| Literature DB >> 25491031 |
Lars Skjærven1,2, Xin-Qiu Yao3, Guido Scarabelli4, Barry J Grant5.
Abstract
BACKGROUND: Popular bioinformatics approaches for studying protein functional dynamics include comparisons of crystallographic structures, molecular dynamics simulations and normal mode analysis. However, determining how observed displacements and predicted motions from these traditionally separate analyses relate to each other, as well as to the evolution of sequence, structure and function within large protein families, remains a considerable challenge. This is in part due to the general lack of tools that integrate information of molecular structure, dynamics and evolution.Entities:
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Year: 2014 PMID: 25491031 PMCID: PMC4279791 DOI: 10.1186/s12859-014-0399-6
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Figure 1Example workflow for NMA and PCA. In this example the user starts with a single protein identifier, performs a BLAST search to identify related structures, fetches and aligns the identified structures, performs PCA and calculates the normal modes for each structure to obtain aligned normal mode vectors. Result interpretation and comparison of mode subsets is made available through various methods for similarity assessment.
Figure 2Results of ensemble PCA and NMA on DHFR. (A) Available PDB structures projected onto their first two principal components accounting for a total of 59% of the total variance. (B) Comparison of mode fluctuations calculated for open (black) and closed (red) conformations. The figure is generated by automated functions for plotting and the identification of areas of significant differences in residue fluctuations between groups of conformers (light blue boxes). The locations of major secondary structure elements are shown in the plot margins with β strands in gray and α helices in black. (C) Conformational ensemble obtained from interpolating along the first five modes of all collected E. coli structures. Domain analysis on the generated ensemble reveals the identification of two dynamic sub-domains colored red and blue, respectively. See Additional file 2 for full details and corresponding code for this analysis.
Figure 3Cross-species normal modes analysis of DHFR. (A) Sequence conservation of the collected DHFR species. (B) Aligned fluctuation profiles for selected species of DHFR. Shaded blue regions depict areas discussed in the text showing different fluctuation patterns between specific species. The region shaded in light red depict the Met20 loop in E. coli DHFR and the corresponding loop in the remaining species. The location of major secondary structure elements in E. coli DHFR are also shown in the plot margins with β strands in gray and α helices in black. (C) A visual comparison of mode fluctuations between DHFR from E. coli and H. sapiens. Fluctuation magnitude is represented by thin to thick tube colored blue (low fluctuations), white (moderate fluctuations) to red (large fluctuations). See Additional file 3 for full details and corresponding code for this analysis.
Figure 4Investigating functional dynamics in heterotrimeric G-proteins. (A) Prediction of large-scale opening motions. (B) Prediction of dynamically coupled sub-domains (colored regions) from correlation network analysis of NMA results. Inter-subdomain couplings are highlighted with thick black lines. (C) Characterization of distinct GTP-active and GDP-inactive states from a clustering of NMA RMSIP results. (D) Fluctuation analysis reveals structural regions with significantly distinct flexibilities (highlighted with a blue shaded background are sites with a p-value < 0.005) between the active (red) and inactive (green) states. Full details for the reproduction of this analysis along with PCA that distinguishes GDP and GTP states can be found in the Additional file 1.
Related software for analysis of protein structural dynamics
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| Python, NumPy, ScientificPython | Python, NumPy, MatplotLib | Matlab Component Runtime (MCR) | Web browser | R, Muscle |
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| No | Yes | No | No | Yes |
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| No | Yes | Yes | Yes | Yes |
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| Yes | Yes | No | No | Yes |
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| No | PDB, PFAMa | Nob | Nob | PDB, PFAM, UNIPROT, NRc |
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| Yes | No | No | No | No |
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| Yes | Yes | Yes | Yes | Yes |
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| No | No | No | Yes | Yes |
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| C-alpha, ANM, Amber all-atom | GNM/ANM, Custom | GNM/ANM, pANM, STM, nnANM, mcgANM, Customd | C-alpha | C-alpha, ANM, pfANM sdENM, REACH, Custom |
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| No | Yes | Identical structures only | No | Yes |
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| No | No | No | No | Yes |
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| No | No | No | No | Yes |
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| Yes | Yes | No | Yes | Yes |
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| Yes | Yes | Yese | No | Yes |
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| Yes | No | No | No | Yes |
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| No | Nof | Yes | Webserver | Nog |
aRead and search functionality.
bRead-only functionality from the PDB.
cRead, search, and annotation functionality, including enhanced search capabilities across multiple databases.
dSTM: Spring Tensor Model; pANM: power ANM; nnANM: nearest neighbor ANM; mcgANM: mixed coarse graining ANM.
eDependences are not open source.
fVMD plugin NMWiz available for single molecule NMA.
gWeb interface for ensemble PCA and NMA in development.