模拟三维细胞运动的数学框架:胶质母细胞瘤细胞迁移的应用

M Scott;K Żychaluk;R N Bearon
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引用次数: 5

摘要

由于成像技术的进步,从微组织的实时图像中收集3D细胞跟踪数据是最近的创新。因此,人们对在3D体外模型系统中研究细胞运动性越来越感兴趣,但缺乏分析所得数据集的严格方法。使用这些体外模型的一个例子是在癌症肿瘤的研究中。体外生长多细胞肿瘤球体可以对肿瘤微环境进行建模,并研究肿瘤细胞的行为,如迁移,这提高了对这些细胞的了解,进而可能改善癌症的治疗。在本文中,我们提出了一种用于严格分析3D细胞跟踪数据的工作流程,该工作流程基于持久随机行走模型,但适用于其他生物知情的数学模型。我们使用统计测量来评估模型与运动数据的拟合程度,并估计模型参数,并为这些参数提供置信区间,以便在考虑数据相关性的情况下对模型进行参数化。在对胶质母细胞瘤肿瘤细胞(一种预后非常差的脑癌症)的体外实验中获得的细胞跟踪数据进行测试之前,我们使用计算机模拟来验证3D工作流程。所提出的方法旨在为建模者和实验者提供方便,因为它提供了揭示数据集特征的工具,这些特征可能会对未来的实验或建模尝试提出修改建议。
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A mathematical framework for modelling 3D cell motility: applications to glioblastoma cell migration
The collection of 3D cell tracking data from live images of micro-tissues is a recent innovation made possible due to advances in imaging techniques. As such there is increased interest in studying cell motility in 3D in vitro model systems but a lack of rigorous methodology for analysing the resulting data sets. One such instance of the use of these in vitro models is in the study of cancerous tumours. Growing multicellular tumour spheroids in vitro allows for modelling of the tumour microenvironment and the study of tumour cell behaviours, such as migration, which improves understanding of these cells and in turn could potentially improve cancer treatments. In this paper, we present a workflow for the rigorous analysis of 3D cell tracking data, based on the persistent random walk model, but adaptable to other biologically informed mathematical models. We use statistical measures to assess the fit of the model to the motility data and to estimate model parameters and provide confidence intervals for those parameters, to allow for parametrization of the model taking correlation in the data into account. We use in silico simulations to validate the workflow in 3D before testing our method on cell tracking data taken from in vitro experiments on glioblastoma tumour cells, a brain cancer with a very poor prognosis. The presented approach is intended to be accessible to both modellers and experimentalists alike in that it provides tools for uncovering features of the data set that may suggest amendments to future experiments or modelling attempts.
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