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首页> 外文期刊>Journal of Biomolecular NMR >POTENCI: prediction of temperature, neighbor and pH-corrected chemical shifts for intrinsically disordered proteins
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POTENCI: prediction of temperature, neighbor and pH-corrected chemical shifts for intrinsically disordered proteins

机译:Potenci:对本质无序蛋白质的温度,邻居和pH校正的化学变换预测

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Chemical shifts contain important site-specific information on the structure and dynamics of proteins. Deviations from statistical average values, known as random coil chemical shifts (RCCSs), are extensively used to infer these relationships. Unfortunately, the use of imprecise reference RCCSs leads to biased inference and obstructs the detection of subtle structural features. Here we present a new method, POTENCI, for the prediction of RCCSs that outperforms the currently most authoritative methods. POTENCI is parametrized using a large curated database of chemical shifts for protein segments with validated disorder; It takes pH and temperature explicitly into account, and includes sequence-dependent nearest and next-nearest neighbor corrections as well as second-order corrections. RCCS predictions with POTENCI show root-mean-square values that are lower by 25-78%, with the largest improvements observed for H-1 alpha and C-13'. It is demonstrated how POTENCI can be applied to analyze subtle deviations from RCCSs to detect small populations of residual structure in intrinsically disorder proteins that were not discernible before. POTENCI source code is available for download, or can be deployed from the URLhttp://www.protein-nmr.org.
机译:化学位移包含有关蛋白质结构和动态的重要网站特定信息。从统计平均值的偏差被称为随机线圈化学换档(RCCSS),广泛地用于推断这些关系。不幸的是,使用不精确的参考RCCSS导致偏置推理并阻碍了微妙结构特征的检测。在这里,我们提出了一种新方法Potenci,用于预测rccss,以满足目前最权威的方法。 Potenci使用具有验证疾病的蛋白质片段的大型化学转移数据库参数化;明确地考虑pH和温度,并且包括依赖于序列的最近和下一个邻邻校正以及二阶校正。 rccs与potenci的预测显示了低于25-78%的根均方值,对于H-1α和C-13'观察到的最大改善。结果证明Potenci如何应用于分析来自RCCS的微妙偏差,以检测在本症蛋白质中不可辨别的内在疾病蛋白质中的小群体。 Potenci源代码可用于下载,或者可以从URLHTTP://www.protein-nmr.org部署。

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