Clonal array profiling of scFv-displaying phages for high-throughput discovery of affinity-matured antibody mutants

scFv 展示噬菌体的克隆阵列分析,用于高通量发现亲和力成熟的抗体突变体

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作者:Yuki Kiguchi, Hiroyuki Oyama, Izumi Morita, Mai Morikawa, Asuka Nakano, Wakana Fujihara, Yukari Inoue, Megumi Sasaki, Yuki Saijo, Yuki Kanemoto, Kaho Murayama, Yuki Baba, Atsuko Takeuchi, Norihiro Kobayashi

Abstract

"Antibody-breeding" approach potentially generates therapeutic/diagnostic antibody mutants with greater performance than native antibodies. Therein, antibody fragments (e.g., single-chain Fv fragments; scFvs) with a variety of mutations are displayed on bacteriophage to generate diverse phage-antibody libraries. Rare clones with improved functions are then selected via panning against immobilized or tagged target antigens. However, this selection process often ended unsuccessful, mainly due to the biased propagation of phage-antibody clones and the competition with a large excess of undesirable clones with weaker affinities. To break radically from such panning-inherent problems, we developed a novel method, clonal array profiling of scFv-displaying phages (CAP), in which colonies of the initial bacterial libraries are examined one-by-one in microwells. Progenies of scFv-displaying phages generated are, if show sufficient affinity to target antigen, captured in the microwell via pre-coated antigen and detected using a luciferase-fused anti-phage scFv. The advantage of CAP was evidenced by its application with a small error-prone-PCR-based library (~ 105 colonies) of anti-cortisol scFvs. Only two operations, each surveying only ~ 3% of the library (9,400 colonies), provided five mutants showing 32-63-fold improved Ka values (> 1010 M-1), compared with the wild-type scFv (Ka = 3.8 × 108 M-1), none of which could be recovered via conventional panning procedures operated for the entire library.

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