Department of Liver, Digestive and Metabolic Diseases, University Medical Centre Groningen, University of Groningen, The Netherlands.
Biochem Soc Trans. 2010 Oct;38(5):1294-301. doi: 10.1042/BST0381294.
Human metabolic diseases are typically network diseases. This holds not only for multifactorial diseases, such as metabolic syndrome or Type 2 diabetes, but even when a single gene defect is the primary cause, where the adaptive response of the entire network determines the severity of disease. The latter may differ between individuals carrying the same mutation. Understanding the adaptive responses of human metabolism naturally requires a systems biology approach. Modelling of metabolic pathways in micro-organisms and some mammalian tissues has yielded many insights, qualitative as well as quantitative, into their control and regulation. Yet, even for a well-known pathway such as glycolysis, precise predictions of metabolite dynamics from experimentally determined enzyme kinetics have been only moderately successful. In the present review, we compare kinetic models of glycolysis in three cell types (African trypanosomes, yeast and skeletal muscle), evaluate their predictive power and identify limitations in our understanding. Although each of these models has its own merits and shortcomings, they also share common features. For example, in each case independently measured enzyme kinetic parameters were used as input. Based on these 'lessons from glycolysis', we will discuss how to make best use of kinetic computer models to advance our understanding of human metabolic diseases.
人类代谢疾病通常是网络疾病。这不仅适用于多因素疾病,如代谢综合征或 2 型糖尿病,即使是单个基因缺陷是主要原因,整个网络的适应性反应也决定了疾病的严重程度。在携带相同突变的个体之间,这种情况可能会有所不同。理解人类代谢的适应性反应自然需要系统生物学方法。微生物和一些哺乳动物组织中代谢途径的建模已经为其控制和调节提供了许多定性和定量的见解。然而,即使对于众所周知的途径,如糖酵解,从实验确定的酶动力学中精确预测代谢物动力学也只是取得了中等成功。在本次综述中,我们比较了三种细胞类型(非洲锥虫、酵母和骨骼肌)中糖酵解的动力学模型,评估了它们的预测能力,并确定了我们理解中的局限性。尽管这些模型中的每一个都有其自身的优点和缺点,但它们也有共同的特征。例如,在每种情况下,独立测量的酶动力学参数都被用作输入。基于这些“糖酵解的经验教训”,我们将讨论如何最好地利用动力学计算机模型来推进我们对人类代谢疾病的理解。