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首页> 外文期刊>International Journal of Quantum Chemistry >Quantitative structure-antibacterial activity relationship modeling using a combination of piecewise linear regression-discriminant analysis (I): Quantum chemical, topographic, and topological descriptors
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Quantitative structure-antibacterial activity relationship modeling using a combination of piecewise linear regression-discriminant analysis (I): Quantum chemical, topographic, and topological descriptors

机译:使用分段线性回归-判别分析的组合进行定量结构-抗菌活性关系建模(I):量子化学,拓扑和拓扑描述符

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Time-dependent antibacterial activity of 2-furylethylenes using quantum chemical, topographic, and topological indices is described as inhibition of respiration in E. coli. A QSAR strategy based on the combination of the linear piecewise regression and the discriminant analysis is used to predict the biological activity values of strong and moderates antibacterial furylethylenes. The breakpoint in the values of the biological activity was detected. The biological activities of the compounds are described by two linear regression equations. A discriminant analysis is carried out to classify the compounds in one of the biological activity two groups. The results showed using different kind of descriptors were compared. In all cases the piecewise linear regression-discriminant analysis (PLR-DA) method produced significantly better QSAR models than the linear regression analysis. The QSAR models were validated using an external validation previously extracted from the original data. A prediction of reported antibacterial activity analysis was carried out showing dependence between the probability of a good classification and the experimental antibacterial activity. Statistical parameters showed the quality of quantum-chemical descriptors based models prediction in LDA having an accuracy of 0.9 and a C of 0.9. The best PLR-DA model explains more than 92% of the variance of experimental activity. Models with best prediction results were those based on quantum-chemical descriptors. An interpretation of quantum-chemical descriptors entered in models was carried out. (C) 2008 Wiley Periodicals, Inc.
机译:使用量子化学,拓扑和拓扑指数的2-呋喃乙烯的时间依赖性抗菌活性被描述为对大肠杆菌中呼吸的抑制。基于线性分段回归和判别分析相结合的QSAR策略可用于预测强和中度抗菌呋喃乙烯的生物活性值。检测到生物活性值的断点。化合物的生物活性由两个线性回归方程式描述。进行判别分析以将化合物分为一组生物活性中的一组。结果表明使用了不同种类的描述符进行了比较。在所有情况下,分段线性回归判别分析(PLR-DA)方法产生的QSAR模型均明显优于线性回归分析。使用先前从原始数据中提取的外部验证来验证QSAR模型。进行了报道的抗菌活性分析的预测,显示出良好分类的可能性与实验抗菌活性之间的依赖性。统计参数表明,LDA中基于量子化学描述符的模型预测的质量具有0.9的准确性和0.9的C。最好的PLR-DA模型可以解释超过92%的实验活动差异。具有最佳预测结果的模型是基于量子化学描述符的模型。对输入模型的量子化学描述符进行了解释。 (C)2008 Wiley期刊公司

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