QSAR Model for Androgen Receptor Antagonism - Data from CHO Cell Reporter Gene Assays

G. E. Jensen, N. Nikolov, Karin Dreisig, A. Vinggaard, J. Russel, Niemelä
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引用次数: 3

Abstract

For the development of QSAR models for Androgen Receptor (AR) antagonism, a training set based on reporter gene data from Chinese hamster ovary (CHO) cells was constructed. The training set is composed of data from the literature as well as new data for 51 cardiovascular drugs screened for AR antagonism in our laboratory. The data set represents a wide range of chemical structures and various functions. Twelve percent of the screened drugs were AR antagonisms; three out of six statins showed AR antagonism, two showed cytotoxicity and one was negative. The newly identified AR antagonisms are: Lovastatin, Simvastatin, Mevastatin, Amiodaron, Docosahexaenoic acid and Dilazep. A total of 874 (231 positive, 643 negative) chemicals constitute the training set for the model. The Case Ultra expert system was used to construct the QSAR model. The model was cross-validated (leave-groups-out) with a concordance of 78.4%, a specificity of 86.1% and a sensitivity of 57.9%. The model was run on a set of 51,240 EINECS chemicals, and 74% were within the domain of the model. Approximately 9.2% of the chemicals in domain of the model were predicted active for AR antagonism. Case Ultra identified common alerts among different chemicals. By comparing biophores (alerts in positive chemicals) and biophobes (alerts in negative chemicals), it appears that chlorine (Cl) and bromine (Br) enhance AR antagonistic effect whereas nitrogen (N) seems to decrease the effect. A specific study of benzophenones and benzophenone derivatives indicate that a radical with a “high” number of atoms in 4-position and/or other positions generally decrease the anti-androgenic effect.
雄激素受体拮抗的QSAR模型——来自CHO细胞报告基因测定的数据
为建立雄激素受体(AR)拮抗QSAR模型,构建了基于中国仓鼠卵巢(CHO)细胞报告基因数据的QSAR训练集。训练集由文献数据和我们实验室筛选的51种抗AR心血管药物的新数据组成。该数据集代表了广泛的化学结构和各种功能。12%的筛选药物是AR拮抗剂;6种他汀类药物中3种具有AR拮抗作用,2种具有细胞毒性,1种呈阴性。新发现的AR拮抗剂有:洛伐他汀、辛伐他汀、美伐他汀、胺碘龙、二十二碳六烯酸和地拉西普。共有874种化学物质(231种阳性物质,643种阴性物质)构成了模型的训练集。利用Case Ultra专家系统构建QSAR模型。该模型经交叉验证,一致性为78.4%,特异性为86.1%,敏感性为57.9%。该模型在51,240种EINECS化学物质上运行,74%在模型的范围内。该模型域中约有9.2%的化学物质被预测具有AR拮抗活性。Case Ultra确定了不同化学品之间的常见警报。通过比较生物孔(阳性化学物质的警报)和生物恐虫(阴性化学物质的警报),氯(Cl)和溴(Br)似乎增强了AR拮抗作用,而氮(N)似乎降低了这种作用。对二苯甲酮和二苯甲酮衍生物的具体研究表明,在4位和/或其他位置具有“高”原子数的自由基通常会降低抗雄激素作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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