School of Life Sciences and Technology, Tongji University, Shanghai, 200092, PR China.
BMC Bioinformatics. 2012 Aug 22;13:212. doi: 10.1186/1471-2105-13-212.
Histone deacetylase (HDAC) is a novel target for the treatment of cancer and it can be classified into three classes, i.e., classes I, II, and IV. The inhibitors selectively targeting individual HDAC have been proved to be the better candidate antitumor drugs. To screen selective HDAC inhibitors, several proteochemometric (PCM) models based on different combinations of three kinds of protein descriptors, two kinds of ligand descriptors and multiplication cross-terms were constructed in our study.
The results show that structure similarity descriptors are better than sequence similarity descriptors and geometry descriptors in the leftacterization of HDACs. Furthermore, the predictive ability was not improved by introducing the cross-terms in our models. Finally, a best PCM model based on protein structure similarity descriptors and 32-dimensional general descriptors was derived (R2 = 0.9897, Qtest2 = 0.7542), which shows a powerful ability to screen selective HDAC inhibitors.
Our best model not only predict the activities of inhibitors for each HDAC isoform, but also screen and distinguish class-selective inhibitors and even more isoform-selective inhibitors, thus it provides a potential way to discover or design novel candidate antitumor drugs with reduced side effect.
组蛋白去乙酰化酶(HDAC)是治疗癌症的新靶点,可分为 I、II、IV 三类。选择性靶向个别 HDAC 的抑制剂已被证明是更好的候选抗肿瘤药物。为了筛选选择性 HDAC 抑制剂,本研究构建了基于三种蛋白描述符、两种配体描述符和乘法交叉项不同组合的几个蛋白化学计量(PCM)模型。
结果表明,在 HDAC 的特征描述中,结构相似性描述符优于序列相似性描述符和几何描述符。此外,在我们的模型中引入交叉项并没有提高预测能力。最后,得出了一个基于蛋白结构相似性描述符和 32 维通用描述符的最佳 PCM 模型(R2 = 0.9897,Qtest2 = 0.7542),该模型具有强大的筛选选择性 HDAC 抑制剂的能力。
我们的最佳模型不仅可以预测每个 HDAC 同工型抑制剂的活性,还可以筛选和区分类选择性抑制剂,甚至更同工型选择性抑制剂,从而为发现或设计具有降低副作用的新型候选抗肿瘤药物提供了一种潜在途径。