Zhang Ting, Wang Ju-Fang, Feng Yan-Ye, Yang Zhong, Ma Li, Wang Xiao-Ning
State Key Laboratory of Bioreactor Engineering, East China University of Science and Technology, Shanghai 200237, China.
Nan Fang Yi Ke Da Xue Xue Bao. 2009 Nov;29(11):2156-60.
To establish a prediction method for the refolding of inclusion bodies and classify refolding types of different inclusion bodies directly from their primary structure to improve the efficiency of high throughput refolding process.
Forty-three recombinant proteins performing important biological functions were expressed in E. coli. The probability of forming inclusion bodies of these proteins was predicted using Harrison's two parameter prediction model based on the proteins' amino acid composition. Subsequently, the proteins from the inclusion bodies were refolded using a double denaturation method that involved washing and denaturation in GdnHCl solution followed by denaturation in Urea solution and refolding through dilution.
All the proteins were detected in the form of inclusion bodies using SDS-PAGE method. The proteins were divided into two types according to the results of both solubility prediction and refolding experiments. Fourteen proteins were predicted to have the dependency of soluble expression. The refolding yields of these inclusion bodies were up to 70%. Twenty-nine proteins were predicted to have the high dependency of insoluble expression, and their refolding yields could be higher than 70% and lower than 60%. Comparison of the characteristics between the proteins with high and low refolding yields showed that the theoretical pI was significantly different (P<0.05).
Harrison's two parameter prediction model has the value for potential application in classification of the inclusion bodies and prediction of solubility of proteins refolded from different inclusion bodies. This a novel method enhances the efficiency of high throughput refolding of inclusion bodies, and suggests that the theoretical pI of the proteins is an important parameter in the prediction of refolding yields.
建立一种包涵体复性的预测方法,并直接根据不同包涵体的一级结构对其复性类型进行分类,以提高高通量复性过程的效率。
在大肠杆菌中表达43种具有重要生物学功能的重组蛋白。基于这些蛋白的氨基酸组成,使用哈里森双参数预测模型预测这些蛋白形成包涵体的概率。随后,采用双重变性方法对包涵体中的蛋白进行复性,该方法包括在盐酸胍溶液中洗涤和变性,然后在尿素溶液中变性,并通过稀释进行复性。
使用SDS-PAGE方法检测到所有蛋白均以包涵体形式存在。根据溶解度预测和复性实验结果,将这些蛋白分为两种类型。预测有14种蛋白具有可溶性表达依赖性。这些包涵体的复性产率高达70%。预测有29种蛋白具有不溶性表达的高度依赖性,其复性产率可能高于70%且低于60%。对复性产率高和低的蛋白的特性进行比较,结果显示理论pI有显著差异(P<0.05)。
哈里森双参数预测模型在包涵体分类以及预测不同包涵体复性蛋白的溶解度方面具有潜在应用价值。这是一种提高包涵体高通量复性效率的新方法,表明蛋白的理论pI是预测复性产率的一个重要参数。