| Literature DB >> 26426014 |
Jianzong Li1, Yu Feng2, Xiaoyun Wang3, Jing Li1,4, Wen Liu5, Li Rong6, Jinku Bao7,8,9.
Abstract
The sequence-structure-function paradigm of proteins has been changed by the occurrence of intrinsically disordered proteins (IDPs). Benefiting from the structural disorder, IDPs are of particular importance in biological processes like regulation and signaling. IDPs are associated with human diseases, including cancer, cardiovascular disease, neurodegenerative diseases, amyloidoses, and several other maladies. IDPs attract a high level of interest and a substantial effort has been made to develop experimental and computational methods. So far, more than 70 prediction tools have been developed since 1997, within which 17 predictors were created in the last five years. Here, we presented an overview of IDPs predictors developed during 2010-2014. We analyzed the algorithms used for IDPs prediction by these tools and we also discussed the basic concept of various prediction methods for IDPs. The comparison of prediction performance among these tools is discussed as well.Entities:
Keywords: computational methods; intrinsically disordered proteins; predictor
Mesh:
Substances:
Year: 2015 PMID: 26426014 PMCID: PMC4632708 DOI: 10.3390/ijms161023446
Source DB: PubMed Journal: Int J Mol Sci ISSN: 1422-0067 Impact factor: 5.923
Description of Predictors for IDPs created during year 2010–2014.
| Name | Year | PSI-BLAST | Availability |
|---|---|---|---|
| MFDp [ | 2010 | X | X |
| PONDR-FIT [ | 2010 | X | X |
| SPA [ | 2010 | ||
| DisCon [ | 2011 | X | |
| POODLE-I [ | 2011 | X | |
| Cspritz [ | 2011 | X | X |
| MetaDisorder [ | 2012 | X | X |
| Espritz [ | 2012 | X | |
| SPINDE-D [ | 2012 | X | |
| Dndisorder [ | 2013 | X | X |
| IsUntruct [ | 2013 | X | |
| MFDp2 [ | 2013 | X | X |
| RAPID [ | 2013 | ||
| PON-Diso [ | 2014 | X | |
| DisMeta [ | 2014 | X | X |
| DisPredict [ | 2014 | ||
| DISOPRED3 [ | 2014 | X | X |
Methods are sorted in ascending order by their year of publication. X represents the predictors that are publicly available and use the PSI-BLAST profiles.
Figure 1Analysis of calcineurin using different predictors. (a) Structure of calcineurin with essential disorder. Calcineurin (PDB 1AUI, top left) is composed of a catalytic A subunit (green) and a regulatory B subunit (saffron). Calcineurin also has an autoinhibitory peptide (dark red) and a calmodulin-binding site (red) located within the disordered region that becomes ordered upon binding (PDB 2R28, top right). The bottom plot shows annotations for regions according to PDB and DisProt database respectively; (b) Graphical output from 11 new disorder predictors; (c) Graphical output of five older top performance predictors, PrDos-CNF, MetaDisorderMD2, VSL2B, RONN, IUPred (short and long). In (b,c), red dot line is threshold, above which the region is disordered (blue line) and under which the region is ordered (red dot line), and the corresponding interpretation is shown under the graph as well.
Overview statistic on different predictors.
| Predictor | No. of Disordered Residues | Total % Disorder | ACC |
|---|---|---|---|
| Metadisorder | 166 | 0.32 | 0.9804 |
| Dndisorder | 160 | 0.31 | 0.9731 |
| MetaDisorderMD2 | 184 | 0.35 | 0.9559 |
| POODLE-I | 172 | 0.33 | 0.9539 |
| Cspritz | 173 | 0.33 | 0.9001 |
| IsUnstruct | 158 | 0.30 | 0.8848 |
| PrDos-CNF | 106 | 0.20 | 0.8752 |
| RONN | 115 | 0.22 | 0.8695 |
| Espritz_NMR | 144 | 0.28 | 0.8694 |
| DISOPRED3 | 102 | 0.20 | 0.8675 |
| MFDp | 112 | 0.21 | 0.8656 |
| MFDp2 | 107 | 0.21 | 0.8618 |
| VSL2B | 178 | 0.34 | 0.8580 |
| Espritz_X-ray | 85 | 0.16 | 0.8522 |
| IUPredL | 83 | 0.16 | 0.8503 |
| IUPredS | 81 | 0.16 | 0.8234 |
| PONDR-FIT | 84 | 0.16 | 0.8215 |
| DisMeta | 69 | 0.13 | 0.8157 |
| Espritz_DisProt | 113 | 0.22 | 0.7888 |
Methods are sorted in descending order by accuracy value.