High Performance Computing and Networking Institute, National Research Council of Italy, Via P. Castellino, 111, Napoli, 80131, Italy.
Stazione Zoologica Anton Dohrn, Villa Comunale, Napoli, 80121, Italy.
BMC Bioinformatics. 2019 Apr 18;20(Suppl 4):162. doi: 10.1186/s12859-019-2685-9.
Obesity is a complex disorder associated with an increased risk of developing several comorbid chronic diseases, including postmenopausal breast cancer. Although many studies have investigated this issue, the link between body weight and either risk or poor outcome of breast cancer is still to characterize. Systems biology approaches, based on the integration of multiscale models and data from a wide variety of sources, are particularly suitable for investigating the underlying molecular mechanisms of complex diseases. In this scenario, GEnome-scale metabolic Models (GEMs) are a valuable tool, since they represent the metabolic structure of cells and provide a functional scaffold for simulating and quantifying metabolic fluxes in living organisms through constraint-based mathematical methods. The integration of omics data into the structural information described by GEMs allows to build more accurate descriptions of metabolic states.
In this work, we exploited gene expression data of postmenopausal breast cancer obese and lean patients to simulate a curated GEM of the human adipocyte, available in the Human Metabolic Atlas database. To this aim, we used a published algorithm which exploits a data-driven approach to overcome the limitation of defining a single objective function to simulate the model. The flux solutions were used to build condition-specific graphs to visualise and investigate the reaction networks and their properties. In particular, we performed a network topology differential analysis to search for pattern differences and identify the principal reactions associated with significant changes across the two conditions under study.
Metabolic network models represent an important source to study the metabolic phenotype of an organism in different conditions. Here we demonstrate the importance of exploiting Next Generation Sequencing data to perform condition-specific GEM analyses. In particular, we show that the qualitative and quantitative assessment of metabolic fluxes modulated by gene expression data provides a valuable method for investigating the mechanisms associated with the phenotype under study, and can foster our interpretation of biological phenomena.
肥胖是一种复杂的疾病,与多种并发的慢性疾病(包括绝经后乳腺癌)的风险增加有关。尽管许多研究已经探讨了这个问题,但体重与乳腺癌的风险或不良预后之间的联系仍有待阐明。基于整合多尺度模型和来自各种来源的数据的系统生物学方法特别适合研究复杂疾病的潜在分子机制。在这种情况下,基因组规模代谢模型(GEM)是一种很有价值的工具,因为它们代表了细胞的代谢结构,并通过基于约束的数学方法为模拟和量化生物体内的代谢通量提供了一个功能支架。将组学数据整合到 GEM 描述的结构信息中,可以构建更准确的代谢状态描述。
在这项工作中,我们利用绝经后肥胖和消瘦乳腺癌患者的基因表达数据来模拟人类脂肪细胞的一个经过精心编辑的 GEM,该模型可在人类代谢图谱数据库中获得。为此,我们使用了一种已发表的算法,该算法利用数据驱动的方法来克服定义单个目标函数来模拟模型的局限性。通量解用于构建条件特异性图,以可视化和研究反应网络及其性质。特别是,我们进行了网络拓扑差异分析,以搜索模式差异,并确定与研究的两种条件下的显著变化相关的主要反应。
代谢网络模型是研究不同条件下生物体代谢表型的重要来源。在这里,我们证明了利用下一代测序数据来进行特定条件下的 GEM 分析的重要性。特别是,我们表明,通过基因表达数据对代谢通量的定性和定量评估提供了一种有价值的方法来研究与所研究表型相关的机制,并可以促进我们对生物学现象的解释。