| Literature DB >> 29520122 |
Tiago Simões1,2, Daniel Lopes3, Sérgio Dias1,2, Francisco Fernandes3, João Pereira3,4, Joaquim Jorge3,4, Chandrajit Bajaj5, Abel Gomes1,2.
Abstract
Detecting and analyzing protein cavities provides significant information about active sites for biological processes (e.g., protein-protein or protein-ligand binding) in molecular graphics and modeling. Using the three-dimensional structure of a given protein (i.e., atom types and their locations in 3D) as retrieved from a PDB (Protein Data Bank) file, it is now computationally viable to determine a description of these cavities. Such cavities correspond to pockets, clefts, invaginations, voids, tunnels, channels, and grooves on the surface of a given protein. In this work, we survey the literature on protein cavity computation and classify algorithmic approaches into three categories: evolution-based, energy-based, and geometry-based. Our survey focuses on geometric algorithms, whose taxonomy is extended to include not only sphere-, grid-, and tessellation-based methods, but also surface-based, hybrid geometric, consensus, and time-varying methods. Finally, we detail those techniques that have been customized for GPU (Graphics Processing Unit) computing.Entities:
Year: 2017 PMID: 29520122 PMCID: PMC5839519 DOI: 10.1111/cgf.13158
Source DB: PubMed Journal: Comput Graph Forum ISSN: 0167-7055 Impact factor: 2.078