ICMR, School of Biological Sciences, The University of Reading, Whiteknights, Reading, RG6 6AS, UK.
Department of Mathematics and Statistics, The University of Reading, Whiteknights, Reading, RG6 6AX, UK.
Sci Rep. 2020 Aug 6;10(1):13244. doi: 10.1038/s41598-020-70215-7.
The phosphatidylinositol (PI) cycle is central to eukaryotic cell signaling. Its complexity, due to the number of reactions and lipid and inositol phosphate intermediates involved makes it difficult to analyze experimentally. Computational modelling approaches are seen as a way forward to elucidate complex biological regulatory mechanisms when this cannot be achieved solely through experimental approaches. Whilst mathematical modelling is well established in informing biological systems, many models are often informed by data sourced from multiple unrelated cell types (mosaic data) or from purified enzyme data. In this work, we develop a model of the PI cycle informed by experimental and omics data taken from a single cell type, namely platelets. We were able to make a number of predictions regarding the regulation of PI cycle enzymes, the importance of the number of receptors required for successful GPCR signaling and the importance of lipid- and protein-binding proteins in regulating second messenger outputs. We then consider how pathway behavior differs, when fully informed by data for HeLa cells and show that model predictions remain consistent. However, when informed by mosaic experimental data model predictions greatly vary illustrating the risks of using mosaic datasets from unrelated cell types.
磷脂酰肌醇 (PI) 循环是真核细胞信号转导的核心。由于涉及的反应和脂质及肌醇磷酸盐中间产物数量众多,其复杂性使得实验分析变得困难。当仅通过实验方法无法阐明复杂的生物调节机制时,计算建模方法被视为一种可行的解决方案。虽然数学建模在为生物系统提供信息方面已经得到很好的建立,但许多模型通常是根据来自多个不相关细胞类型的源数据(镶嵌数据)或来自纯化酶数据进行信息补充。在这项工作中,我们从单个细胞类型,即血小板中获取实验和组学数据,以此开发 PI 循环模型。我们能够对 PI 循环酶的调节、成功 GPCR 信号所需的受体数量的重要性以及脂质和蛋白质结合蛋白在调节第二信使输出方面的重要性做出一些预测。然后,我们考虑了当完全由 HeLa 细胞的数据提供信息时,途径行为如何不同,并表明模型预测仍然一致。然而,当由镶嵌实验数据提供信息时,模型预测会有很大差异,这说明了使用来自不相关细胞类型的镶嵌数据集的风险。