AI-enhanced profiling of phage-display-identified anti-TIM3 and anti-TIGIT novel antibodies.

利用人工智能增强噬菌体展示技术鉴定的抗TIM3和抗TIGIT新型抗体的分析

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作者:Musnier Astrid, Corde Yannick, Verdier Adrien, Cortes Mélanie, Pallandre Jean-René, Dumet Christophe, Bouard Adeline, Keskes AbdelRaouf, Omahdi Zakaria, Puard Vincent, Poupon Anne, Bourquard Thomas
Antibody discovery is a lengthy and labor-intensive process, requiring extensive laboratory work to ensure that an antibody demonstrates the appropriate efficacy, production, and safety characteristics necessary for its use as a therapeutic agent in human patients. Traditionally, this process begins with phage display or B-cells isolation campaigns, where affinity serves as the primary selection criterion. However, the initial leads identified through this approach lack sufficient characterization in terms of developability and epitope definition, which are typically performed at late stages. In this study, we present a pipeline that integrates early-stage phage display screening with AI-based characterization, enabling more informed decision-making throughout the selection process. Using immune checkpoints TIM3 and TIGIT as targets, we identified five initial leads exhibiting similar binding properties. Two of these leads were predicted to have poor developability profiles due to unfavorable surface physicochemical properties. Of the remaining three candidates, structural models of the complexes formed with their respective targets were generated for 2: T4 (against TIGIT) and 6E9 (against TIM3). The predicted epitopes allowed us to anticipate a competition with TIM3 and TIGIT binding partners, and to infer the antagonistic functions expected from these antibodies. This study lays the foundations of a multidimensional AI-driven selection of lead candidates derived from high throughput analysis.

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