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基于懒惰学习的定量构效关系分类研究用于筛选潜在的组蛋白去乙酰化酶8(HDAC8)抑制剂。

A lazy learning-based QSAR classification study for screening potential histone deacetylase 8 (HDAC8) inhibitors.

作者信息

Cao G P, Arooj M, Thangapandian S, Park C, Arulalapperumal V, Kim Y, Kwon Y J, Kim H H, Suh J K, Lee K W

机构信息

a Department of Biochemistry, Division of Applied Life Science (BK21 Plus Program) , Systems and Synthetic Agrobiotech Centre (SSAC), Plant Molecular Biology and Biotechnology Research Centre (PMBBRC), Research Institute of Natural Science (RINS), Gyeongsang National University , Jinju , Republic of Korea.

出版信息

SAR QSAR Environ Res. 2015;26(5):397-420. doi: 10.1080/1062936X.2015.1040453.

Abstract

Histone deacetylases 8 (HDAC8) is an enzyme repressing the transcription of various genes including tumour suppressor gene and has already become a target of human cancer treatment. In an effort to facilitate the discovery of HDAC8 inhibitors, two quantitative structure-activity relationship (QSAR) classification models were developed using K nearest neighbours (KNN) and neighbourhood classifier (NEC). Molecular descriptors were calculated for the data set and database compounds using ADRIANA.Code of Molecular Networks. Principal components analysis (PCA) was used to select the descriptors. The developed models were validated by leave-one-out cross validation (LOO CV). The performances of the developed models were evaluated with an external test set. Highly predictive models were used for database virtual screening. Furthermore, hit compounds were subsequently subject to molecular docking. Five hits were obtained based on consensus scoring function and binding affinity as potential HDAC8 inhibitors. Finally, HDAC8 structures in complex with five hits were also subjected to 5 ns molecular dynamics (MD) simulations to evaluate the complex structure stability. To the best of our knowledge, the NEC classification model used in this study is the first application of NEC to virtual screening for drug discovery.

摘要

组蛋白去乙酰化酶8(HDAC8)是一种抑制包括肿瘤抑制基因在内的多种基因转录的酶,已成为人类癌症治疗的靶点。为了促进HDAC8抑制剂的发现,使用K近邻算法(KNN)和邻域分类器(NEC)开发了两种定量构效关系(QSAR)分类模型。使用分子网络的ADRIANA.Code为数据集和数据库化合物计算分子描述符。主成分分析(PCA)用于选择描述符。通过留一法交叉验证(LOO CV)对开发的模型进行验证。使用外部测试集评估开发模型的性能。高预测性模型用于数据库虚拟筛选。此外,对命中化合物进行分子对接。基于一致性评分函数和结合亲和力获得了5种命中化合物作为潜在的HDAC8抑制剂。最后,还对与5种命中化合物形成复合物的HDAC8结构进行了5纳秒的分子动力学(MD)模拟,以评估复合物结构的稳定性。据我们所知,本研究中使用的NEC分类模型是NEC首次应用于药物发现的虚拟筛选。

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