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首页> 外文期刊>Medicinal chemistry >Application of artificial neural networks for the prediction of antitumor activity of a series of acridinone derivatives.
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Application of artificial neural networks for the prediction of antitumor activity of a series of acridinone derivatives.

机译:人工神经网络在一系列of啶酮衍生物抗肿瘤活性预测中的应用。

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摘要

Artificial neural networks (ANNs) have been applied for the quantitative structure-activity relationships (QSAR) studies of antitumor activity of acridinone derivatives. Molecular modeling studies were performed with the use of HyperChem and Dragon computer programs and molecular geometry optimization using MM+ molecular mechanics and semi-empirical AM1 method, and several molecular descriptors of agents were obtained. A high correlation resulted between the ANN predicted antitumor activity and that one from biological experiments for the data used in the testing set of acridinones was obtained with correlation coefficient on the level of 0.9484. Moreover, the sensitivity analysis indicated that molecular parameters describing geometrical properties as well as lipophilicity of acridinone derivative molecule are important for acridinones antitumor activity.
机译:人工神经网络(ANNs)已被用于定量研究cri啶酮衍生物抗肿瘤活性的定量构效关系(QSAR)。使用HyperChem和Dragon计算机程序进行了分子建模研究,并使用MM +分子力学和半经验AM1方法进行了分子几何优化,并获得了试剂的几个分子描述子。在ANN预测的抗肿瘤活性之间存在高度相关性,并且从生物学实验中获得了一套用于cri啶酮测试数据的数据,相关系数为0.9484。此外,敏感性分析表明,描述a啶酮衍生物分子的几何性质以及亲脂性的分子参数对于a啶酮的抗肿瘤活性很重要。

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