Martinčič Rok, Kuzmanovski Igor, Wagner Alain, Novič Marjana
National Institute of Chemistry, Hajdrihova 19, 1001 Ljubljana, Slovenia.
Institute of Chemistry, Ss. Cyril and Methodius University in Skopje, Arhimedova 5, 1000 Skopje, Macedonia.
Anal Chim Acta. 2015 Apr 8;868:23-35. doi: 10.1016/j.aca.2015.01.050. Epub 2015 Feb 7.
Antioxidants are important for maintaining the appropriate balance between oxidizing and reducing species in the body and thus preventing oxidative stress. Many natural compounds are being screened for their possible antioxidant activity. It was found that a mushroom pigment Norbadione A, which is a pulvinic acid derivative, shows an antioxidant activity; the same was found for other pulvinic acid derivatives and structurally related coumarines. Based on the results of in vitro studies performed on these compounds as a part of this study quantitative structure-activity relationship (QSAR) predictive models were constructed using multiple linear regression, counter-propagation artificial neural networks and support vector regression (SVR). The models have been developed in accordance with current QSAR guidelines, including the assessment of the models applicability domains. A new approach for the graphical evaluation of the applicability domain for SVR models is suggested. The developed models show sufficient predictive abilities for the screening of virtual libraries for new potential antioxidants.
抗氧化剂对于维持体内氧化和还原物质之间的适当平衡从而预防氧化应激至关重要。目前正在筛选许多天然化合物以检测其可能的抗氧化活性。研究发现,一种蘑菇色素诺巴二酮A(一种联苯甲酰酸衍生物)具有抗氧化活性;其他联苯甲酰酸衍生物和结构相关的香豆素也有同样的发现。作为本研究的一部分,基于对这些化合物进行的体外研究结果,使用多元线性回归、反向传播人工神经网络和支持向量回归(SVR)构建了定量构效关系(QSAR)预测模型。这些模型是根据当前的QSAR指南开发的,包括对模型适用范围的评估。提出了一种用于图形评估SVR模型适用范围的新方法。所开发的模型在筛选虚拟库中的新潜在抗氧化剂方面显示出足够的预测能力。