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1.
李博  周锐  何谷  郭丽  黄维 《化学学报》2013,71(10):1396-1403
采用分子对接、三维定量构效关系(3D-QSAR)和分子动力学方法研究了21个螺环吲哚类化合物与MDM2蛋白的相互作用, 并建立了相关预测模型. 比较分子场分析法(CoMFA)和比较分子相似性指数分析法(CoMSIA)模型的交互验证相关系数q2分别为0.573 和0.651, 非交互验证相关系数r2分别为0.948和0.980. 分子对接得到的结合模式与分子动力学模拟得到的结果一致, 结合模式表明该类螺环吲哚化合物主要通过疏水相互作用和氢键与MDM2结合. 基于上述相互作用模型设计并合成了6个新结构螺环吲哚化合物, 并在MDM2高表达的前列腺癌LNCaP细胞株上测定其活性, 结果表明化合物5, 6的半数抑制浓度均低于1μg·mL-1, 可作为新的抗肿瘤药物先导化合物进一步深入研究. 本研究对以MDM2为靶点的新结构螺环吲哚类抑制剂的开发提供了理论和实验依据.  相似文献   

2.
为了获得高活性、结构新颖的整合酶链转移(INST)抑制剂,本文采用Co MFA和Co MSIA两种方法对32个萘啶类INST抑制剂进行了三维定量构效关系研究,并建立了相关模型,其交叉验证系数分别为q~2=0. 809和q~2=0. 816,拟合验证系数分别为r~2=0. 998和r~2=0. 981,表明所建立的模型是可靠的且具有一定的预测能力。利用分子对接探讨小分子化合物与INST蛋白的相互作用模式,结果表明,萘啶类化合物主要通过疏水作用和氢键作用与INSTIs蛋白结合。最后通过分子动力学模拟进一步验证对接结果发现,对接的结合模式与分子动力学模拟得到的结果是一致的。本研究获得的综合模型和推论可以为开发有效的HIV INSTIs提供重要的理论信息。  相似文献   

3.
杨丹  徐兴莲  张荣红  周孟 《化学通报》2021,84(10):1092-1101
摘要 本文选取42个2,4-二氨基嘧啶类FAK小分子抑制剂,分别以比较分子场分析法(CoMFA)与相似性指数分析法(CoMSIA)构建3D-QSAR模型,评价模板分子、公共骨架点、最小能量优化参数、分子构象等因素对模型优化的影响。分析最优模型中立体场、静电场以及氢键等因素对抑制剂活性的影响,并应用分子对接分析该类抑制剂与FAK蛋白的相互作用。结果表明选择16号化合物作为模板分子,骨架A作为公共骨架点,最小能量优化参数中电荷、最大迭代系数、最低能量限定值分别为MMFF94、1000、0.01 Kcal/mol时所构建的模型最优。以CoMFA和CoMSIA构建的3D-QSAR模型的交叉验证系数(q2)分别为0.666和0.736,非交叉验证系数(R2)分别为0.990和0.989,表明此模型具有良好的预测能力。分子对接分析显示,其与FAK的氨基酸残基CYS502、ASP564形成了重要的氢键作用,并与周围残基形成了较强的疏水作用。通过3D-QSAR的构建与分子对接分析,可指导2,4-二氨基嘧啶类FAK小分子抑制剂的进一步结构优化设计。  相似文献   

4.
本文选取42个2,4-二氨基嘧啶类黏着斑激酶(FAK)小分子抑制剂,分别以比较分子场分析法(CoMFA)与相似性指数分析法(CoMSIA)构建3D-QSAR模型,评价模板分子、公共骨架点、最小能量优化参数、分子构象等因素对模型优化的影响。分析最优模型中立体场、静电场以及氢键等因素对抑制剂活性的影响,并应用分子对接分析该类抑制剂与FAK蛋白的相互作用。结果表明,选择化合物16作为模板分子,骨架A作为公共骨架点,最小能量优化参数中电荷、最大迭代系数、最低能量限定值分别为MMFF94、1000、0.01kcal/mol时所构建的模型最优。以CoMFA和CoMSIA构建的3D-QSAR模型的交叉验证系数(q~2)分别为0.666和0.736,非交叉验证系数(R~2)分别为0.990和0.989,表明此模型具有良好的预测能力。分子对接分析显示,其与FAK的氨基酸残基CYS502、ASP564形成了重要的氢键作用,并与周围残基形成了较强的疏水作用。通过3D-QSAR的构建与分子对接分析,可指导2,4-二氨基嘧啶类FAK小分子抑制剂的进一步结构优化设计。  相似文献   

