Computationally-driven identification of antibody epitopes

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Understanding where antibodies recognize antigens can help define mechanisms of action and provide insights into progression of immune responses. We investigate the extent to which information about binding specificity implicitly encoded in amino acid sequence can be leveraged to identify antibody epitopes. In computationally-driven epitope localization, possible antibodyantigen binding modes are modeled, and targeted panels of antigen variants are designed to experimentally test these hypotheses. Prospective application of this approach to two antibodies enabled epitope localization using five or fewer variants per antibody, or alternatively, a six-variant panel for both simultaneously. Retrospective analysis of a variety of antibodies and antigens demonstrated an almost 90% success rate with an average of three antigen variants, further supporting the observation that the combination of computational modeling and protein design can reveal key determinants of antibodyantigen binding and enable efficient studies of collections of antibodies identified from polyclonal samples or engineered libraries.
Publisher
ELIFE SCIENCES PUBLICATIONS LTD
Issue Date
2017-12
Language
English
Article Type
Article
Keywords

B-CELL EPITOPES; INFLUENZA-VIRUS HEMAGGLUTININ; EXCHANGE-MASS-SPECTROMETRY; VACCINE DESIGN; PROTEIN DOCKING; MONOCLONAL-ANTIBODIES; THERAPEUTIC PROTEINS; MOLECULAR-MECHANICS; HIV-1 ANTIBODY; IN-VIVO

Citation

ELIFE, v.6

ISSN
2050-084X
DOI
10.7554/eLife.29023
URI
http://hdl.handle.net/10203/240041
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