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Dihedral angles principal geodesic analysis using nonlinear statistics

机译:使用非线性统计的二面角主测地线分析

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Statistics, as one of the applied sciences, has great impacts in vast area of other sciences. Prediction of protein structures with great emphasize on their geometrical features using dihedral angles has invoked the new branch of statistics, known as directional statistics. One of the available biological techniques to predict is molecular dynamics simulations producing high-dimensional molecular structure data. Hence, it is expected that the principal component analysis (PCA) can response some related statistical problems particulary to reduce dimensions of the involved variables. Since the dihedral angles are variables on non-Euclidean space (their locus is the torus), it is expected that direct implementation of PCA does not provide great information in this case. The principal geodesic analysis is one of the recent methods to reduce the dimensions in the non-Euclidean case. A procedure to utilize this technique for reducing the dimension of a set of dihedral angles is highlighted in this paper. We further propose an extension of this tool, implemented in such way the torus is approximated by the product of two unit circle and evaluate its application in studying a real data set. A comparison of this technique with some previous methods is also undertaken.
机译:统计学,作为应用科学之一,在其他科学领域有着巨大的影响。使用二面角来预测蛋白质结构的几何特征时,蛋白质结构的预测引起了统计学的新分支,即定向统计。可以预测的可用生物学技术之一是产生高维分子结构数据的分子动力学模拟。因此,期望主成分分析(PCA)可以响应一些相关的统计问题,尤其是可以减少所涉及变量的维数。由于二面角是非欧几里德空间上的变量(它们的轨迹是圆环),因此在这种情况下,直接实施PCA不会提供很多信息。主要测地分析是在非欧几里得情况下减小尺寸的最新方法之一。本文重点介绍了利用该技术减小一组二面角尺寸的过程。我们进一步提出了该工具的扩展,以这种方式实现:将圆环近似为两个单位圆的乘积,并评估其在研究实际数据集中的应用。还对该技术与一些先前的方法进行了比较。

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