Division of Medical Genetics, Department of Medicine, School of Medicine, University of California San Diego, Room 1318A, 9500 Gilman Drive #0606, La Jolla, California 92093-0606, United States of America.
Department of Biochemistry, School of Medicine, University of Utah, Room 4100, 15 North Medical Drive East, Salt Lake City, Utah 84112, USA.
Gigascience. 2020 Jan 1;9(1). doi: 10.1093/gigascience/giz137.
Metabolic networks represent all chemical reactions that occur between molecular metabolites in an organism's cells. They offer biological context in which to integrate, analyze, and interpret omic measurements, but their large scale and extensive connectivity present unique challenges. While it is practical to simplify these networks by placing constraints on compartments and hubs, it is unclear how these simplifications alter the structure of metabolic networks and the interpretation of metabolomic experiments.
We curated and adapted the latest systemic model of human metabolism and developed customizable tools to define metabolic networks with and without compartmentalization in subcellular organelles and with or without inclusion of prolific metabolite hubs. Compartmentalization made networks larger, less dense, and more modular, whereas hubs made networks larger, more dense, and less modular. When present, these hubs also dominated shortest paths in the network, yet their exclusion exposed the subtler prominence of other metabolites that are typically more relevant to metabolomic experiments. We applied the non-compartmental network without metabolite hubs in a retrospective, exploratory analysis of metabolomic measurements from 5 studies on human tissues. Network clusters identified individual reactions that might experience differential regulation between experimental conditions, several of which were not apparent in the original publications.
Exclusion of specific metabolite hubs exposes modularity in both compartmental and non-compartmental metabolic networks, improving detection of relevant clusters in omic measurements. Better computational detection of metabolic network clusters in large data sets has potential to identify differential regulation of individual genes, transcripts, and proteins.
代谢网络代表了生物体细胞内分子代谢物之间发生的所有化学反应。它们提供了一个生物背景,可用于整合、分析和解释组学测量结果,但由于其规模庞大且连接广泛,因此带来了独特的挑战。虽然通过对隔室和枢纽施加约束来简化这些网络是可行的,但这些简化如何改变代谢网络的结构以及代谢组学实验的解释尚不清楚。
我们对最新的人类代谢系统模型进行了编目和改编,并开发了可定制的工具,用于定义具有和不具有细胞内细胞器区室化以及包含和不包含丰富代谢物枢纽的代谢网络。区室化使网络更大、密度更低且更模块化,而枢纽使网络更大、密度更高且更模块化。当存在这些枢纽时,它们还主导着网络中的最短路径,但它们的排除暴露了其他通常与代谢组学实验更相关的代谢物的微妙突出性。我们在对来自 5 个人体组织代谢组学测量的回顾性探索性分析中应用了没有代谢物枢纽的非区室网络。网络聚类确定了可能在实验条件下经历差异调节的单个反应,其中一些在原始出版物中并不明显。
排除特定的代谢物枢纽会暴露出区室化和非区室化代谢网络中的模块性,从而提高在组学测量中检测到相关聚类的能力。在大型数据集更好地检测代谢网络聚类有潜力识别个体基因、转录本和蛋白质的差异调节。