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Re-refinement from deposited X-ray data can deliver improved models for most PDB entries.
- Source :
- Acta Crystallographica Section D-Biological Crystallography; 176; 185; 0907-4449; Pt 2; 65; ~Acta Crystallographica Section D-Biological Crystallography~176~185~~~0907-4449~Pt 2~65~~
- Publication Year :
- 2009
-
Abstract
- Contains fulltext : 75976.pdf (publisher's version ) (Closed access)<br />The deposition of X-ray data along with the customary structural models defining PDB entries makes it possible to apply large-scale re-refinement protocols to these entries, thus giving users the benefit of improvements in X-ray methods that have occurred since the structure was deposited. Automated gradient refinement is an effective method to achieve this goal, but real-space intervention is most often required in order to adequately address problems detected by structure-validation software. In order to improve the existing protocol, automated re-refinement was combined with structure validation and difference-density peak analysis to produce a catalogue of problems in PDB entries that are amenable to automatic correction. It is shown that re-refinement can be effective in producing improvements, which are often associated with the systematic use of the TLS parameterization of B factors, even for relatively new and high-resolution PDB entries, while the accompanying manual or semi-manual map analysis and fitting steps show good prospects for eventual automation. It is proposed that the potential for simultaneous improvements in methods and in re-refinement results be further encouraged by broadening the scope of depositions to include refinement metadata and ultimately primary rather than reduced X-ray data.
Details
- Database :
- OAIster
- Journal :
- Acta Crystallographica Section D-Biological Crystallography; 176; 185; 0907-4449; Pt 2; 65; ~Acta Crystallographica Section D-Biological Crystallography~176~185~~~0907-4449~Pt 2~65~~
- Publication Type :
- Electronic Resource
- Accession number :
- edsoai.on1247176805
- Document Type :
- Electronic Resource