Facile generation of antibody heavy and light chain diversities for yeast surface display by Golden Gate Cloning

Author:

Roth Lukas1,Grzeschik Julius1,Hinz Steffen C.1,Becker Stefan2,Toleikis Lars2,Busch Michael3,Kolmar Harald1,Krah Simon2,Zielonka Stefan2

Affiliation:

1. Institute for Organic Chemistry and Biochemistry , Technische Universität Darmstadt , Alarich-Weiss-Strasse 4 , D-64287 Darmstadt , Germany

2. Protein Engineering and Antibody Technologies, Merck KGaA , Frankfurter Strasse 250 , D-64293 Darmstadt , Germany

3. Discovery Pharmacology, Merck KGaA , Frankfurter Strasse 250 , D-64293 Darmstadt , Germany

Abstract

Abstract Antibodies can be successfully engineered and isolated by yeast or phage display of combinatorial libraries. Still, generation of libraries comprising heavy chain as well as light chain diversities is a cumbersome process involving multiple steps. Within this study, we set out to compare the output of yeast display screening of antibody Fab libraries from immunized rodents that were generated by Golden Gate Cloning (GGC) with the conventional three-step method of individual heavy- and light-chain sub-library construction followed by chain combination via yeast mating (YM). We demonstrate that the GGC-based one-step process delivers libraries and antibodies from heavy- and light-chain diversities with similar quality to the traditional method while being significantly less complex and faster. Additionally, we show that this method can also be used to successfully screen and isolate chimeric chicken/human antibodies following avian immunization.

Publisher

Walter de Gruyter GmbH

Subject

Clinical Biochemistry,Molecular Biology,Biochemistry

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