Interacting particle system (IPS) models have proven to be highly successful for describing the spatial movement of organisms. However, it has proven challenging to infer the interaction rules directly from data. In the field of equation discovery, the Weak form Sparse Identification of Nonlinear Dynamics (WSINDy) methodology has been shown to be very computationally efficient for identifying the governing equations of complex systems, even in the presence of substantial noise. Motivated by the success of IPS models to describe the spatial movement of organisms, we develop WSINDy for second order IPSs to model the movement of communities of cells. Specifically, our approach learns the directional interaction rules that govern the dynamics of a heterogeneous population of migrating cells. Rather than aggregating cellular trajectory data into a single best-fit model, we learn the models for each individual cell. These models can then be efficiently classified according to the active classes of interactions present in the model. From these classifications, aggregated models are constructed hierarchically to simultaneously identify different species of cells present in the population and determine best-fit models for each species. We demonstrate the efficiency and proficiency of the method on several test scenarios, motivated by common cell migration experiments.
翻译:事实证明,在描述生物体空间移动的模型中,互动粒子系统(IPS)模型非常成功,但是,事实证明,直接从数据中推断互动规则具有挑战性。在方程式发现领域,微弱形式的非线性动态分解(WSINDI)方法在确定复杂系统治理方程方面非常具有计算效率,即使存在大量噪音。由于IPS模型成功地描述生物体的空间移动,我们开发了SWSINDI,用于第二顺序的IPS,以模拟细胞群落的移动。具体地说,我们的方法是学习指导不同迁徙细胞群的动态的定向互动规则。我们不是将细胞轨迹数据汇总到一个最合适的模型,而是学习每个细胞的模型。然后,这些模型可以根据模型中存在的活跃的相互作用类别有效地分类。从这些分类中,综合模型按等级进行构建,以同时识别在人群中存在的不同细胞种类并确定适合每种物种的最佳模型。我们通过共同的细胞迁移实验,展示了几种试验情景方法的效率和熟练性。