Woolf Peter J, Linderman Jennifer J
Department of Chemical Engineering, University of Michigan, Ann Arbor, MI 48109, USA.
J Theor Biol. 2004 Jul 21;229(2):157-68. doi: 10.1016/j.jtbi.2004.03.012.
Many species of receptors form dimers, but how can we use this information to make predictions about signal transduction? This problem is particularly difficult when receptors dimerize with many different species, leading to a combinatoric increase in the possible number of dimer pairs. As an example system, we focus on receptors in the G-protein coupled receptor (GPCR) family. GPCRs have been shown to reversibly form dimers, but this dimerization does not directly affect signal transduction. Here we present a new theoretical framework called a dimerization algebra. This algebra provides a systematic and rational way to represent, manipulate, and in some cases simplify large and often complicated networks of dimerization interactions. To compliment this algebra, Monte Carlo simulations are used to predict dimerization's effect on receptor organization on the membrane, signal transduction, and internalization. These simulation results are directly comparable to various experimental measures such as fluorescence resonance energy transfer (FRET), and as such provide a link between the dimerization algebra and experimental data. As an example, we show how the algebra and computational results can be used to predict the effects of dimerization on the dopamine D2 and somatastatin SSTR1 receptors. When these predictions were compared to experimental findings from the literature, good agreement was found, demonstrating the utility of our approach. Applications of this work to the development of a novel class of dimerization-modulating drugs are also discussed.
许多受体种类会形成二聚体,但我们如何利用这些信息来预测信号转导呢?当受体与许多不同种类的受体形成二聚体时,这个问题就特别困难,这会导致二聚体对的可能数量呈组合式增加。作为一个示例系统,我们聚焦于G蛋白偶联受体(GPCR)家族中的受体。已证明GPCR会可逆地形成二聚体,但这种二聚化并不直接影响信号转导。在此,我们提出一种名为二聚化代数的新理论框架。这种代数提供了一种系统且合理的方式来表示、操纵,并且在某些情况下简化庞大且常常复杂的二聚化相互作用网络。为补充这种代数,我们使用蒙特卡罗模拟来预测二聚化对膜上受体组织、信号转导和内化的影响。这些模拟结果可直接与诸如荧光共振能量转移(FRET)等各种实验测量结果相比较,因此在二聚化代数与实验数据之间建立了联系。例如,我们展示了如何利用代数和计算结果来预测二聚化对多巴胺D2受体和生长抑素SSTR1受体的影响。当将这些预测结果与文献中的实验发现进行比较时,发现吻合度良好,这证明了我们方法的实用性。本文还讨论了这项工作在开发一类新型二聚化调节药物方面的应用。