Kumar Sivakumar Prasanth, Rawal Rakesh M, Pandya Himanshu A, Jasrai Yogesh T
a Department of Bioinformatics , Applied Botany Centre (ABC), Gujarat University , Ahmedabad , Gujarat , India and.
b Division of Medicinal Chemistry and Pharmacogenomics, Department of Cancer Biology , The Gujarat Cancer and Research Institute , Ahmedabad , Gujarat , India.
J Recept Signal Transduct Res. 2016;36(2):189-206. doi: 10.3109/10799893.2015.1075040. Epub 2015 Sep 29.
It is a conventional practice to exclude molecules with identical biological endpoints to avoid bias in the resulting hypothesis model. Despite the diverse chemical functionalities, the receptor interactions of such molecules are often unexplored. The present study motivates the selection of these molecules diversified by single atom or functional group compared to internal molecules as external set and helps in the understanding of corresponding effects toward receptor interactions and biological endpoints. Applied on anthranilamide-series of factor Xa analogs, the inhibitory activities were correlated (r(2) = 0.99) and validated (q(2) = 0.68) with distance-based pharmacophore descriptors using support vector machine. The selected external set molecules exhibited better prediction accuracy by securing activities less than one residual threshold. The effect on inhibitory activity was assessed by the examination of pharmacophore-similarity and its interactions with key residues of Human factor Xa enzyme using molecular docking approach. Furthermore, qualitative pharmacophore models were developed on the subset of molecular dataset divided as most actives, moderately actives and least actives, to recognize crucial activity governing pharmacophore features. The outcome of this study will bring new insights about the requirements of pharmacophore features and prioritizes its selection in the design and optimization of potent Xa inhibitors.
为避免在所得假设模型中产生偏差,排除具有相同生物学终点的分子是一种常规做法。尽管这些分子具有多样的化学官能团,但其与受体的相互作用往往尚未被探索。本研究促使选择与内部分子相比由单原子或官能团多样化的这些分子作为外部集,并有助于理解其对受体相互作用和生物学终点的相应影响。将其应用于邻氨基苯甲酰胺系列的Xa因子类似物,使用支持向量机,抑制活性与基于距离的药效团描述符相关(r(2) = 0.99)并得到验证(q(2) = 0.68)。所选的外部集分子通过确保活性低于一个残差阈值表现出更好的预测准确性。通过使用分子对接方法检查药效团相似性及其与人类Xa因子酶关键残基的相互作用,评估对抑制活性的影响。此外,在分为最具活性、中等活性和最低活性的分子数据集子集上开发定性药效团模型,以识别决定活性的关键药效团特征。本研究的结果将为药效团特征的要求带来新的见解,并在强效Xa抑制剂的设计和优化中优先选择药效团。