jpg

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