Center for Cell Analysis and Modeling, University of Connecticut School of Medicine, Farmington, CT, United States of America.
Department of Cell Biology, University of Connecticut School of Medicine, Farmington, CT, United States of America.
PLoS One. 2023 Feb 6;18(2):e0281401. doi: 10.1371/journal.pone.0281401. eCollection 2023.
Computational models can be created more efficiently by composing them from smaller, well-defined sub-models that represent specific cellular structures that appear often in different contexts. Cellular iron metabolism is a prime example of this as multiple cell types tend to rely on a similar set of components (proteins and regulatory mechanisms) to ensure iron balance. One recurrent component, ferritin, is the primary iron storage protein in mammalian cells and is necessary for cellular iron homeostasis. Its ability to sequester iron protects cells from rising concentrations of ferrous iron limiting oxidative cell damage. The focus of the present work is establishing a model that tractably represents the ferritin iron sequestration kinetics such that it can be incorporated into larger cell models, in addition to contributing to the understanding of general ferritin iron sequestration dynamics within cells. The model's parameter values were determined from published kinetic and binding experiments and the model was validated against independent data not used in its construction. Simulation results indicate that FT concentration is the most impactful on overall sequestration dynamics, while the FT iron saturation (number of iron atoms sequestered per FT cage) fine tunes the initial rates. Finally, because this model has a small number of reactions and species, was built to represent important details of FT kinetics, and has flexibility to include subtle changes in subunit composition, we propose it to be used as a building block in a variety of specific cell type models of iron metabolism.
计算模型可以通过组合较小的、定义明确的子模型来更有效地创建,这些子模型代表在不同上下文中经常出现的特定细胞结构。细胞铁代谢就是一个很好的例子,因为多种细胞类型往往依赖于一组相似的组件(蛋白质和调节机制)来确保铁的平衡。一个反复出现的组件,铁蛋白,是哺乳动物细胞中主要的铁储存蛋白,对于细胞内铁平衡是必需的。它隔离铁的能力可以防止亚铁浓度升高,从而限制细胞氧化损伤。目前工作的重点是建立一个能够描述铁蛋白铁隔离动力学的模型,使其能够被纳入更大的细胞模型,此外还可以帮助我们理解细胞内铁蛋白铁隔离动力学的一般原理。该模型的参数值是根据已发表的动力学和结合实验确定的,并使用未用于构建模型的独立数据进行了验证。模拟结果表明,FT 浓度对整体隔离动力学的影响最大,而 FT 铁饱和度(每个 FT 笼中隔离的铁原子数)则微调初始速率。最后,由于该模型的反应和物种数量较少,旨在代表 FT 动力学的重要细节,并且具有灵活性,可以包括亚基组成的细微变化,因此我们建议将其用作各种特定细胞类型铁代谢模型的构建块。