Agrawal Ritesh, Jain Pratima, Dikshit Subodh Narayan
Department of Chemistry, Government Shrimant Madhavrao Scindia, Model Science College, Jhansi Road, Gwalior, Madhya Pradesh 474001, India.
Comb Chem High Throughput Screen. 2012 Dec;15(10):849-76. doi: 10.2174/138620712803901090.
Three-dimensional pharmacophore hypothesis was established based on a set of known DPP-IV inhibitor using PharmaGist software program understanding the essential structural features for DPP-IV inhibitor. The various marketed or under developmental status, potential gliptins have been opted to build a pharmacophore model, e.g. Sitagliptin (MK- 0431), Saxagliptin, Melogliptin, Linagliptin (BI-1356), Dutogliptin, Carmegliptin, Alogliptin and Vildagliptin (LAF237). PharmaGist web based program is employed for pharmacophore development. Four points pharmacophore with the hydrogen bond acceptor (A), hydrophobic group (H), Spatial Features and aromatic rings (R) have been considered to develop pharmacophoric features by PharmaGist program. The best pharmacophore model bearing the Score 16.971, has been opted to screen on ZincPharmer database to derive the novel potential anti-diabetic ligands. The best pharmacophore bear various Pharmacophore features, including General Features 3, Spatial Features 1, Aromatic 1 and Acceptors 2. The PharmaGist employed algorithm to identify the best pharmacophores by computing multiple flexible alignments between the input ligands. The multiple alignments are generated by combining alignments pair-wise between one of the gliptin input ligands, which acts as pivot and the other gliptin as ligand. The resulting multiple alignments reveal spatial arrangements of consensus features shared by different subsets of input ligands. The best pharmacophore model has been derived using both pair-wise and multiple alignment methods, which have been weighted in Pharmacophore Generation process. The highest-scoring pharmacophore model has been selected as potential pharmacophore model. In conclusion, 3D structure search has been performed on the "ZincPharmer Database" to identify potential compounds that have been matched with the proposed pharmacophoric features. The 3D ZincPharmer Database has been matched with various thousands of Ligands hits. Those matches were screened through the RMSD and max hits per molecule. The physicochemical properties of various "ZincPharmer Database" screened ligands have been calculated by PaDELDescriptor software. The all "ZincPharmer Database" screened ligands have been filtered based on the Lipinski's rule-of-five criteria (i.e. Molecular Weight < 500, H-bond acceptor ≤ 10, H-bond donor ≤ 5, Log P ≤ 5) and were subjected to molecular docking studies to get the potential antidiabetic ligands. We have found various substituted as potential antidiabetic ligands, which can be used for further development of antidiabetic agents. In the present research work, we have covered rational of DPP-IV inhibitor based on Ligand-Based Pharmacophore detection, which is validated via the Docking interaction studies as well as Maximal Common Substructure (MCS).
基于一组已知的二肽基肽酶 - 4(DPP - IV)抑制剂,使用PharmaGist软件程序建立三维药效团假说,以了解DPP - IV抑制剂的基本结构特征。已选择各种已上市或处于研发阶段的潜在格列汀类药物来构建药效团模型,例如西他列汀(MK - 0431)、沙格列汀、美格列汀、利格列汀(BI - 1356)、度格列汀、卡格列汀、阿格列汀和维格列汀(LAF237)。基于网络的PharmaGist程序用于药效团开发。PharmaGist程序考虑了具有氢键受体(A)、疏水基团(H)、空间特征和芳香环(R)的四点药效团来开发药效团特征。已选择得分16.971的最佳药效团模型在ZincPharmer数据库上进行筛选,以获得新型潜在抗糖尿病配体。最佳药效团具有各种药效团特征,包括通用特征3、空间特征1、芳香特征1和受体特征2。PharmaGist采用算法通过计算输入配体之间的多个灵活比对来识别最佳药效团。多个比对是通过将作为枢轴的一种格列汀输入配体与另一种格列汀配体之间的成对比对组合生成的。所得的多个比对揭示了输入配体不同子集共享的共有特征的空间排列。最佳药效团模型是使用成对和多重比对方法得出的,这些方法在药效团生成过程中进行了加权。得分最高的药效团模型被选为潜在的药效团模型。总之,已在“ZincPharmer数据库”上进行三维结构搜索,以识别与所提出的药效团特征匹配的潜在化合物。三维ZincPharmer数据库已与数千种配体命中结果相匹配。通过均方根偏差(RMSD)和每个分子的最大命中次数对这些匹配结果进行筛选。通过PaDELDescriptor软件计算各种“ZincPharmer数据库”筛选的配体的物理化学性质。所有“ZincPharmer数据库”筛选的配体均根据Lipinski的五规则标准(即分子量<500、氢键受体≤10、氢键供体≤5、脂水分配系数log P≤5)进行过滤,并进行分子对接研究以获得潜在的抗糖尿病配体。我们发现了各种作为潜在抗糖尿病配体的取代物,可用于抗糖尿病药物的进一步开发。在本研究工作中,我们涵盖了基于配体的药效团检测的DPP - IV抑制剂原理,并通过对接相互作用研究以及最大公共子结构(MCS)进行了验证。