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通过对已知抑制剂进行定量构效关系建模、虚拟筛选和实验验证鉴定出的新型人类组蛋白去乙酰化酶(HDAC)抑制剂。

Novel inhibitors of human histone deacetylase (HDAC) identified by QSAR modeling of known inhibitors, virtual screening, and experimental validation.

作者信息

Tang Hao, Wang Xiang S, Huang Xi-Ping, Roth Bryan L, Butler Kyle V, Kozikowski Alan P, Jung Mira, Tropsha Alexander

机构信息

Lab. for Molecular Modeling, and Carolina Exploratory Center for Cheminformatics Res., Div. of Medicinal Chemistry and Natural Products, School of Pharmacy, UNC, Chapel Hill, North Carolina 27599-7360, USA.

出版信息

J Chem Inf Model. 2009 Feb;49(2):461-76. doi: 10.1021/ci800366f.

Abstract

Inhibitors of histone deacetylases (HDACIs) have emerged as a new class of drugs for the treatment of human cancers and other diseases because of their effects on cell growth, differentiation, and apoptosis. In this study we have developed several quantitative structure-activity relationship (QSAR) models for 59 chemically diverse histone deacetylase class 1 (HDAC1) inhibitors. The variable selection k nearest neighbor (kNN) and support vector machines (SVM) QSAR modeling approaches using both MolconnZ and MOE chemical descriptors generated from two-dimensional rendering of compounds as chemical graphs have been employed. We have relied on a rigorous model development workflow including the division of the data set into training, test, and external sets and extensive internal and external validation. Highly predictive QSAR models were generated with leave-one-out cross-validated (LOO-CV) q2 and external R2 values as high as 0.80 and 0.87, respectively, using the kNN/MolconnZ approach and 0.93 and 0.87, respectively, using the SVM/MolconnZ approach. All validated QSAR models were employed concurrently for virtual screening (VS) of an in-house compound collection including 9.5 million molecules compiled from the ZINC7.0 database, the World Drug Index (WDI) database, the ASINEX Synergy libraries, and other commercial databases. VS resulted in 45 structurally unique consensus hits that were considered novel putative HDAC1 inhibitors. These computational hits had several novel structural features that were not present in the original data set. Four computational hits with novel scaffolds were tested experimentally, and three of them were confirmed active against HDAC1, with IC50 values for the most active compound of 1.00 microM. The fourth compound was later identified to be a selective inhibitor of HDAC6, a Class II HDAC. Moreover, two of the confirmed hits are marketed drugs, which could potentially facilitate their further development as anticancer agents. This study illustrates the power of the combined QSAR-VS method as a general approach for the effective identification of structurally novel bioactive compounds.

摘要

组蛋白去乙酰化酶抑制剂(HDACIs)因其对细胞生长、分化和凋亡的影响,已成为一类用于治疗人类癌症和其他疾病的新型药物。在本研究中,我们针对59种化学结构多样的1类组蛋白去乙酰化酶(HDAC1)抑制剂开发了几种定量构效关系(QSAR)模型。采用了可变选择k近邻(kNN)和支持向量机(SVM)QSAR建模方法,使用从化合物二维化学结构图生成的MolconnZ和MOE化学描述符。我们依赖于严格的模型开发工作流程,包括将数据集划分为训练集、测试集和外部集,并进行广泛的内部和外部验证。使用kNN/MolconnZ方法生成的高度预测性QSAR模型,留一法交叉验证(LOO-CV)的q2值和外部R2值分别高达0.80和0.87;使用SVM/MolconnZ方法生成的模型,q2值和外部R2值分别为0.93和0.87。所有经过验证的QSAR模型同时用于对一个内部化合物库进行虚拟筛选(VS),该化合物库包含从ZINC7.0数据库、世界药物索引(WDI)数据库、ASINEX协同库和其他商业数据库编译的950万个分子。虚拟筛选产生了45个结构独特的一致性命中化合物,被认为是新型的假定HDAC1抑制剂。这些计算命中化合物具有一些原始数据集中不存在的新颖结构特征。对四个具有新颖骨架的计算命中化合物进行了实验测试,其中三个被证实对HDAC1具有活性,活性最高的化合物的IC50值为1.00 microM。第四个化合物后来被鉴定为II类HDAC即HDAC6的选择性抑制剂。此外,两个被证实的命中化合物是上市药物,这可能有助于它们作为抗癌药物的进一步开发。本研究说明了QSAR-VS组合方法作为有效鉴定结构新颖的生物活性化合物的通用方法的强大作用。

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