| Literature DB >> 24305467 |
Hanka Venselaar1, Franscesca Camilli, Shima Gholizadeh, Marlou Snelleman, Han G Brunner, Gert Vriend.
Abstract
BACKGROUND: The ever on-going technical developments in Next Generation Sequencing have led to an increase in detected disease related mutations. Many bioinformatics approaches exist to analyse these variants, and of those the methods that use 3D structure information generally outperform those that do not use this information. 3D structure information today is available for about twenty percent of the human exome, and homology modelling can double that fraction. This percentage is rapidly increasing so that we can expect to analyse the majority of all human exome variants in the near future using protein structure information.Entities:
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Year: 2013 PMID: 24305467 PMCID: PMC4234487 DOI: 10.1186/1471-2105-14-352
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Comparison of 12 different methods for mutation analysis
| Grantham [ | 67,4 | 65,2 | AA differences |
| PhD-SNP [ | 85,6 | 73,9 | Conservation |
| Panther [ | 86,5 | 35,1 | Conservation |
| SIFT [ | 87,8 | 64,4 | Conservation |
| SNPs&GO [ | 72,5 | 77,8 | Conservation, GO terms |
| SNAP [ | 83,4 | 56,5 | Conservation, sequence predicted structure information |
| MutPred [ | 92,8 | 85,7 | Conservation, sequence predicted structure information |
| nsSNPanalyzer [ | 74,5 | 67,6 | Conservation, 3D structural features from homologs, AA properties |
| SNPs3D [ | 86,3 | 62,8 | Conservation, structure information (pre-calculated from database) |
| PolyPhen-2 [ | 95,0 | 58,6 | Conservation, 3D structural features from homologs, SwissProt annotations |
| HOPE [ | 96,1 | 76,1 | Conservation, structural features from structure and homology models, SwissProt features, predictions, AA properties |
Results of the mutation analysis on 181 pathogenic and 46 neutral variants by 11 different methods. Pathogenic mutants and SNPs are shown in percentage of correctly predicted cases. The numbers indicate percentages correctly (damaging for the pathogenic variants and benign for the SNPs) predicted mutations.
Figure 1Performance of the mutation analysis servers grouped by type. Shown is the average percentage of the correctly predicted pathogenic mutants and neutral SNPs. The different servers are divided in groups based on their underlying methods. G = Grantham scores only, MSA = Multiple Sequence Alignment-centred methods (PhD-SNP, Panther, and SIFT), ML = Machine Learning based methods (SNPs&GO, SNAP, MutPred), 3D = structure based methods (nsSNPanalyzer, SNP3D, PolyPhen-2, and HOPE).
Figure 2Mutation W177R in opsin. The opsin molecule is shown in grey, the side chain of wildtype tryptophan and mutant arginine are shown in green and red, respectively. The picture illustrates that the tryptophan residue is located at the surface where it can make hydrophobic interactions with the membrane.
Figure 3Mutation V359 in SPTC2. The SPTC2 molecule is shown in grey, the side chain of wildtype valine and mutant methionine are shown in green and red respectively. Other side chains of surrounding residues are also shown in grey and indicate that the residue is buried.