| Literature DB >> 26214389 |
Jiong Zhang1, Bogdan Barz1, Jingfen Zhang2, Dong Xu2, Ioan Kosztin1.
Abstract
In recent years in silico protein structure prediction reached a level where fully automated servers can generate large pools of near-native structures. However, the identification and further refinement of the best structures from the pool of models remain problematic. To address these issues, we have developed (i) a target-specific selective refinement (SR) protocol; and (ii) molecular dynamics (MD) simulation based ranking (SMDR) method. In SR the all-atom refinement of structures is accomplished via the Rosetta Relax protocol, subject to specific constraints determined by the size and complexity of the target. The best-refined models are selected with SMDR by testing their relative stability against gradual heating through all-atom MD simulations. Through extensive testing we have found that Mufold-MD, our fully automated protein structure prediction server updated with the SR and SMDR modules consistently outperformed its previous versions.Entities:
Keywords: CASP; MDR ranking; model refinement; protein structure prediction; protein structure quality assessment
Mesh:
Substances:
Year: 2015 PMID: 26214389 PMCID: PMC4700123 DOI: 10.1002/prot.24866
Source DB: PubMed Journal: Proteins ISSN: 0887-3585