首页> 外文期刊>Iranian Journal of Pharmaceutical Research >Application of Genetic Algorithms for Pixel Selection in MIA-QSAR Studies on Anti-HIV HEPT Analogues for New Design Derivatives
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Application of Genetic Algorithms for Pixel Selection in MIA-QSAR Studies on Anti-HIV HEPT Analogues for New Design Derivatives

机译:遗传算法在MIA-QSAR研究中针对新设计​​衍生物的抗HIV HEPT类似物进行像素选择的应用

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Quantitative structure-activity relationship (QSAR) analysis has been carried out with a series of 107 anti-HIV HEPT compounds with antiviral activity, which was performed by chemometrics methods. Bi-dimensional images were used to calculate some pixels and multivariate image analysis was applied to QSAR modelling of the anti-HIV potential of HEPT analogues by means of multivariate calibration, such as principal component regression (PCR) and partial least squares (PLS). In this paper, we investigated the effect of pixel selection by application of genetic algorithms (GAs) for the PLS model. GAs is very useful in the variable selection in modelling and calibration because of the strong effect of the relationship between presence/absence of variables in a calibration model and the prediction ability of the model itself. The subset of pixels, which resulted in the low prediction error, was selected by genetic algorithms. The resulted GA-PLS model had a high statistical quality (RMSEP = 0.0423 and R2 = 0.9412) in comparison with PCR (RMSEP = 0.4559, R2 = 0.7929) and PLS (RMSEP = 0.3275 and R2 = 0.0.8427) for predicting the activity of the compounds. Because of high correlation between values of predicted and experimental activities, MIA-QSAR proved to be a highly predictive approach.
机译:使用化学计量学方法对107种具有抗病毒活性的抗HIV HEPT化合物进行了定量构效关系(QSAR)分析。使用二维图像来计算一些像素,并通过多元校准,例如主成分回归(PCR)和偏最小二乘(PLS),将多元图像分析应用于HEPT类似物的抗HIV潜力的QSAR建模。在本文中,我们研究了通过遗传算法(GAs)对PLS模型进行像素选择的效果。由于在校准模型中变量存在与否与模型本身的预测能力之间的关系具有强烈的影响,GA在建模和校准中的变量选择中非常有用。通过遗传算法选择了导致低预测误差的像素子集。与PCR(RMSEP = 0.4559,R2 = 0.7929)和PLS(RMSEP = 0.3275和R2 = 0.0.8427)相比,所得的GA-PLS模型具有较高的统计质量(RMSEP = 0.0423和R2 = 0.9412)的化合物。由于预测活动值与实验活动值之间具有高度相关性,因此MIA-QSAR被证明是一种高度预测性的方法。

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