Geometry-based distance for clustering amino acids

J Appl Stat. 2019 Oct 3;47(7):1235-1250. doi: 10.1080/02664763.2019.1673324. eCollection 2020.

Abstract

Clustering amino acids is one of the most challenging problems in functional and structural prediction of protein. Previous studies have proposed clusters based on measurements of physical and biochemical characteristics of the amino acids such as volume, area, hydrophilicity, polarity, hydrogen bonding, shape, and charge. These characteristics, although important, are less directly related to the protein structure compared to geometrical characteristics such as dihedral angles between amino acids. We propose using the p-value from a test of equality of dihedral-angle distributions as the basis of a distance measure for the clustering. In this novel approach, an energy test is modified to deal with bivariate angular data and the p-value is obtained via a permutation method. The results indicate that the clusters of amino acids have sensible interpretation where Glycine, Proline, and Asparagine each forms a distinct cluster. A simulation study suggests that this approach has good working characteristics to cluster amino acids.

Keywords: Circular distance; energy statistic; hierarchical clustering; permutation two-sample test; similarity indices; squared Euclidean distance.

Grants and funding

SFA is supported by the Government of Iraq, Ministry of Higher Education and Scientific Research.