应用计算评分函数评估食品科学中的生物分子相互作用:在雌激素受体中的应用

F. Spyrakis, P. Cozzini, G. Kellogg
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引用次数: 1

摘要

在过去的十年中,计算方法主要用于研究蛋白质-配体相互作用,特别是药物化学家发现、设计和开发药物,已经成功地应用于各种食品科学应用[1,2]。事实上,现在很清楚,药物和营养分子在与大分子靶标或受体结合时的行为方式是一样的,而且在药物化学中广泛使用的许多方法可以很容易地转移到食品科学领域。例如,核受体是许多药物分子的共同目标,并且可能以同样的方式受到与食物或类食物分子相互作用的影响。因此,分子动力学等关键的计算药物化学方法可以用于破译蛋白质的灵活性,并获得食物相关研究中对接和评分的稳定模型,虚拟筛选越来越多地应用于识别具有内分泌干扰物、食物真菌毒素和新型营养药品潜力的分子[3,4,5]。所有这些方法和模拟都是基于蛋白质-配体相互作用现象,并代表了任何后续修饰靶受体或酶的生理活性的基础。我们在这里描述了生物复合物结合的能量学,提供了用于评估这些能量学的最常见和最成功的算法的调查,我们报告了计算技术应用于食品科学问题的案例研究。特别是,我们探索了一些涉及雌激素受体的研究,我们对这些研究有长期的兴趣。
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Applying Computational Scoring Functions to Assess Biomolecular Interactions in Food Science: Applications to the Estrogen Receptors
During the last decade, computational methods, which were for the most part developed to study protein-ligand interactions and especially to discover, design and develop drugs by and for medicinal chemists, have been successfully applied in a variety of food science applications [1,2]. It is now clear, in fact, that drugs and nutritional molecules behave in the same way when binding to a macromolecular target or receptor, and that many of the approaches used so extensively in medicinal chemistry can be easily transferred to the fields of food science. For instance, nuclear receptors are common targets for a number of drug molecules and could be, in the same way, affected by the interaction with food or food-like molecules. Thus, key computational medicinal chemistry methods like molecular dynamics can be used to decipher protein flexibility and to obtain stable models for docking and scoring in food-related studies, and virtual screening is increasingly being applied to identify molecules with potential to act as endocrine disruptors, food mycotoxins, and new nutraceuticals [3,4,5]. All of these methods and simulations are based on protein-ligand interaction phenomena, and represent the basis for any subsequent modification of the targeted receptor's or enzyme's physiological activity. We describe here the energetics of binding of biological complexes, providing a survey of the most common and successful algorithms used in evaluating these energetics, and we report case studies in which computational techniques have been applied to food science issues. In particular, we explore a handful of studies involving the estrogen receptors for which we have a long-term interest.
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