Lagunin A A, Zakharov A V, Filimonov D A, Poroikov V V
Institute of Biomedical Chemistry, Russian Academy of Medical Sciences, Moscow, Russia.
SAR QSAR Environ Res. 2007 May-Jun;18(3-4):285-98. doi: 10.1080/10629360701304253.
A new QSAR approach based on a Quantitative Neighbourhoods of Atoms description of molecular structures and self-consistent regression was developed. Its prediction accuracy, advantages and limitations were analysed from three sets of published experimental data on acute toxicity: 56 phenylsulfonyl carboxylates for Vibrio fischeri; 65 aromatic compounds for the alga Chlorella vulgaris and 200 phenols for the ciliated protozoan Tetrahymena pyriformis. According to our findings, the proposed approach provides a good correlation and prediction accuracy (r(2) = 0.908 and Q(2) = 0.866) for the set of 56 phenylsulfonyl carboxylates and the 65 aromatic compounds tested on C. vulgaris (r(2) = 0.885, Q(2) = 0.849). For the 200 phenols tested on T. pyriformis, the prediction accuracy was r(2) = 0.685 and Q(2) = 0.651. This is at least as good as the best results obtained with the other QSAR methods originally used on the same data sets.
基于分子结构的定量原子邻域描述和自洽回归,开发了一种新的定量构效关系(QSAR)方法。从三组已发表的急性毒性实验数据中分析了该方法的预测准确性、优点和局限性:用于费氏弧菌的56种苯磺酰羧酸盐;用于普通小球藻的65种芳香族化合物;以及用于梨形四膜虫的200种酚类。根据我们的研究结果,对于在普通小球藻上测试的56种苯磺酰羧酸盐和65种芳香族化合物,所提出的方法具有良好的相关性和预测准确性(r(2) = 0.908,Q(2) = 0.866)(r(2) = 0.885,Q(2) = 0.849)。对于在梨形四膜虫上测试的200种酚类,预测准确性为r(2) = 0.685,Q(2) = 0.651。这至少与最初用于相同数据集的其他QSAR方法所获得的最佳结果相当。