表面电荷
静电学
静电
蛋白质稳定性
圆二色性
化学物理
表面蛋白
化学
氢键
理论(学习稳定性)
电荷(物理)
蛋白质结构
蛋白质工程
溶剂
结晶学
分子
物理化学
有机化学
物理
生物化学
计算机科学
生物
病毒学
酶
机器学习
量子力学
作者
Samantha Strickler,Alexey V. Gribenko,Alexander V. Gribenko,Timothy R. Keiffer,Jessica M. Tomlinson,Tracey Reihle,Vakhtang V. Loladze,George I. Makhatadze
出处
期刊:Biochemistry
[American Chemical Society]
日期:2006-02-07
卷期号:45 (9): 2761-2766
被引量:307
摘要
Engineering proteins to withstand a broad range of conditions continues to be a coveted objective, holding the potential to advance biomedicine, industry, and our understanding of disease. One way of achieving this goal lies in elucidating the underlying interactions that define protein stability. It has been shown that the hydrophobic effect, hydrogen bonding, and packing interactions between residues in the protein interior are dominant factors that define protein stability. The role of surface residues in protein stability has received much less attention. It has been believed that surface residues are not important for protein stability particularly because their interactions with the solvent should be similar in the native and unfolded states. In the case of surface charged residues, it was sometimes argued that solvent exposure meant that the high dielectric of the solvent will further decrease the strength of the charge-charge interactions. In this paper, we challenge the notion that the surface charged residues are not important for protein stability. We computationally redesigned sequences of five different proteins to optimize the surface charge-charge interactions. All redesigned proteins exhibited a significant increase in stability relative to their parent proteins, as experimentally determined by circular dichroism spectroscopy and differential scanning calorimetry. These results suggest that surface charge-charge interactions are important for protein stability and that rational optimization of charge-charge interactions on the protein surface can be a viable strategy for enhancing protein stability.
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