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首页> 外文期刊>Journal of chemical theory and computation: JCTC >Decoding the Mobility and Time Scales of Protein Loops
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Decoding the Mobility and Time Scales of Protein Loops

机译:解码蛋白质环的流动性和时标

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The flexible nature of protein loops and the time scales of their dynamics are critical for many biologically important events at the molecular level, such as protein interaction and recognition processes. In order to obtain a predictive understanding of the dynamic properties of loops, 500 ns molecular dynamics (MD) computer simulations of 38 different proteins were performed and validated using NMR chemical shifts. A total of 169 loops were analyzed and classified into three types, namely fast loops with correlation times <10 ns, slow loops with correlation times between 10 and 500 ns, and loops that are static over the course of the whole trajectory. Chemical and biophysical loop descriptors, such as amino-acid sequence, average 3D structure, charge distribution, hydrophobicity, and local contacts were used to develop and parametrize the ToeLoop algorithm for the prediction of the flexibility and motional time scale of every protein loop, which is also implemented as a public Web server (http://spin.ccic.ohio-state.edu/index.php/loop). The results demonstrate that loop dynamics with their time scales can be predicted rapidly with reasonable accuracy, which will allow the screening of average protein structures to help better understand the various roles loops can play in the context of proteinprotein interactions and binding.
机译:蛋白质环的柔性性质及其动力学的时标对于分子水平上许多生物学上重要的事件(如蛋白质相互作用和识别过程)至关重要。为了获得对环动力学特性的预测性理解,对38种不同蛋白质进行了500 ns分子动力学(MD)计算机模拟,并使用NMR化学位移进行了验证。总共分析了169个回路并将其分为三种类型,即相关时间<10 ns的快速回路,相关时间在10到500 ns之间的慢速回路以及在整个轨迹过程中是静态的回路。使用化学和生物物理回路描述符(例如氨基酸序列,平均3D结构,电荷分布,疏水性和局部接触)来开发和参数化ToeLoop算法,以预测每个蛋白质回路的灵活性和运动时标,还作为公共Web服务器(http://spin.ccic.ohio-state.edu/index.php/loop)实现。结果表明,可以以合理的准确性快速预测环动力学及其时标,这将允许筛选平均蛋白质结构,以帮助更好地理解环在蛋白质相互作用和结合中可以发挥的各种作用。

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