5.
袁东峰  周颐  吴和珍  周珊珊 《化学通报》2022,85(11):1376-1386
本文选取了52个对Janus激酶2(JAK2)有抑制作用的小分子化合物,分别使用3D-QSAR中的CoMFA和CoMSIA方法构建了两个可靠的、具有预测能力的模型,并利用分子对接分析数据集化合物与JAK2蛋白的相互作用,表明化合物主要通过氢键和范德华作用与JAK2靶蛋白结合。根据3D-QSAR模型的分析结果,设计了40个化合物,利用构建的模型预测其抑制活性;使用软件预测了化合物的药代动力学(ADME)参数,开展分子对接模拟,最终选择化合物D01和D22与JAK2靶蛋白进行了分子动力学模拟研究,结果显示两个复合物结合构象稳定,与分子对接结果趋势一致。本研究的结果可以为JAK2抑制剂的研发提供一些新的思路,为临床开发此类药物提供理论支撑。  相似文献   

6.
磷酸肌醇3-激酶δ(PI3Kδ)参与慢性阻塞性肺疾病的炎性过程并且被鉴定为一个新的潜在治疗靶点。本文采用三维定量构效关系(3D-QSAR)、分子对接和分子动力学方法研究了47个吲唑类化合物与P13Kδ激酶的相互作用,并建立了相应的模型。其中,比较分子场分析(CoMFA)模型q~2=0.719,r~2=0.972;比较分子相似性指数分析(CoMSIA)模型q~2=0.649,r~2=0.983,表明所建的QSAR模型具有稳定可靠的预测能力。CoMFA和CoMSIA等势图形象地描述了不同的场效应对活性的影响,其中立体场、疏水场及氢键受体场对活性有较大的贡献。接着采用分子对接探索小分子化合物与P13Kδ的结合模式,结合模式显示吲唑类化合物主要通过氢键作用与疏水作用与P13Kδ紧密结合,并且通过分子动力学模拟进一步验证了对接结果。最后根据等势图、对接模式和分子动力学模拟获取的信息设计了8个化合物,研究表明它们均能与PI3Kδ较好结合。  相似文献   

7.
曾巧玲  刘鹰翔  李耿  马玉卓 《化学通报》2019,82(10):917-925
集落刺激因子-1受体激酶(CSF-1R)属于Ⅲ型受体酪氨酸激酶家族成员,其在调控单核巨噬细胞系中发挥重要作用。CSF-1R及其配体异常表达与肿瘤发展过程密切相关。因此,CSF-1R信号传导可成为抗肿瘤治疗的有吸引力的靶标。本文用比较分子场分析法(CoMFA)和比较分子相似性指数分析法(CoMSIA)研究了54个二氢嘧啶并[4,5-d]嘧啶类CSF-1R激酶抑制剂的三维定量构效关系(3D-QSAR)。基于配体叠合,CoMFA和CoMSIA模型的交叉验证系数(q2)分别为0.725和0.636,拟合验证系数(r2)分别为0.960和0.958,结果表明这两种模型均具有较好的预测能力。所建模型的等势图能直观反映分子不同取代基对活性的影响,其中立体场和疏水场对活性的贡献较大。通过分子对接研究显示,氨基酸残基Cys666、Asp796在配体和受体结合过程中产生作用,分子对接的结合模式与3D-QSAR得到的结果一致。这些信息为进一步优化CSF-1R激酶抑制剂提供了理论基础。  相似文献   

8.
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   

9.
刘景陶  吉文涛  王炳华 《化学通报》2020,83(12):1138-1148
Pim-1 激酶通过作用于多种信号通路或靶点影响肿瘤的发生发展,近年来被认为是肿瘤治疗的良好靶标。本文采用SYBYL-X2. 1. 1软件中的TopomerCoMFA、GALAHAD模块建立计算机模型,研究39个基于6-氮杂吲唑环的Pim-1激酶抑制剂的三维定量构效关系及药效团特征元素。结果显示,TopomerCoMFA建模所得交叉验证系数(q2)和相关系数(r2)分别为0. 756和0. 951,结合外部验证表明此3D-QSAR模型具有较高预测能力及较好的统计学稳定性,同时,用等势图描述了R1、R2基团处立体场、静电场对活性的具体影响。药效团研究结果表明,含氢键受体的芳香杂环母核结构,以及侧链取代基中含有芳香杂环结构对化合物的活性贡献较大。最后根据上述模型信息新设计了15个Pim-1激酶抑制剂分子并完成活性预测及分子对接模式研究,其中4个分子的预测pIC50高于建模分子中活性最好的化合物17,Surflex-Dock分析显示新设计分子均与Pim-1激酶形成较强氢键相互作用。基于6-氮杂吲唑环的Pim-1激酶抑制剂的3D-QSAR模型以及药效团模型可用于指导新型抑制剂的结构优化,为设计和开发具有较高活性的新型Pim-1激酶抑制剂提供有效帮助。  相似文献   

