Data mining crystallization databases: Knowledge‐based approaches to optimize protein crystal screens
- 5 May 2003
- journal article
- research article
- Published by Wiley in Proteins-Structure Function and Bioinformatics
- Vol. 51 (4) , 562-568
- https://doi.org/10.1002/prot.10340
Abstract
Protein crystallization is a major bottleneck in protein X‐ray crystallography, the workhorse of most structural proteomics projects. Because the principles that govern protein crystallization are too poorly understood to allow them to be used in a strongly predictive sense, the most common crystallization strategy entails screening a wide variety of solution conditions to identify the small subset that will support crystal nucleation and growth. We tested the hypothesis that more efficient crystallization strategies could be formulated by extracting useful patterns and correlations from the large data sets of crystallization trials created in structural proteomics projects. A database of crystallization conditions was constructed for 755 different proteins purified and crystallized under uniform conditions. Forty‐five percent of the proteins formed crystals. Data mining identified the conditions that crystallize the most proteins, revealed that many conditions are highly correlated in their behavior, and showed that the crystallization success rate is markedly dependent on the organism from which proteins derive. Of the proteins that crystallized in a 48‐condition experiment, 60% could be crystallized in as few as 6 conditions and 94% in 24 conditions. Consideration of the full range of information coming from crystal screening trials allows one to design screens that are maximally productive while consuming minimal resources, and also suggests further useful conditions for extending existing screens. Proteins 2003;51:562–568.Keywords
This publication has 13 references indexed in Scilit:
- Structure of Thermotoga maritima Stationary Phase Survival Protein SurEStructure, 2001
- Completeness in structural genomicsNature Structural & Molecular Biology, 2001
- PhyloDraw: a phylogenetic tree drawing systemBioinformatics, 2000
- Structural proteomics of an archaeon.Nature Structural & Molecular Biology, 2000
- Improving protein crystal quality by decoupling nucleation and growth in vapor diffusionProtein Science, 2000
- Rapid Crystallization of Chemically Synthesized Hammerhead RNAs using a Double Screening ProcedureJournal of Molecular Biology, 1995
- Screening and optimization strategies for macromolecular crystal growthActa Crystallographica Section D-Biological Crystallography, 1994
- Biological Macromolecule Crystallization Database, Version 3.0: new features, data and the NASA archive for protein crystal growth dataActa Crystallographica Section D-Biological Crystallography, 1994
- Search designs for protein crystallization based on orthogonal arraysActa Crystallographica Section D-Biological Crystallography, 1994
- Sparse matrix sampling: a screening method for crystallization of proteinsJournal of Applied Crystallography, 1991