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A Quantitative Structure-Activity Relationship (QSAR) Study of Anti-cancer Drugs

机译:抗癌药物的定量构效关系(QSAR)研究

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A very simple, strong, descriptive and interpretable model, based on a quantitative structure– activity relationship (QSAR), is developed using multiple linear regression approach and quantum chemical descriptors derived from HF theories using 6-31G* basis set for determination of the inhibit 50% of sensitive cell growth (pLD50) of some anti-cancer drugs. By molecular modeling and calculation of descriptors, two significant descriptors related to the pLD50 values of the anti-cancer drugs, were identified. A multiple linear regression (MLR) model based on 13 molecules as a training set has been developed for the prediction of the pLD50 of some anti-cancer drugs using these quantum chemical descriptors. The effects of these theoretical descriptors on the biological activity are discussed. A model with low prediction error and high correlation coefficient was obtained. This model was used for the prediction of the pLD50 values of some anti-cancer drugs. A multi-parametric equation containing maximum two descriptors at HF/6-31G* method with good statistical qualities (R2 train=0.915, Ftrain=54.43, Q2 LOO=0.891,R2 adj=0.899,Q2 LGO=0.879) was obtained by Multiple Linear Regression using stepwise method.
机译:一个基于定量结构-活性关系(QSAR)的非常简单,强大,描述性和可解释性的模型,是使用多重线性回归方法和使用6-31G *基集确定的抑制因子的HF理论推导的量子化学描述符开发的一些抗癌药物的敏感细胞生长(pLD50)的50%。通过分子建模和描述符的计算,鉴定了与抗癌药物的pLD50值相关的两个重要描述符。已经开发了一种基于13个分子作为训练集的多元线性回归(MLR)模型,用于使用这些量子化学描述符来预测某些抗癌药物的pLD50。讨论了这些理论描述符对生物活性的影响。获得了具有低预测误差和高相关系数的模型。该模型用于预测某些抗癌药物的pLD50值。通过多重分析获得了一个多参数方程,该方程在HF / 6-31G *方法下最多包含两个描述子,具有良好的统计质量(R2序列= 0.915,Ftrain = 54.43,Q2 LOO = 0.891,R2 adj = 0.899,Q2 LGO = 0.879)。使用逐步方法进行线性回归。

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