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首页> 外文期刊>The journal of physical chemistry, B. Condensed matter, materials, surfaces, interfaces & biophysical >Prediction of RNA ~1H and ~(13)C Chemical Shifts: A Structure Based Approach
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Prediction of RNA ~1H and ~(13)C Chemical Shifts: A Structure Based Approach

机译:RNA〜1H和〜(13)C化学位移的预测:一种基于结构的方法

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摘要

The use of NMR-derived chemical shifts in protein structure determination and prediction has received much attention, and, as such, many methods have been developed to predict protein chemical shifts from three-dimensional (3D) coordinates. In contrast, little attention has been paid to predicting chemical shifts from RNA coordinates. Using the random forest machine learning approach, we developed RAMSEY, which is capable of predicting both ~1H and protonated ~(13)C chemical shifts from RNA coordinates. In this report, we introduce RAMSEY, assess its accuracy, and demonstrate the sensitivity of RAMSEY-predicted chemical shifts to RNA 3D structure.
机译:在蛋白质结构确定和预测中使用NMR衍生的化学位移已引起广泛关注,因此,已开发出许多方法来从三维(3D)坐标预测蛋白质化学位移。相反,很少有人关注从RNA坐标预测化学位移。使用随机森林机器学习方法,我们开发了RAMSEY,它能够根据RNA坐标预测〜1H和质子化的〜(13)C化学位移。在本报告中,我们介绍RAMSEY,评估其准确性,并证明RAMSEY预测的化学位移向RNA 3D结构的敏感性。

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