Binny Rachelle N, Plank Michael J, James Alex
School of Mathematics and Statistics, University of Canterbury, Christchurch, New Zealand Te Pūnaha Matatini, New Zealand
School of Mathematics and Statistics, University of Canterbury, Christchurch, New Zealand Te Pūnaha Matatini, New Zealand.
J R Soc Interface. 2015 May 6;12(106). doi: 10.1098/rsif.2015.0228.
The ability of cells to undergo collective movement plays a fundamental role in tissue repair, development and cancer. Interactions occurring at the level of individual cells may lead to the development of spatial structure which will affect the dynamics of migrating cells at a population level. Models that try to predict population-level behaviour often take a mean-field approach, which assumes that individuals interact with one another in proportion to their average density and ignores the presence of any small-scale spatial structure. In this work, we develop a lattice-free individual-based model (IBM) that uses random walk theory to model the stochastic interactions occurring at the scale of individual migrating cells. We incorporate a mechanism for local directional bias such that an individual's direction of movement is dependent on the degree of cell crowding in its neighbourhood. As an alternative to the mean-field approach, we also employ spatial moment theory to develop a population-level model which accounts for spatial structure and predicts how these individual-level interactions propagate to the scale of the whole population. The IBM is used to derive an equation for dynamics of the second spatial moment (the average density of pairs of cells) which incorporates the neighbour-dependent directional bias, and we solve this numerically for a spatially homogeneous case.
细胞进行集体运动的能力在组织修复、发育和癌症中起着基础性作用。单个细胞层面发生的相互作用可能导致空间结构的形成,而这种空间结构会在群体层面影响迁移细胞的动态。试图预测群体层面行为的模型通常采用平均场方法,该方法假定个体之间的相互作用与其平均密度成正比,并且忽略任何小尺度空间结构的存在。在这项工作中,我们开发了一种无网格个体基模型(IBM),它使用随机游走理论来模拟在单个迁移细胞尺度上发生的随机相互作用。我们纳入了一种局部方向偏差机制,使得个体的运动方向取决于其邻域内的细胞拥挤程度。作为平均场方法的替代,我们还运用空间矩理论来开发一个群体层面的模型,该模型考虑空间结构并预测这些个体层面的相互作用如何传播到整个群体的尺度。IBM 用于推导包含邻域依赖方向偏差的第二空间矩(细胞对的平均密度)动态方程,并且我们针对空间均匀情况对其进行数值求解。