PLoS Computational Biology (Aug 2020)

Computer-guided binding mode identification and affinity improvement of an LRR protein binder without structure determination.

  • Yoonjoo Choi,
  • Sukyo Jeong,
  • Jung-Min Choi,
  • Christian Ndong,
  • Karl E Griswold,
  • Chris Bailey-Kellogg,
  • Hak-Sung Kim

DOI
https://doi.org/10.1371/journal.pcbi.1008150
Journal volume & issue
Vol. 16, no. 8
p. e1008150

Abstract

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Precise binding mode identification and subsequent affinity improvement without structure determination remain a challenge in the development of therapeutic proteins. However, relevant experimental techniques are generally quite costly, and purely computational methods have been unreliable. Here, we show that integrated computational and experimental epitope localization followed by full-atom energy minimization can yield an accurate complex model structure which ultimately enables effective affinity improvement and redesign of binding specificity. As proof-of-concept, we used a leucine-rich repeat (LRR) protein binder, called a repebody (Rb), that specifically recognizes human IgG1 (hIgG1). We performed computationally-guided identification of the Rb:hIgG1 binding mode and leveraged the resulting model to reengineer the Rb so as to significantly increase its binding affinity for hIgG1 as well as redesign its specificity toward multiple IgGs from other species. Experimental structure determination verified that our Rb:hIgG1 model closely matched the co-crystal structure. Using a benchmark of other LRR protein complexes, we further demonstrated that the present approach may be broadly applicable to proteins undergoing relatively small conformational changes upon target binding.