Cockrell Chase, Ozik Jonathan, Collier Nick, An Gary
Department of Surgery, University of Vermont, USA.
Argonne National Laboratory, USA.
Simulation. 2021 Apr;97(4):287-296. doi: 10.1177/0037549720975075. Epub 2020 Dec 14.
There is increasing interest in the use of mechanism-based multi-scale computational models (such as agent-based models (ABMs)) to generate simulated clinical populations in order to discover and evaluate potential diagnostic and therapeutic modalities. The description of the environment in which a biomedical simulation operates (model context) and parameterization of internal model rules (model content) requires the optimization of a large number of free parameters. In this work, we utilize a nested active learning (AL) workflow to efficiently parameterize and contextualize an ABM of systemic inflammation used to examine sepsis. Contextual parameter space was examined using four parameters external to the model's rule set. The model's internal parameterization, which represents gene expression and associated cellular behaviors, was explored through the augmentation or inhibition of signaling pathways for 12 signaling mediators associated with inflammation and wound healing. We have implemented a nested AL approach in which the clinically relevant (CR) model environment space for a given internal model parameterization is mapped using a small Artificial Neural Network (ANN). The outer AL level workflow is a larger ANN that uses AL to efficiently regress the volume and centroid location of the CR space given by a single internal parameterization. We have reduced the number of simulations required to efficiently map the CR parameter space of this model by approximately 99%. In addition, we have shown that more complex models with a larger number of variables may expect further improvements in efficiency.
人们越来越关注使用基于机制的多尺度计算模型(如基于主体的模型(ABM))来生成模拟临床群体,以便发现和评估潜在的诊断和治疗方式。生物医学模拟运行环境的描述(模型上下文)和内部模型规则的参数化(模型内容)需要优化大量自由参数。在这项工作中,我们利用嵌套主动学习(AL)工作流程,有效地对用于研究败血症的全身炎症ABM进行参数化和情境化。使用模型规则集外部的四个参数检查情境参数空间。通过增强或抑制与炎症和伤口愈合相关的12种信号介质的信号通路,探索了代表基因表达和相关细胞行为的模型内部参数化。我们实施了一种嵌套AL方法,其中使用一个小型人工神经网络(ANN)来映射给定内部模型参数化的临床相关(CR)模型环境空间。外部AL级工作流程是一个更大的ANN,它使用AL来有效地回归由单个内部参数化给出的CR空间的体积和质心位置。我们已经将有效映射该模型CR参数空间所需的模拟次数减少了约99%。此外,我们已经表明,具有更多变量的更复杂模型可能会在效率上有进一步提高。