Foight Glenna Wink, Chen T Scott, Richman Daniel, Keating Amy E
Department of Biology, Massachusetts Institute of Technology, 77 Massachusetts Ave., Bldg., 68-622, Cambridge, MA, 02139, USA.
Department of Chemistry, University of Washington, Seattle, WA, 98195, USA.
Methods Mol Biol. 2017;1561:213-232. doi: 10.1007/978-1-4939-6798-8_13.
Peptide reagents with high affinity or specificity for their target protein interaction partner are of utility for many important applications. Optimization of peptide binding by screening large libraries is a proven and powerful approach. Libraries designed to be enriched in peptide sequences that are predicted to have desired affinity or specificity characteristics are more likely to yield success than random mutagenesis. We present a library optimization method in which the choice of amino acids to encode at each peptide position can be guided by available experimental data or structure-based predictions. We discuss how to use analysis of predicted library performance to inform rounds of library design. Finally, we include protocols for more complex library design procedures that consider the chemical diversity of the amino acids at each peptide position and optimize a library score based on a user-specified input model.
对其靶蛋白相互作用伴侣具有高亲和力或特异性的肽试剂可用于许多重要应用。通过筛选大型文库来优化肽结合是一种行之有效的强大方法。设计用于富集预测具有所需亲和力或特异性特征的肽序列的文库比随机诱变更有可能获得成功。我们提出了一种文库优化方法,其中每个肽位置编码氨基酸的选择可以由可用的实验数据或基于结构的预测来指导。我们讨论了如何使用预测文库性能的分析来指导文库设计的轮次。最后,我们纳入了更复杂文库设计程序的方案,该程序考虑了每个肽位置氨基酸的化学多样性,并根据用户指定的输入模型优化文库评分。