QSAR modeling of anti-HIV activities of alkenyldiarylmethanes using topological and physicochemical descriptors.

Drug design and discovery Pub Date : 2003-01-01
J Thomas Leonard, Kunal Roy
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引用次数: 0

Abstract

Three series of anti-HIV data (reverse transcriptase inhibitory activity, cytopathicity data, and cytotoxicity data) of alkenyldiarylmethanes were modeled with physicochemical, topological and structural descriptors by multiple regression analysis using principal component factor analysis as the data pre-processing step. Molar refractivity was found to be a significant contributor in modeling all three data sets. Apart from this, partition coefficient, E-state index, valence connectivity and indicator parameters were important in modeling different activity series. The final relations were of moderate to good quality as evidenced from regression statistics (R2 values ranging 66-75%) and leave-one-out cross validation data (Q2 values ranging 54-70%).

使用拓扑和物理化学描述符的烯基二芳基甲烷抗hiv活性的QSAR建模。
以主成分因子分析为数据预处理步骤,利用理化、拓扑和结构描述符对烯基二乙基甲烷的3个系列抗hiv数据(逆转录酶抑制活性、细胞致病性和细胞毒性数据)进行多元回归建模。摩尔折射率被发现是建模所有三个数据集的重要贡献者。此外,划分系数、e态指数、价连通性和指标参数对不同活性序列的建模也很重要。从回归统计数据(R2值为66-75%)和留一交叉验证数据(Q2值为54-70%)可以证明,最终的关系是中等到良好的。
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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