MM-GBSA

MM - GBSA
  • 文章类型: Journal Article
    经过40多年的生物聚合物发展,目前的研究仍然基于常规的实验室技术,这需要大量的实验。因此,需要寻找新的研究方法来加速和推动生物聚合物的未来发展。在这项研究中,使用集成的计算机辅助分子设计平台描述了有前途的生物聚合物添加剂排名。从这个角度来看,通过使用AutoDockVina预测结合位点内的分子相互作用评分和分子相互作用模式,最初检查了一组21种不同的植物油菜和大豆蛋白添加剂,分子操作环境(MOE),和分子力学/广义玻恩表面积(MM-GBSA)。所研究添加剂的发现强调了它们结合能的差异,结合位点,口袋,类型,以及在蛋白质-加性相互作用中起关键作用的键形成的距离。因此,分子对接方法可用于通过预测其结合亲和力对一组候选物中的最佳添加剂进行排名。此外,提供了蛋白质-添加剂相互作用背后的特定分子水平见解来解释排名结果.突出显示的结果可以为在分子水平上设计高性能聚合物材料提供一套指南。因此,我们建议,分子建模的实施可以作为一个快速和直接的工具在蛋白质为基础的生物塑料设计,通常会强调添加剂在候选集合中的正确排名。此外,这些方法可能为发现新的添加剂开辟新的途径,并作为对这一领域进行更深入研究的起点。
    After more than 40 years of biopolymer development, the current research is still based on conventional laboratory techniques, which require a large number of experiments. Therefore, finding new research methods are required to accelerate and power the future of biopolymeric development. In this study, promising biopolymer-additive ranking was described using an integrated computer-aided molecular design platform. In this perspective, a set of 21 different additives with plant canola and soy proteins were initially examined by predicting the molecular interactions scores and mode of molecule interactions within the binding site using AutoDock Vina, Molecular Operating Environment (MOE), and Molecular Mechanics/Generalized Born Surface Area (MM-GBSA). The findings of the investigated additives highlighted differences in their binding energy, binding sites, pockets, types, and distance of bonds formed that play crucial roles in protein-additive interactions. Therefore, the molecular docking approach can be used to rank the optimal additive among a set of candidates by predicting their binding affinities. Furthermore, specific molecular-level insights behind protein-additives interactions were provided to explain the ranking results. The highlighted results can provide a set of guidelines for the design of high-performance polymeric materials at the molecular level. As a result, we suggest that the implementation of molecular modeling can serve as a fast and straightforward tool in protein-based bioplastics design, where the correct ranking of additives among sets of candidates is often emphasized. Moreover, these approaches may open new ways for the discovery of new additives and serve as a starting point for more in-depth investigations into this area.
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