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Critical evaluation of bioinformatics tools for the prediction of protein crystallization propensity

结构基因组学 背景(考古学) UniProt公司 蛋白质结晶 计算机科学 结晶 选择(遗传算法) 过程(计算) 数据挖掘 计算生物学 机器学习 蛋白质结构 生物 化学 遗传学 基因 操作系统 古生物学 有机化学 生物化学
作者
Huilin Wang,Liubin Feng,Geoffrey I. Webb,Lukasz Kurgan,Jiangning Song,Donghai Lin
出处
期刊:Briefings in Bioinformatics [Oxford University Press]
卷期号:19 (5): 838-852 被引量:27
标识
DOI:10.1093/bib/bbx018
摘要

X-ray crystallography is the main tool for structural determination of proteins. Yet, the underlying crystallization process is costly, has a high attrition rate and involves a series of trial-and-error attempts to obtain diffraction-quality crystals. The Structural Genomics Consortium aims to systematically solve representative structures of major protein-fold classes using primarily high-throughput X-ray crystallography. The attrition rate of these efforts can be improved by selection of proteins that are potentially easier to be crystallized. In this context, bioinformatics approaches have been developed to predict crystallization propensities based on protein sequences. These approaches are used to facilitate prioritization of the most promising target proteins, search for alternative structural orthologues of the target proteins and suggest designs of constructs capable of potentially enhancing the likelihood of successful crystallization. We reviewed and compared nine predictors of protein crystallization propensity. Moreover, we demonstrated that integrating selected outputs from multiple predictors as candidate input features to build the predictive model results in a significantly higher predictive performance when compared to using these predictors individually. Furthermore, we also introduced a new and accurate predictor of protein crystallization propensity, Crysf, which uses functional features extracted from UniProt as inputs. This comprehensive review will assist structural biologists in selecting the most appropriate predictor, and is also beneficial for bioinformaticians to develop a new generation of predictive algorithms.
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