Structure-Based Chemical Shift Prediction Using Random Forests Non-Linear Regression

K. Arun, C. Langmead
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引用次数: 24

Abstract

Protein nuclear magnetic resonance (NMR) chemical shifts are among the most accurately measurable spectroscopic parameters and are closely correlated to protein structure because of their dependence on the local electronic environment. The precise nature of this correlation remains largely unknown. Accurate prediction of chemical shifts from existing structures’ atomic co-ordinates will permit close study of this relationship. This paper presents a novel non- linear regression based approach to chemical shift prediction from protein structure. The regression model employed combines quantum, classical and empirical variables and provides statistically signifi cant improved prediction accuracy over existing chemical shift predictors, across protein backbone atom types. The results presented here were obtained using the Random Forest regression algorithm on a protein entry data set derived from the RefDB re-referenced chemical shift database.
基于结构的随机森林非线性回归化学位移预测
蛋白质核磁共振(NMR)化学位移是最精确可测量的光谱参数之一,并且由于其依赖于局部电子环境而与蛋白质结构密切相关。这种相关性的确切性质在很大程度上仍然未知。从现有结构的原子坐标中准确预测化学位移,将允许对这种关系进行深入研究。本文提出了一种基于非线性回归的蛋白质结构化学位移预测方法。所采用的回归模型结合了量子变量、经典变量和经验变量,并在统计上显著提高了现有的跨蛋白质主链原子类型的化学位移预测器的预测精度。本文给出的结果是使用随机森林回归算法对来自RefDB重新引用的化学位移数据库的蛋白质输入数据集获得的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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