State Key Laboratory of Bioreactor Engineering, East China University of Science and Technology, Shanghai 200237, China; Department of Chemical Engineering, Queen's University, Kingston, Canada K7L 3N6.
Shanghai Jiao Tong University School of Medicine, Shanghai 200127, China.
Math Biosci. 2024 Sep;375:109248. doi: 10.1016/j.mbs.2024.109248. Epub 2024 Jul 8.
The dynamics of locally interacting particles that are distributed in space give rise to a multitude of complex behaviours. However the simulation of reaction-diffusion processes which model such systems is highly computationally expensive, the cost increasing rapidly with the size of space. Here, we devise a graph neural network based approach that uses cheap Monte Carlo simulations of reaction-diffusion processes in a small space to cast predictions of the dynamics of the same processes in a much larger and complex space, including spaces modelled by networks with heterogeneous topology. By applying the method to two biological examples, we show that it leads to accurate results in a small fraction of the computation time of standard stochastic simulation methods. The scalability and accuracy of the method suggest it is a promising approach for studying reaction-diffusion processes in complex spatial domains such as those modelling biochemical reactions, population evolution and epidemic spreading.
在空间中分布的局部相互作用的粒子的动力学会产生多种复杂的行为。然而,模拟这些系统的反应-扩散过程的计算成本非常高,成本随着空间大小的增加而迅速增加。在这里,我们设计了一种基于图神经网络的方法,该方法使用在小空间中进行的廉价的反应-扩散过程的蒙特卡罗模拟,来预测在更大、更复杂的空间中(包括由具有异构拓扑的网络建模的空间)中相同过程的动力学。通过将该方法应用于两个生物学示例,我们表明,它在标准随机模拟方法计算时间的一小部分内就能得到准确的结果。该方法的可扩展性和准确性表明,它是研究复杂空间域中的反应-扩散过程的一种很有前途的方法,这些空间域可以模拟生化反应、种群演化和传染病传播等过程。