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1.
几种改进的CoMFA方法比较研究血小板活化因子拮抗剂   总被引:6,自引:1,他引:6  
聂晶  董喜成  潘家祜 《化学学报》2003,61(7):1129-1135
由于传统的比较分子场分析(CoMFA)方法本身存在一些缺陷,使得分子的叠合 规则以及叠合分子的空间取向和空间位置等因素对q~2的影响很大,因此相继提出 了几种改进的CoMFA方法。为了优化CoMFA结果,应用传统的CoMFA方法和交叉验证 的R~2引导的区域选择法(q~2-GRS)、全取向搜索法(AOS)、全空间搜索法(APS) 以及比较分子相似性指数(CoMSIA)等四种改进的CoMFA方法,对18个pinusolide类 衍生物这类新发现的血小板活化因子(PAF)拮抗剂进行了比较研究。结果表明四 种改进的CoMFA方法得到的q~2值均比传统CoMFA的高。q~2-GRS方法得到的q~2值有 所提高,但综合结果并不理想,AOS与APS得到的q~2较为理想,而在CoMSIA中, q~2几乎不受空间取向或空间位置的影响。同时我们引人基于样本的偏最小二乘法 (SAMPLS)取代原AOS/APS程序中的传统PLS进行统计分析,明显提高了其运行速 度。最后,根据q~2最高的CoMFA模型和CoMSIA模型设计了几个预测活性更高的 pinusolide类似物。  相似文献   
2.
朱丽荔  徐筱杰 《物理化学学报》2002,18(12):1087-1092
采用两种分子场分析方法即比较分子场分析法(CoMFA)和比较分子相似因子分析法(CoMSIA)进行了37个褪黑激素受体拮抗剂的构效关系研究.计算结果表明,两种方法得到的构效关系模型都具有较好的预测能力.在计算中,还考察了不同格点距离和电荷计算方法对构效关系模型的影响.通过分析分子场等值面图在空间的分布,可以观察到叠合分子周围分子场特征对化合物活性的影响,为设计新的褪黑激素拮抗剂提供了一些理论依据.  相似文献   
3.
3 D-QSAR Analysis of Agonists of nAChRs: Epibatidine Analogues   总被引:1,自引:0,他引:1  
A 3 D-QSAR about nAChRs agonists epibatidine analogues was performed using theCoMFA and CoMSIA. The correlation coefficients were R2cv = 0.546, R2cv = 0.907 in CoMFA andR2cv = 0.655, R2,~ = 0.962 in CoMSIA of the final model. The prediction using the final models tothe test set was r2 = 0.675 in CoMFA and r2 = 0.462 in CoMSIA. This model will be useful in thedesign of novel compounds with high affinity.  相似文献   
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Polybrominated diphenyl ethers (PBDEs) have become ubiquitous contaminations due to their use as flame retardants. The structural similarity of PBDE to some dioxin-like compounds suggested that they may share similar toxicological effects: they might activate the aryl hydrocarbon receptor (AhR) signal transduction pathway and thus might have adverse effects on wildlife and humans. In this study, in silico computational workflow combining molecular docking and three-dimensional quantitative structure–activity relationship (3D-QSAR) was performed to investigate the binding interactions between PBDEs and AhR and the structural features affecting the AhR binding affinity of PBDE. The molecular docking showed that hydrogen-bond and hydrophobic interactions were the major driving forces for the binding of ligands to AhR, and several key amino acid residues were also identified. The CoMSIA model was developed from the conformations obtained from molecular docking and exhibited satisfactory results as q 2 of 0.605 and r 2 of 0.996. Furthermore, the derived model had good robustness and statistical significance in both internal and external validations. The 3D contour maps generated from CoMSIA provided important structural features influence the binding affinity. The obtained results were beneficial to better understand the toxicological mechanism of PBDEs.  相似文献   
7.
SGLT2 has become a target of therapeutic interest in diabetes research. CoMFA and CoMSIA studies were performed on C-aryl glucoside SGLT2 inhibitors (180 analogues) as potential anti-diabetic agents. Three different alignment strategies were used for the compounds. The best CoMFA and CoMSIA models were obtained by means of Distill rigid body alignment of training and test sets, and found statistically significant with cross-validated coefficients (q 2) of 0.602 and 0.618, respectively, and conventional coefficients (r 2) of 0.905 and 0.902, respectively. Both models were validated by a test set of 36 compounds giving satisfactory predicted correlation coefficients (r 2 pred) of 0.622 and 0.584 for CoMFA and CoMSIA models, respectively. A comparison was made with earlier 3D QSAR study on SGLT2 inhibitors, which shows that our 3D QSAR models are better than earlier models to predict good inhibitory activity. CoMFA and CoMSIA models generated in this work can provide useful information to design new compounds and helped in prediction of activity prior to synthesis.  相似文献   
8.
In the present work, three-dimensional quantitative structure–activity relationship (3-D QSAR) studies on a set of 70 anthranilimide compounds has been performed using docking-based as well as substructure-based molecular alignments. This resulted in the selection of more statistically relevant substructure-based alignment for further studies. Further, molecular models with good predictive power were derived using CoMFA (r 2?=?0.997; Q 2?=?0.578) and CoMSIA (r 2?=?0.976; Q 2?=?0.506), for predicting the biological activity of new compounds. The so-developed contour plots identified several key features of the compounds explaining wide activity ranges. Based on the information derived from the CoMFA contour maps, novel leads were proposed which showed better predicted activity with respect to the already reported systems. Thus, the present study not only offers a highly significant predictive QSAR model for anthranilimide derivatives as glycogen phosphorylase (GP) inhibitors which can eventually assist and complement the rational drug-design attempts, but also proposes a highly predictive pharmacophore model as a guide for further development of selective and more potent GP inhibitors as anti-diabetic agents.  相似文献   
9.
采用比较分子场分析法(comparative molecular field analysis,CoMFA)和比较分子相似性指数分析法(comparative similarity indices analysis,CoMSIA),系统研究了57个CDK4酶抑制剂的三维定量结构-活性关系.所建立CoMFA和CoMSIA模型的交叉验证系数q^2值分别为0.656和0.811,非交叉验证相关系数r^2分别为0.954和0.969,都具有较好的预测能力.CoMFA和CoMSIA模型的三维等值图直观地解释了化合物的构效关系,为进一步研究提供了重要依据.  相似文献   
10.
采用比较分子力场分析法(CoMFA)和比较分子相似性指数分析法(CoMSIA)对34个顺式新烟碱类衍生物的杀虫活性进行三维定量构效关系(3D-QSAR)研究.构建的CoMFA和CoMSIA模型的交叉验证系数rc2v分别为0.877和0.862,非交叉验证系数r2分别为0.970和0.961,表明建立的3D-QSAR模型具有较好的统计相关性和预测能力.一系列的研究结果指出:立体场、静电场和氢键受体场是描述顺式新烟碱类衍生物的化学结构与杀虫活性关系的重要参数;在咪唑啉环的3,4位不宜引入较大的取代基,提高咪唑啉环的电负性或增强硝基一个端氧的氢键受体特征有利于提高顺式新烟碱类衍生物的杀虫活性.  相似文献   
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