Sridharan Gautham Vivek, Bruinsma Bote Gosse, Bale Shyam Sundhar, Swaminathan Anandh, Saeidi Nima, Yarmush Martin L, Uygun Korkut
Center for Engineering in Medicine, Harvard Medical School, Massachusetts General Hospital & Shriners Hospital for Children, 51 Blossom Street, Boston, MA 02114, USA.
Department of Control and Dynamic Systems, California Institute of Technology, Pasadena, CA 91125, USA.
Metabolites. 2017 Nov 13;7(4):58. doi: 10.3390/metabo7040058.
Large-scale -omics data are now ubiquitously utilized to capture and interpret global responses to perturbations in biological systems, such as the impact of disease states on cells, tissues, and whole organs. Metabolomics data, in particular, are difficult to interpret for providing physiological insight because predefined biochemical pathways used for analysis are inherently biased and fail to capture more complex network interactions that span multiple canonical pathways. In this study, we introduce a nov-el approach coined Metabolomic Modularity Analysis (MMA) as a graph-based algorithm to systematically identify metabolic modules of reactions enriched with metabolites flagged to be statistically significant. A defining feature of the algorithm is its ability to determine modularity that highlights interactions between reactions mediated by the production and consumption of cofactors and other hub metabolites. As a case study, we evaluated the metabolic dynamics of discarded human livers using time-course metabolomics data and MMA to identify modules that explain the observed physiological changes leading to liver recovery during subnormothermic machine perfusion (SNMP). MMA was performed on a large scale liver-specific human metabolic network that was weighted based on metabolomics data and identified cofactor-mediated modules that would not have been discovered by traditional metabolic pathway analyses.
大规模的组学数据如今被广泛用于捕捉和解读生物系统对扰动的整体反应,比如疾病状态对细胞、组织和整个器官的影响。尤其是代谢组学数据,由于用于分析的预定义生化途径本身存在偏差,且无法捕捉跨越多个经典途径的更复杂网络相互作用,因此难以通过解读来提供生理洞察。在本研究中,我们引入了一种名为代谢组学模块化分析(MMA)的新方法,它是一种基于图的算法,用于系统地识别富含经统计学检验具有显著意义的代谢物的反应代谢模块。该算法的一个显著特点是其能够确定模块化,突出由辅因子和其他枢纽代谢物的产生和消耗介导的反应之间的相互作用。作为一个案例研究,我们使用时间进程代谢组学数据和MMA评估了废弃人类肝脏的代谢动态,以识别能够解释亚低温机器灌注(SNMP)期间导致肝脏恢复的观察到的生理变化的模块。MMA是在一个基于代谢组学数据加权的大规模肝脏特异性人类代谢网络上进行的,并且识别出了传统代谢途径分析无法发现的辅因子介导的模块。