使用U-Net神经网络架构对基于cell - potts agent的模型进行代理建模作为分割任务。

ArXiv Pub Date : 2025-05-05
Tien Comlekoglu, J Quetzalcóatl Toledo-Marín, Tina Comlekoglu, Douglas W Desimone, Shayn M Peirce, Geoffrey Fox, James A Glazier
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引用次数: 0

摘要

cellularpotts模型是一个强大而普遍的框架,用于开发模拟复杂多细胞生物系统的计算模型。细胞-波茨模型(cpm)通常计算成本很高,因为它需要对大量个体模型主体和偏微分方程(PDEs)描述的扩散场之间的相互作用进行显式建模。在这项工作中,我们使用U-Net架构开发了一个卷积神经网络(CNN)代理模型,该模型考虑了周期性边界条件。我们使用这个模型来加速先前用于研究\textit{体外}血管生成的机制CPM的评估。代理模型经过训练,可以提前预测100个计算步骤(蒙特卡罗步骤,MCS),与CPM代码执行相比,模拟评估的速度提高了590倍。通过多次递归评估,我们的模型有效地捕获了原始Cellular-Potts模型所展示的突发行为,如血管发芽、扩张和吻合、血管腔隙收缩。这种方法证明了深度学习作为CPM模拟的有效替代模型的潜力,能够在更大的空间和时间尺度上更快地评估计算昂贵的生物过程CPM。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Surrogate modeling of Cellular-Potts Agent-Based Models as a segmentation task using the U-Net neural network architecture.

The Cellular-Potts model is a powerful and ubiquitous framework for developing computational models for simulating complex multicellular biological systems. Cellular-Potts models (CPMs) are often computationally expensive due to the explicit modeling of interactions among large numbers of individual model agents and diffusive fields described by partial differential equations (PDEs). In this work, we develop a convolutional neural network (CNN) surrogate model using a U-Net architecture that accounts for periodic boundary conditions. We use this model to accelerate the evaluation of a mechanistic CPM previously used to investigate in vitro vasculogenesis. The surrogate model was trained to predict 100 computational steps ahead (Monte-Carlo steps, MCS), accelerating simulation evaluations by a factor of 590 times compared to CPM code execution. Over multiple recursive evaluations, our model effectively captures the emergent behaviors demonstrated by the original Cellular-Potts model of such as vessel sprouting, extension and anastomosis, and contraction of vascular lacunae. This approach demonstrates the potential for deep learning to serve as efficient surrogate models for CPM simulations, enabling faster evaluation of computationally expensive CPM of biological processes at greater spatial and temporal scales.

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