10.
集落刺激因子-1受体激酶(CSF-1R)属于Ⅲ型受体酪氨酸激酶家族成员,其在调控单核巨噬细胞系中发挥重要作用。CSF-1R及其配体异常表达与肿瘤发展过程密切相关。因此,CSF-1R信号传导可成为抗肿瘤治疗的有吸引力的靶标。本文用比较分子场分析法(Co MFA)和比较分子相似性指数分析法(Co MSIA)研究了54个二氢嘧啶并[4,5-d]嘧啶类CSF-1R激酶抑制剂的三维定量构效关系(3D-QSAR)。基于配体叠合,Co MFA和Co MSIA模型的交叉验证系数(q~2)分别为0. 725和0. 636,拟合验证系数(r~2)分别为0. 960和0. 958,结果表明这两种模型均具有较好的预测能力。所建模型的等势图能直观反映分子不同取代基对活性的影响,其中立体场和疏水场对活性的贡献较大。通过分子对接研究显示,氨基酸残基Cys666、Asp796在配体和受体结合过程中产生作用,分子对接的结合模式与3D-QSAR得到的结果一致。这些信息为进一步优化CSF-1R激酶抑制剂提供了理论基础。  相似文献   

11.
选取64个具有潜力的含磷嘧啶类细胞周期依赖性蛋白激酶(CDK9)小分子抑制剂,采用分子对接方法研究了该类小分子与CDK9的结合作用,结果表明,分子构象、氢键形成、疏水性和氨基酸残基Cys106在此类抑制剂与CDK9的结合过程中具有重要作用.在配体叠合的基础上,运用比较分子力场分析(Co MFA)、比较分子相似性指数分析(Co MSIA)和Topomer Co MFA(T-COMFA)研究了分子结构与抑制活性的关系,发现由训练集立体场、静电场和疏水场组合的Co MSIA模型为最优模型,其内部交叉验证相关系数(Q2=0.557)、非交叉验证相关系数(R2=0.959)和外部预测相关系数(r2=0.863)具有统计学意义,该模型的三维等值线图直观显示了化合物的活性与其三维结构的关系.根据这些结果设计了10个具有新结构的含磷嘧啶类化合物,分子对接和分子动力学模拟结果表明,新化合物和CDK9的结合模式与原化合物64相同,自由能分析从理论上证明了新化合物64d的CDK9抑制活性优于化合物64,并且显示含磷基团与残基Asp109的静电场能在化合物与CDK9作用过程中有重要作用.  相似文献   

12.
《结构化学》2021,40(5)
Acetaldehyde dehydrogenase 1A1 is a hopeful therapeutic target to ovarian cancer. In this present work, 3D-QSAR, molecular docking and molecular dynamics(MD) simulations were implemented on a series of quinoline-based ALDH1A1 inhibitors to investigate novel acetaldehyde dehydrogenase 1A1 inhibitors as anticancer adjuvant drugs for ovarian cancer. Two reliable CoMFA(Q~2 = 0.583, R~2 = 0.967) and CoMSIA(Q~2 = 0.640, R~2 = 0.977) models of ALDH1A1 inhibitors were established. Novel ALDH1A1 inhibitors were predicted by the 3D-QSAR models. Molecular docking reveals important residues for protein-compound interactions, and the results revealed ALDH1A1 inhibitors had stronger electrostatic interaction and binding affinity with key residues of protein, such as Phe171, Val174 and Cys303. Molecular dynamics simulations further verified the results of molecular docking. The above information provided significant guidance for the design of novel ALDH1A1 inhibitors.  相似文献   

13.
(V600E)B-RAF kinase is the most frequent onco-genic protein kinase mutation in melanoma and is a promising target to treat malignant melanoma. In this work, a molecular modeling study combining QM-polarized ligand docking, molecular dynamics, free energy calculation, and three-dimensional quantitative structure-activity relationships (3D-QSAR) was performed on a series of pyridoimidazolone compounds as the inhibitors of (V600E)B-RAF kinase to understand the binding mode between the inhibitors and (V600E)B-RAF kinase and the structural requirement for the inhibiting activity. 3D-QSAR models, including CoMFA and CoMSIA, were developed from the conformations obtained by QM-polarized ligand docking strategy. The obtained models have a good predictive ability in both internal and external validation. Furthermore, molecular dynamics simulation and free energy calculations were employed to determine the detailed binding process and to compare the binding mode of the inhibitors with different activities. The binding free energies calculated by MM/PBSA gave a good correlation with the experimental biological activity. The decomposition of free energies by MM/GBSA indicates the van der Waals interaction is the major driving force for the interaction between the inhibitors and (V600E)B-RAF kinase. The hydrogen bond interactions between the inhibitors with Glu501 and Asp594 of the (V600E)B-RAF kinase help to stabilize the DFG-out conformation. The results from this study can provide some insights into the development of novel potent (V600E)B-RAF kinase inhibitors.  相似文献   

