| Literature DB >> 23640332 |
Jean-Paul Ebejer1, Jamie R Hill, Sebastian Kelm, Jiye Shi, Charlotte M Deane.
Abstract
Membrane proteins are estimated to be the targets of 50% of drugs that are currently in development, yet we have few membrane protein crystal structures. As a result, for a membrane protein of interest, the much-needed structural information usually comes from a homology model. Current homology modelling software is optimized for globular proteins, and ignores the constraints that the membrane is known to place on protein structure. Our Memoir server produces homology models using alignment and coordinate generation software that has been designed specifically for transmembrane proteins. Memoir is easy to use, with the only inputs being a structural template and the sequence that is to be modelled. We provide a video tutorial and a guide to assessing model quality. Supporting data aid manual refinement of the models. These data include a set of alternative conformations for each modelled loop, and a multiple sequence alignment that incorporates the query and template. Memoir works with both α-helical and β-barrel types of membrane proteins and is freely available at http://opig.stats.ox.ac.uk/webapps/memoir.Entities:
Mesh:
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Year: 2013 PMID: 23640332 PMCID: PMC3692111 DOI: 10.1093/nar/gkt331
Source DB: PubMed Journal: Nucleic Acids Res ISSN: 0305-1048 Impact factor: 16.971
Figure 1.The Memoir pipeline. The user inputs are a target sequence to be modelled, and a template structure on which to base the model. The sequence of the template is annotated by iMembrane with structural information, such as position within the membrane and secondary structure. This annotation, together with a set of proteins that are homologous to the target and template, are aligned by MP-T. The alignment is used as a blueprint for model building by Medeller. The resulting ‘core’ model is available for download. Loops are then added to the core model to generate Memoir’s principal outputs: the high accuracy (Hiacc) and high coverage (Hicov) models.
Figure 2.Parts of a Memoir results page: (a) two models are generated, one prioritizing accuracy (the ‘high accuracy’ model) and the other completeness (the ‘high coverage’ model). They are displayed in the Jmol 3d graphics viewer and are available for download in PDB format. Additional information on model creation can be downloaded using the ‘Download all results’ button. (b) Also displayed is the alignment between the target and template structure that was used in model building. (c) The alignment is accompanied by a guide to model quality, an extract of which is shown here. Values referenced in the guide, such as sequence identity, are calculated and displayed with traffic-light colour-coding (e.g. green for values that are likely to lead to a good model).
Comparison of models of 15 transmembrane domains built by Memoir (high-accuracy model), HHpred and Swiss-Model
| Target/template | % id | % Cov | RMSD | ||
|---|---|---|---|---|---|
| Memoir | HHpred | Swiss-Model | |||
| 2Q7MC/2H8AA | 10 | 57 | 4.07 | 3.63 | 3.76 |
| 2JMMA/2LHFA | 13 | 62 | 3.85 | 3.85 | 5.29 |
| 3GIAA/3L1LA | 15 | 93 | 4.20 | 4.81 | |
| 3O0RB/3MK7A | 18 | 92 | 3.18 | 2.91 | |
| 1OGVM/2AXTa | 19 | 59 | 5.06 | 3.39 | |
| 2VL0A/3RHWA | 22 | 93 | 2.61 | 2.58 | 2.64 |
| 3BRYA/3DWOX | 23 | 84 | 4.25 | 3.67 | 3.55 |
| 2WIEA/2X2VA | 27 | 80 | 1.31 | 1.47 | 1.31 |
| 1YC9A/3PIKA | 27 | 89 | 1.35 | 2.16 | 1.35 |
| 2D57A/2W2EA | 31 | 97 | 2.06 | 2.02 | |
| 2HYDA/3B60A | 34 | 94 | 2.31 | 2.97 | 2.33 |
| 1L0LD/1ZRTD | 35 | 89 | 1.30 | 1.54 | 1.28 |
| 1EZVE/2FYNC | 47 | 65 | 3.72 | 3.01 | |
| 1M56C/1OCCC | 48 | 99 | 2.33 | 2.04 | |
| 2QKSA/3SYOA | 50 | 90 | 2.72 | 2.58 | 3.15 |
| Mean | 83 | 2.57 | 2.96 | 2.86 | |
An entry is in bold if the RMSD for the method is >0.2 Å lower than that of the next most accurate method.
aCoverage is assessed over the transmembrane domain.
bRMSD is assessed over common residues in all the models in the transmembrane domain.