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QSAR study of heparanase inhibitors activity using artificial neural networks and Levenberg-Marquardt algorithm.

机译:使用人工神经网络和Levenberg-Marquardt算法对乙酰肝素酶抑制剂活性进行QSAR研究。

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摘要

A linear and non-linear quantitative structure-activity relationship (QSAR) study is presented for modeling and predicting heparanase inhibitors' activity. A data set that consisted of 92 derivatives of 2,3-dihydro-1,3-dioxo-1H-isoindole-5-carboxylic acid, furanyl-1,3-thiazol-2-yl and benzoxazol-5-yl acetic acids is used in this study. Among a large number of descriptors, four parameters classified as physico-chemical, topological and electronic indices are chosen using stepwise multiple regression technique. The artificial neural networks (ANNs) model shows superiority over the multiple linear regressions (MLR) by accounting 87.9% of the variances of antiviral potency of the heparanase inhibitors. This paper focuses on investigating the role of weight update functions in developing ANNs. Levenberg-Marquardt (L-M) algorithm shows a better performance compared with basic back propagation (BBP) and conjugate gradient (CG) algorithms. The accuracy of 4-3-1 L-M ANN model was illustrated using leave-one-out(LOO), leave-multiple-out (LMO) cross-validations and Y-randomization. The mean effect of descriptors and sensitivity analysis show that log P is the most important parameter affecting the inhibitory behavior of the molecules.
机译:提出了线性和非线性定量构效关系(QSAR)研究,用于建模和预测乙酰肝素酶抑制剂的活性。由2,3-二氢-1,3-二氧杂-1H-异吲哚-5-羧酸,呋喃基-1,3-噻唑-2-基和苯并恶唑-5-基乙酸的92个衍生物组成的数据集是在这项研究中使用。在大量的描述符中,使用逐步多元回归技术选择了分类为物理化学,拓扑和电子指标的四个参数。人工神经网络(ANN)模型通过说明乙酰肝素酶抑制剂的抗病毒效力方差的87.9%,显示出优于多元线性回归(MLR)的优势。本文重点研究权重更新功能在开发人工神经网络中的作用。与基本反向传播(BBP)和共轭梯度(CG)算法相比,Levenberg-Marquardt(L-M)算法显示出更好的性能。使用留一法(LOO),留多法(LMO)交叉验证和Y随机化说明了4-3-1 L-M ANN模型的准确性。描述子和敏感性分析的平均作用表明,log P是影响分子抑制行为的最重要参数。

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