Hayes Robert J, Bentzien Jorg, Ary Marie L, Hwang Marian Y, Jacinto Jonathan M, Vielmetter Jöst, Kundu Anirban, Dahiyat Bassil I
Xencor, 111 West Lemon Avenue, Monrovia, CA 91016, USA.
Proc Natl Acad Sci U S A. 2002 Dec 10;99(25):15926-31. doi: 10.1073/pnas.212627499. Epub 2002 Nov 21.
We present a combined computational and experimental method for the rapid optimization of proteins. Using beta-lactamase as a test case, we redesigned the active site region using our Protein Design Automation technology as a computational screen to search the entire sequence space. By eliminating sequences incompatible with the protein fold, Protein Design Automation rapidly reduced the number of sequences to a size amenable to experimental screening, resulting in a library of approximately equal 200,000 mutants. These were then constructed and experimentally screened to select for variants with improved resistance to the antibiotic cefotaxime. In a single round, we obtained variants exhibiting a 1,280-fold increase in resistance. To our knowledge, all of the mutations were novel, i.e., they have not been identified as beneficial by random mutagenesis or DNA shuffling or seen in any of the naturally occurring TEM beta-lactamases, the most prevalent type of Gram-negative beta-lactamases. This combined approach allows for the rapid improvement of any property that can be screened experimentally and provides a powerful broadly applicable tool for protein engineering.
我们提出了一种用于蛋白质快速优化的计算与实验相结合的方法。以β-内酰胺酶作为测试案例,我们使用蛋白质设计自动化技术作为计算筛选工具,对活性位点区域进行重新设计,以搜索整个序列空间。通过剔除与蛋白质折叠不兼容的序列,蛋白质设计自动化技术迅速将序列数量减少到适合实验筛选的规模,从而得到了一个约20万个突变体的文库。然后构建这些突变体并进行实验筛选,以选择对头孢噻肟抗生素具有更高抗性的变体。在一轮实验中,我们获得了抗性提高1280倍的变体。据我们所知,所有这些突变都是新的,也就是说,它们在随机诱变或DNA改组中未被鉴定为有益突变,在任何天然存在的TEMβ-内酰胺酶(革兰氏阴性β-内酰胺酶中最常见的类型)中也未出现过。这种结合的方法能够快速改善任何可通过实验筛选的特性,并为蛋白质工程提供了一种强大的、广泛适用的工具。