14.
PI3Kα is one of the potential targets for novel anticancer drugs. In this study, a series of 2-difluoromethylbenzimidazole derivatives were studied based on the combination of molecular modeling techniques 3D-QSAR, molecular docking, and molecular dynamics. The results showed that the best comparative molecular field analysis (CoMFA) model had q2 = 0.797 and r2 = 0.996 and the best comparative molecular similarity indices analysis (CoMSIA) model had q2 = 0.567 and r2 = 0.960. It was indicated that these 3D-QSAR models have good verification and excellent prediction capabilities. The binding mode of the compound 29 and 4YKN was explored using molecular docking and a molecular dynamics simulation. Ultimately, five new PI3Kα inhibitors were designed and screened by these models. Then, two of them (86, 87) were selected to be synthesized and biologically evaluated, with a satisfying result (22.8 nM for 86 and 33.6 nM for 87).  相似文献   

15.
Janus kinase 3(JAK3) is a member of Janus kinase(JAK) family, and it represents a promising target for the treatment of immune diseases and cancers. However, no highly selective inhibitors of JAK3 have been developed. For discovering the binding mechanism of JAK3 and these inhibitors, a molecular modeling study combining molecular docking, three-dimensional quantitative structure-activity relationships(3D-QSAR), molecular dynamics and binding free energy calculations was performed on a series of pyrimidine-based compounds which could bind with the unique residue Cys909 of JAK3 kinase as the selective inhibitors of JAK3 in this work. The optimum Co MFA and Co MSIA models were generated based on the conformations obtained by molecular docking. The results showed that the models have satisfactory predicted capacity in both internal and external validation. Furthermore, a 50 ns molecular dynamics simulation was carried out to determine the detailed binding process of inhibitors with different activities. It was demonstrated that hydrogen bond interactions with Leu828, Glu903, Tyr904, Leu905 and Leu956 of JAK3 are significant for activity increase, and the Van der Waals interaction is mainly responsible for stable complex.  相似文献   

16.
17.
通过分子对接和三维定量构效关系(3D-QSAR)两种方法来确定两类马来酰胺类的糖原合成酶激酶-3β(GSK-3β)抑制剂的结合方式. 首先, 用分子对接确定抑制剂与GSK-3β结合模式及其相互作用; 然后用比较分子力场分析法(CoMFA)与比较分子相似性指数分析法(CoMSIA)对48个化合物做三维定量构效关系的分析. 两种方法得出的交互验证回归系数分别为0.669(CoMFA)和0.683(CoMSIA), 证明该模型具有很好的统计相关性, 同时也说明该模型具有较高的预测能力.根据该模型提供的信息, 设计出9个预测活性较好的分子.  相似文献   

18.
Upregulation of store-operated Ca2+ influx via ORAI1, an integral component of the CRAC channel, is responsible for abnormal cytokine release in active rheumatoid arthritis, and therefore ORAI1 has been proposed as an attractive molecular target. In this study, we attempted to predict the mechanical insights of ORAI1 inhibitors through pharmacophore modelling, 3D-QSAR, molecular docking and free energy analysis. Various hypotheses of pharmacophores were generated and from that, a pharmacophore hypothesis with two hydrogen bond acceptors, one hydrogen bond donor and two aromatic rings (AADRR) resulted in a statistically significant 3D-QSAR model (r2 = 0.84 and q2 = 0.74). We believe that the obtained statistical model is a reliable QSAR model for the diverse dataset of inhibitors against the IL-2 production assay. The visualization of contours in active and inactive compounds generated from the 3D-QSAR models and molecular docking studies revealed major interaction with GLN108, HIS113 and ASP114, and interestingly, these residues are located near the Ca2+ selectivity filter region. Free energy binding analysis revealed that Coulomb energy, van der Waals energy and non-polar solvation terms are more favourable for ligand binding. Thus, the present study provides the physical and chemical requirements for the development of novel ORAI1 inhibitors with improved biological activity.  相似文献   

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