A spatio-temporal mining approach towards summarizing and analyzing protein folding trajectories

<p>Abstract</p> <p>Understanding the protein folding mechanism remains a grand challenge in structural biology. In the past several years, computational theories in molecular dynamics have been employed to shed light on the folding process. Coupled with high computing power and lar...

Full description

Bibliographic Details
Main Authors: Ucar Duygu, Parthasarathy Srinivasan, Yang Hui
Format: Article
Language:English
Published: BMC 2007-04-01
Series:Algorithms for Molecular Biology
Online Access:http://www.almob.org/content/2/1/3
id doaj-679540b8da97471e9161fccb098e009d
record_format Article
spelling doaj-679540b8da97471e9161fccb098e009d2020-11-25T00:20:32ZengBMCAlgorithms for Molecular Biology1748-71882007-04-0121310.1186/1748-7188-2-3A spatio-temporal mining approach towards summarizing and analyzing protein folding trajectoriesUcar DuyguParthasarathy SrinivasanYang Hui<p>Abstract</p> <p>Understanding the protein folding mechanism remains a grand challenge in structural biology. In the past several years, computational theories in molecular dynamics have been employed to shed light on the folding process. Coupled with high computing power and large scale storage, researchers now can computationally simulate the protein folding process in atomistic details at femtosecond temporal resolution. Such simulation often produces a large number of folding trajectories, each consisting of a series of 3D conformations of the protein under study. As a result, effectively managing and analyzing such trajectories is becoming increasingly important.</p> <p>In this article, we present a spatio-temporal mining approach to analyze protein folding trajectories. It exploits the simplicity of contact maps, while also integrating 3D structural information in the analysis. It characterizes the dynamic folding process by first identifying spatio-temporal association patterns in contact maps, then studying how such patterns evolve along a folding trajectory. We demonstrate that such patterns can be leveraged to summarize folding trajectories, and to facilitate the detection and ordering of important folding events along a folding path. We also show that such patterns can be used to identify a consensus partial folding pathway across multiple folding trajectories. Furthermore, we argue that such patterns can capture both local and global structural topology in a 3D protein conformation, thereby facilitating effective structural comparison amongst conformations.</p> <p>We apply this approach to analyze the folding trajectories of two small synthetic proteins-BBA5 and GSGS (or Beta3S). We show that this approach is promising towards addressing the above issues, namely, folding trajectory summarization, folding events detection and ordering, and consensus partial folding pathway identification across trajectories.</p> http://www.almob.org/content/2/1/3
collection DOAJ
language English
format Article
sources DOAJ
author Ucar Duygu
Parthasarathy Srinivasan
Yang Hui
spellingShingle Ucar Duygu
Parthasarathy Srinivasan
Yang Hui
A spatio-temporal mining approach towards summarizing and analyzing protein folding trajectories
Algorithms for Molecular Biology
author_facet Ucar Duygu
Parthasarathy Srinivasan
Yang Hui
author_sort Ucar Duygu
title A spatio-temporal mining approach towards summarizing and analyzing protein folding trajectories
title_short A spatio-temporal mining approach towards summarizing and analyzing protein folding trajectories
title_full A spatio-temporal mining approach towards summarizing and analyzing protein folding trajectories
title_fullStr A spatio-temporal mining approach towards summarizing and analyzing protein folding trajectories
title_full_unstemmed A spatio-temporal mining approach towards summarizing and analyzing protein folding trajectories
title_sort spatio-temporal mining approach towards summarizing and analyzing protein folding trajectories
publisher BMC
series Algorithms for Molecular Biology
issn 1748-7188
publishDate 2007-04-01
description <p>Abstract</p> <p>Understanding the protein folding mechanism remains a grand challenge in structural biology. In the past several years, computational theories in molecular dynamics have been employed to shed light on the folding process. Coupled with high computing power and large scale storage, researchers now can computationally simulate the protein folding process in atomistic details at femtosecond temporal resolution. Such simulation often produces a large number of folding trajectories, each consisting of a series of 3D conformations of the protein under study. As a result, effectively managing and analyzing such trajectories is becoming increasingly important.</p> <p>In this article, we present a spatio-temporal mining approach to analyze protein folding trajectories. It exploits the simplicity of contact maps, while also integrating 3D structural information in the analysis. It characterizes the dynamic folding process by first identifying spatio-temporal association patterns in contact maps, then studying how such patterns evolve along a folding trajectory. We demonstrate that such patterns can be leveraged to summarize folding trajectories, and to facilitate the detection and ordering of important folding events along a folding path. We also show that such patterns can be used to identify a consensus partial folding pathway across multiple folding trajectories. Furthermore, we argue that such patterns can capture both local and global structural topology in a 3D protein conformation, thereby facilitating effective structural comparison amongst conformations.</p> <p>We apply this approach to analyze the folding trajectories of two small synthetic proteins-BBA5 and GSGS (or Beta3S). We show that this approach is promising towards addressing the above issues, namely, folding trajectory summarization, folding events detection and ordering, and consensus partial folding pathway identification across trajectories.</p>
url http://www.almob.org/content/2/1/3
work_keys_str_mv AT ucarduygu aspatiotemporalminingapproachtowardssummarizingandanalyzingproteinfoldingtrajectories
AT parthasarathysrinivasan aspatiotemporalminingapproachtowardssummarizingandanalyzingproteinfoldingtrajectories
AT yanghui aspatiotemporalminingapproachtowardssummarizingandanalyzingproteinfoldingtrajectories
AT ucarduygu spatiotemporalminingapproachtowardssummarizingandanalyzingproteinfoldingtrajectories
AT parthasarathysrinivasan spatiotemporalminingapproachtowardssummarizingandanalyzingproteinfoldingtrajectories
AT yanghui spatiotemporalminingapproachtowardssummarizingandanalyzingproteinfoldingtrajectories
_version_ 1725366930012897280