Abstract
Background: Macromolecular complexes are the molecular machines of the cell. Knowledge at the atomic level is essential
to understand and influence their function. However, their number is huge and a significant fraction is extremely difficult to
study using classical structural methods such as NMR and X-ray crystallography. Therefore, the importance of large-scale
computational approaches in structural biology is evident. This study combines two of these computational approaches,
interface prediction and docking, to obtain atomic-level structures of protein-protein complexes, starting from their
unbound components.
Methodology/Principal Findings: Here we combine six interface prediction web servers into a consensus method called
CPORT (Consensus Prediction Of interface Residues in Transient complexes). We show that CPORT gives more stable and
reliable predictions than each of the individual predictors on its own. A protocol was developed to integrate CPORT
predictions into our data-driven docking program HADDOCK. For cases where experimental information is limited, this
prediction-driven docking protocol presents an alternative to ab initio docking, the docking of complexes without the use of
any information. Prediction-driven docking was performed on a large and diverse set of protein-protein complexes in a
blind manner. Our results indicate that the performance of the HADDOCK-CPORT combination is competitive with ZDOCKZRANK,
a state-of-the-art ab initio docking/scoring combination. Finally, the original interface predictions could be further
improved by interface post-prediction (contact analysis of the docking solutions).
Conclusions/Significance: The current study shows that blind, prediction-driven docking using CPORT and HADDOCK is
competitive with ab initio docking methods. This is encouraging since prediction-driven docking represents the absolute
bottom line for data-driven docking: any additional biological knowledge will greatly improve the results obtained by
prediction-driven docking alone. Finally, the fact that original interface predictions could be further improved by interface
post-prediction suggests that prediction-driven docking has not yet been pushed to the limit. A web server for CPORT is
freely available at http://haddock.chem.uu.nl/services/CPORT.
| Original language | English |
|---|---|
| Pages (from-to) | e17695/1-e17695/12 |
| Number of pages | 12 |
| Journal | PLoS One |
| Volume | 6 |
| Issue number | 3 |
| DOIs | |
| Publication status | Published - 2011 |