Hansen Jens, Jain Abhinav R, Nenov Philip, Robinson Peter N, Iyengar Ravi
Department of Pharmacological Science and Institute for Systems Biomedicine, Icahn School of Medicine at Mount Sinai, New York, NY, United States.
College of Arts and Sciences, University of Pennsylvania, Philadelphia, PA, United States.
Front Cell Dev Biol. 2024 Jun 26;12:1240384. doi: 10.3389/fcell.2024.1240384. eCollection 2024.
Cell level functions underlie tissue and organ physiology. Gene expression patterns offer extensive views of the pathways and processes within and between cells. Single cell transcriptomics provides detailed information on gene expression within cells, cell types, subtypes and their relative proportions in organs. Functional pathways can be scalably connected to physiological functions at the cell and organ levels. Integrating experimentally obtained gene expression patterns with prior knowledge of pathway interactions enables identification of networks underlying whole cell functions such as growth, contractility, and secretion. These pathways can be computationally modeled using differential equations to simulate cell and organ physiological dynamics regulated by gene expression changes. Such computational systems can be thought of as parts of digital twins of organs. Digital twins, at the core, need computational models that represent in detail and simulate how dynamics of pathways and networks give rise to whole cell level physiological functions. Integration of transcriptomic responses and numerical simulations could simulate and predict whole cell functional outputs from transcriptomic data. We developed a computational pipeline that integrates gene expression timelines and systems of coupled differential equations to generate cell-type selective dynamical models. We tested our integrative algorithm on the eicosanoid biosynthesis network in macrophages. Converting transcriptomic changes to a dynamical model allowed us to predict dynamics of prostaglandin and thromboxane synthesis and secretion by macrophages that matched published lipidomics data obtained in the same experiments. Integration of cell-level system biology simulations with genomic and clinical data using a knowledge graph framework will allow us to create explicit predictive models that mechanistically link genomic determinants to organ function. Such integration requires a multi-domain ontological framework to connect genomic determinants to gene expression and cell pathways and functions to organ level phenotypes in healthy and diseased states. These integrated scalable models of tissues and organs as accurate digital twins predict health and disease states for precision medicine.
细胞水平的功能是组织和器官生理学的基础。基因表达模式提供了细胞内部以及细胞之间通路和过程的广泛视图。单细胞转录组学提供了关于细胞内基因表达、细胞类型、亚型及其在器官中的相对比例的详细信息。功能通路可以在细胞和器官水平上可扩展地与生理功能相联系。将实验获得的基因表达模式与通路相互作用的先验知识相结合,能够识别诸如生长、收缩性和分泌等全细胞功能背后的网络。这些通路可以使用微分方程进行计算建模,以模拟由基因表达变化调节的细胞和器官生理动态。这样的计算系统可以被视为器官数字孪生体的一部分。数字孪生体的核心需要详细表示并模拟通路和网络动态如何产生全细胞水平生理功能的计算模型。转录组反应和数值模拟的整合可以从转录组数据模拟和预测全细胞功能输出。我们开发了一种计算流程,该流程整合基因表达时间线和耦合微分方程组,以生成细胞类型选择性动态模型。我们在巨噬细胞的类花生酸生物合成网络上测试了我们的整合算法。将转录组变化转化为动态模型使我们能够预测巨噬细胞前列腺素和血栓烷合成与分泌的动态,这与在同一实验中获得的已发表脂质组学数据相匹配。使用知识图谱框架将细胞水平系统生物学模拟与基因组和临床数据整合,将使我们能够创建明确的预测模型,将基因组决定因素与器官功能进行机械性关联。这种整合需要一个多领域本体框架,以在健康和疾病状态下将基因组决定因素与基因表达、细胞通路以及功能与器官水平表型联系起来。这些作为精确数字孪生体的组织和器官的集成可扩展模型预测健康和疾病状态,以实现精准医学。