Chapter title |
Combining Phage and Yeast Cell Surface Antibody Display to Identify Novel Cell Type-Selective Internalizing Human Monoclonal Antibodies.
|
---|---|
Chapter number | 3 |
Book title |
Yeast Surface Display
|
Published in |
Methods in molecular biology, January 2015
|
DOI | 10.1007/978-1-4939-2748-7_3 |
Pubmed ID | |
Book ISBNs |
978-1-4939-2747-0, 978-1-4939-2748-7
|
Authors |
Bidlingmaier, Scott, Su, Yang, Liu, Bin, Scott Bidlingmaier, Yang Su, Bin Liu |
Abstract |
Using phage antibody display, large libraries can be generated and screened to identify monoclonal antibodies with affinity for target antigens. However, while library size and diversity is an advantage of the phage display method, there is limited ability to quantitatively enrich for specific binding properties such as affinity. One way of overcoming this limitation is to combine the scale of phage display selections with the flexibility and quantitativeness of FACS-based yeast surface display selections. In this chapter we describe protocols for generating yeast surface antibody display libraries using phage antibody display selection outputs as starting material and FACS-based enrichment of target antigen-binding clones from these libraries. These methods should be widely applicable for the identification of monoclonal antibodies with specific binding properties. |
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