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首页> 外文期刊>Bulletin of the American Physical Society >APS -APS March Meeting 2017 - Event - Effective Binding Affinities of Mucin-like Polymers, A Computational Study
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APS -APS March Meeting 2017 - Event - Effective Binding Affinities of Mucin-like Polymers, A Computational Study

机译:APS -APS 3月会议2017年 - 事件 - 粘液状聚合物的有效结合亲和力,计算研究

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Mucins are proteoglycan polymers found in mucus that play a key role in preventing infection, but their capabilities have yet to be mimicked by synthetic materials. Mucins have a dense bottlebrush structure that may display many low-affinity binding sites to interact with proteins such as lectins. Polyvalent binding site displays enhance the binding strength for low-affinity monovalent interactions but it is unknown how polyvalent system shape, size, and binding site density affect these interactions. Since the parameter space of polyvalent inhibitors is large and difficult to sample experimentally, we built a simulation to predict structural effects on binding affinities of polyvalent motifs. To evaluate the relative K$_{mathrm{D}}$'s of polyvalent and monovalent inhibitors, we use a Brownian dynamics bead-spring model coupled with a reactive polymer-pathogen binding model. It bridges length and timescales and can sample large polymer systems that bind proteins at the sub-nanometer lengthscale. We are using competitive inhibition assays to validate the simulation and measure the enhanced inhibitory effect that polyvalency gives over free binding sites. This simulation gives design principles to optimize the structure and effectiveness of polyvalent inhibitors.
机译:粘蛋白是在粘液中发现的蛋白质酚聚合物,其在预防感染方面发挥关键作用,但它们的能力尚未被合成材料模仿。粘蛋白具有致密的泡刷结构,可以显示许多低亲和力结合位点以与诸如凝集素的蛋白质相互作用。多价结合位点显示,增强低亲和力单价相互作用的结合强度,但是多价系的形状,尺寸和结合位点密度是较明显的影响这些相互作用。由于多价抑制剂的参数空间很大且难以在实验上进行样品,因此我们建立了一种模拟以预测多价基序的结合亲和力的结构效应。为了评估多价和单价抑制剂的相对k $ _ {mathrm {d}},我们使用与反应性聚合物 - 病原体结合模型耦合的棕色动力学珠春春季模型。它桥梁长度和时间尺寸,可以样本在亚纳米长度下结合蛋白质的大型聚合物系统。我们正在使用竞争性抑制测定来验证模拟,并测量多价能赋予免费结合位点的增强的抑制效果。该仿真提供了设计原则,以优化多价抑制剂的结构和有效性。

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