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Cheminformatics (QSAR) study on HIV-1 protease inhibitors.

机译:化学信息学(QSAR)研究HIV-1蛋白酶抑制剂。

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Quantitative Structure Activity Relationship (QSAR) studies are successfully used in drug design and development. In these studies, the structure of a molecule is described by the physico-chemical parameters (descriptors) and a mathematical model is derived to correlate it with biological activity. Cheminformatics approach on the other hand is used to design, organize, retrieve and disseminate chemical information. In the present study, a novel approach based on Cheminformatics analysis using simple QSAR models was used for the first time to understand the inherent relationships between the HIV protease (HIV-PR) inhibitors and their biological activity. Such studies provide mechanistic insight about inhibitor-protein interactions and help in the design of better inhibitors.; HIV-PR is a viral protein of HIV, which is the causative agent of Acquired immunodeficiency syndrome (AIDS) and its related disorders. Several HIV-PR inhibitors (HIV-PIs) which are derived from peptidic and non-peptidic analogs have been approved by US-FDA. They have reduced the viral load sufficiently but have been associated with poor pharmacokinetics, long-term toxicity, drug resistance, and most importantly mutation. Therefore, there is a need to develop new inhibitors that are less toxic and active against wild type and drug resistant mutant viruses. A Cheminformatics (QSAR) analysis was conducted on several classes of HIV-PIs to understand the property of a potent inhibitor and its mechanism of action.; Chemical data pertaining to structure-activity relationships (SAR) were collected and organized from the literature and QSAR models were derived, Cheminformatics analysis was conducted, and hidden chemical information was retrieved. Results are presented for five different datasets of HIV-PIs, both peptidic and non-peptidic analog. Three different classes of pyranone derivatives (pyranone, cycloalkyl-pyranone and dihydro-pyranone) and cyclic urea derivatives represent non-peptidic analogs and indinavir based derivatives represents peptidic analogs. A molecular modeling (docking) study was conducted on the novel compounds designed in silico based on 2D Cheminformatics (QSAR) analysis to visualize and understand the 3D interaction pattern of these compounds with HIV-PR. A study of the Indinavir based analog was also conducted to define the mutation pattern due to these analogs quantitatively. Finally, large comprehensive datasets for all three classes of pyranone based inhibitors, mutated HIV-PR proteins were prepared, and their descriptor values were calculated. These datasets are useful resources for further research.; The Cheminformatics (QSAR) models were successful in predicting the improved structure of the inhibitor molecule, to quantitatively parameterize the characteristic of inhibitor and the protein (HIV-PR) and to interpret the improved structure in terms of favorable inhibitor-protein interactions.
机译:定量结构活性关系(QSAR)研究已成功用于药物设计和开发。在这些研究中,分子的结构由理化参数(描述符)描述,并推导了数学模型以将其与生物活性相关联。另一方面,化学信息学方法用于设计,组织,检索和传播化学信息。在本研究中,首次使用基于化学信息学分析的简单QSAR模型的新方法来了解HIV蛋白酶(HIV-PR)抑制剂与其生物学活性之间的内在联系。这些研究提供了有关抑制剂-蛋白质相互作用的机制性见解,并有助于设计更好的抑制剂。 HIV-PR是HIV的病毒蛋白,是获得性免疫缺陷综合症(AIDS)及其相关疾病的病原体。 US-FDA已批准了几种源自肽和非肽类似物的HIV-PR抑制剂(HIV-PI)。它们已充分降低了病毒载量,但与不良的药代动力学,长期毒性,耐药性以及最重要的突变相关。因此,需要开发新的抑制剂,其对野生型和耐药性突变病毒的毒性较小并且具有活性。对几类HIV-PI进行了化学信息学(QSAR)分析,以了解有效抑制剂的性质及其作用机理。从文献中收集和整理与结构-活性关系(SAR)有关的化学数据,并推导QSAR模型,进行化学信息学分析,并检索隐藏的化学信息。给出了肽和非肽类似物的五个不同HIV-PIs数据集的结果。三种不同类型的吡喃酮衍生物(吡喃酮,环烷基-吡喃酮和二氢-吡喃酮)和环状脲衍生物代表非肽类似物,而基于茚地那韦的衍生物代表肽类似物。在基于2D化学信息学(QSAR)分析的计算机上设计的新型化合物上进行了分子建模(对接)研究,以可视化并了解这些化合物与HIV-PR的3D相互作用模式。还对基于茚地那韦的类似物进行了研究,以定量确定这些类似物引起的突变模式。最后,为所有三类基于吡喃酮的抑制剂,突变的HIV-PR蛋白准备了大型综合数据集,并计算了其描述符值。这些数据集是进一步研究的有用资源。化学信息学(QSAR)模型成功地预测了抑制剂分子的改良结构,定量地表征了抑制剂和蛋白质(HIV-PR)的特性,并根据有利的抑制剂-蛋白质相互作用解释了改良的结构。

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