| Literature DB >> 25035865 |
Dong Xu1, Hua Li2, Yang Zhang3.
Abstract
The depth of each atom/residue in a protein structure is a key attribution that has been widely used in protein structure modeling and function annotation. However, the accurate calculation of depth is time consuming. Here, we propose to use the Euclidean distance transform (EDT) to calculate the depth, which conveniently converts the protein structure to a 3D gray-scale image with each pixel labeling the minimum distance of the pixel to the surface of the molecule (i.e. the depth). We tested the proposed EDT method on a set of 261 non-redundant protein structures. The data show that the EDT method is 2.6 times faster than the widely used method by Chakravarty and Varadarajan. The depth value by EDT method is also highly accurate, which is almost identical to the depth calculated by exhaustive search (Pearson's correlation coefficient≈1). We believe the EDT-based depth calculation program can be used as an efficient tool to assist the studies of protein fold recognition and structure-based function annotation.Entities:
Keywords: Euclidean distance transform; fold recognition; molecular visualization; protein depth; protein tertiary structure; solvent accessibility
Year: 2013 PMID: 25035865 PMCID: PMC4098708 DOI: 10.1007/978-3-642-37195-0_30
Source DB: PubMed Journal: Res Comput Mol Biol