Lehrstuhl für Bioverfahrenstechnik, Technische Universität München, Boltzmannstr. 15, D-85748 Garching, Germany.
Protein Sci. 2010 Nov;19(11):2085-95. doi: 10.1002/pro.488.
Refolding of proteins from solubilized inclusion bodies still represents a major challenge for many recombinantly expressed proteins and often constitutes a major bottleneck. As in vitro refolding is a complex reaction with a variety of critical parameters, suitable refolding conditions are typically derived empirically in extensive screening experiments. Here, we introduce a new strategy that combines screening and optimization of refolding yields with a genetic algorithm (GA). The experimental setup was designed to achieve a robust and universal method that should allow optimizing the folding of a variety of proteins with the same routine procedure guided by the GA. In the screen, we incorporated a large number of common refolding additives and conditions. Using this design, the refolding of four structurally and functionally different model proteins was optimized experimentally, achieving 74-100% refolding yield for all of them. Interestingly, our results show that this new strategy provides optimum conditions not only for refolding but also for the activity of the native enzyme. It is designed to be generally applicable and seems to be eligible for all enzymes.
从可溶包涵体中复性蛋白质仍然是许多重组表达蛋白质的主要挑战,通常是主要的瓶颈。由于体外复性是一个具有多种关键参数的复杂反应,因此合适的复性条件通常需要通过广泛的筛选实验来经验性地获得。在这里,我们介绍了一种新的策略,该策略将复性产率的筛选和优化与遗传算法(GA)相结合。该实验设计旨在实现一种稳健且通用的方法,该方法应该允许通过 GA 指导的相同常规程序来优化各种蛋白质的折叠。在筛选中,我们合并了大量常见的复性添加剂和条件。使用此设计,我们对四种结构和功能不同的模型蛋白进行了实验优化,使它们的复性产率达到了 74%-100%。有趣的是,我们的结果表明,这种新策略不仅为复性提供了最佳条件,而且为天然酶的活性提供了最佳条件。它旨在普遍适用,似乎适用于所有酶。