Jiang Zhenran, Zhou Yanhong
Hubei Bioinformatics and Molecular Imaging Key Laboratory, School of Computer Science and Technology, Huazhong University of Science and Technology, Wuhan, China.
Curr Protein Pept Sci. 2006 Oct;7(5):459-64. doi: 10.2174/138920306778559359.
The G-protein coupled receptor (GPCR) superfamily is one of the most important drug target classes for the pharmaceutical industry. The completion of the human genome project has revealed that there are more than 300 potential GPCR targets of interest. The identification of their natural ligands can gain significant insights into regulatory mechanisms of cellular signaling networks and provide unprecedented opportunities for drug discovery. Much effort has been directed towards the GPCR ligand discovery study by both academic institutions and pharmaceutical industries. However, the endogenous ligands still remain unknown for about 150 GPCRs in the human genome. It is necessary to develop new strategies to predict candidate ligands for these so-called orphan receptors. Computational techniques are playing an increasingly important role in finding and validating novel ligands for orphan GPCRs (oGPCRs). In this paper, we focus on recent development in applying bioinformatics approaches for the discovery of GPCR ligands. In addition, some of the data resources for ligand identification are also provided.
G蛋白偶联受体(GPCR)超家族是制药行业最重要的药物靶点类别之一。人类基因组计划的完成表明,有超过300个潜在的感兴趣的GPCR靶点。确定它们的天然配体可以深入了解细胞信号网络的调节机制,并为药物发现提供前所未有的机会。学术机构和制药行业都在GPCR配体发现研究方面投入了大量精力。然而,人类基因组中约150种GPCR的内源性配体仍然未知。有必要开发新的策略来预测这些所谓孤儿受体的候选配体。计算技术在寻找和验证孤儿GPCR(oGPCR)的新型配体方面发挥着越来越重要的作用。在本文中,我们重点关注应用生物信息学方法发现GPCR配体的最新进展。此外,还提供了一些用于配体鉴定的数据资源。