Division of Medicinal Chemistry, Leiden/Amsterdam Center for Drug Research, Einsteinweg 55, 2333 CC Leiden, The Netherlands.
Curr Top Med Chem. 2011;11(15):1964-77. doi: 10.2174/156802611796391230.
Chemogenomic approaches, which link ligand chemistry to bioactivity against targets (and, by extension, to phenotypes) are becoming more and more important due to the increasing number of bioactivity data available both in proprietary databases as well as in the public domain. In this article we review chemogenomics approaches applied in four different domains: Firstly, due to the relationship between protein targets from which an approximate relation between their respective bioactive ligands can be inferred, we investigate the extent to which chemogenomics approaches can be applied to receptor deorphanization. In this case it was found that by using knowledge about active compounds of related proteins, in 93% of all cases enrichment better than random could be obtained. Secondly, we analyze different cheminformatics analysis methods with respect to their behavior in chemogenomics studies, such as subgraph mining and Bayesian models. Thirdly, we illustrate how chemogenomics, in its particular flavor of 'proteochemometrics', can be applied to extrapolate bioactivity predictions from given data points to related targets. Finally, we extend the concept of 'chemogenomics' approaches, relating ligand chemistry to bioactivity against related targets, into phenotypic space which then falls into the area of 'chemical genomics' and 'chemical genetics'; given that this is very often the desired endpoint of approaches in not only the pharmaceutical industry, but also in academic probe discovery, this is often the endpoint the experimental scientist is most interested in.
由于越来越多的生物活性数据可在专有数据库和公共领域中获得,因此将配体化学与针对靶标的生物活性(并且可以扩展到表型)相关联的化学生物组学方法变得越来越重要。在本文中,我们综述了化学生物组学方法在四个不同领域的应用:首先,由于蛋白质靶标之间存在关系,我们可以从这些靶标中推断出与其各自的生物活性配体之间的近似关系,因此我们研究了化学生物组学方法在受体去孤儿化中的应用程度。在这种情况下,发现通过使用有关相关蛋白质的活性化合物的知识,在所有情况下,富集都可以比随机情况更好。其次,我们分析了不同的化学信息学分析方法在化学生物组学研究中的行为,例如子图挖掘和贝叶斯模型。第三,我们说明了化学生物组学如何以其“蛋白质化学计量学”的特殊风味应用于从给定数据点推断出相关靶标生物活性的预测。最后,我们将“化学生物组学”方法的概念扩展到将配体化学与针对相关靶标的生物活性相关联的表型空间,从而落入“化学基因组学”和“化学遗传学”领域;鉴于这不仅是制药行业,而且还是学术探针发现中方法的期望终点,因此这通常是实验科学家最感兴趣的终点。