金属蛋白
合理设计
活动站点
化学
蛋白质设计
蛋白质数据库
肌红蛋白
蛋白质结构
配体(生物化学)
功能(生物学)
生物信息学
结构生物信息学
生物化学
酶
纳米技术
生物
材料科学
进化生物学
基因
受体
作者
Natasha Yeung,Yi Lin,Yi Gao,Xuan Zhao,Brandy S. Russell,Lei Liu,Kyle D. Miner,Howard Robinson,Yi Lu
出处
期刊:Nature
[Springer Nature]
日期:2009-11-25
卷期号:462 (7276): 1079-1082
被引量:216
摘要
Protein design provides a rigorous test of our knowledge about proteins and allows the creation of novel enzymes for biotechnological applications. Whereas progress has been made in designing proteins that mimic native proteins structurally, it is more difficult to design functional proteins. In comparison to recent successes in designing non-metalloproteins, it is even more challenging to rationally design metalloproteins that reproduce both the structure and function of native metalloenzymes. This is because protein metal-binding sites are much more varied than non-metal-containing sites, in terms of different metal ion oxidation states, preferred geometry and metal ion ligand donor sets. Because of their variability, it has been difficult to predict metal-binding site properties in silico, as many of the parameters, such as force fields, are ill-defined. Therefore, the successful design of a structural and functional metalloprotein would greatly advance the field of protein design and our understanding of enzymes. Here we report a successful, rational design of a structural and functional model of a metalloprotein, nitric oxide reductase (NOR), by introducing three histidines and one glutamate, predicted as ligands in the active site of NOR, into the distal pocket of myoglobin. A crystal structure of the designed protein confirms that the minimized computer model contains a haem/non-haem Fe(B) centre that is remarkably similar to that in the crystal structure. This designed protein also exhibits NO reduction activity, and so models both the structure and function of NOR, offering insight that the active site glutamate is required for both iron binding and activity. These results show that structural and functional metalloproteins can be rationally designed in silico.
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