AB‐Bind: Antibody binding mutational database for computational affinity predictions |
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Authors: | Sarah Sirin James R. Apgar Eric M. Bennett Amy E. Keating |
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Affiliation: | 1. Department of Biology, Massachusetts Institute of Technology, Cambridge, Massachusetts;2. Global Biotherapeutics Technologies, Pfizer Inc, Cambridge, Massachusetts;3. Department of Biological Engineering, Massachusetts Institute of Technology, Cambridge, Massachusetts |
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Abstract: | Antibodies (Abs) are a crucial component of the immune system and are often used as diagnostic and therapeutic agents. The need for high‐affinity and high‐specificity antibodies in research and medicine is driving the development of computational tools for accelerating antibody design and discovery. We report a diverse set of antibody binding data with accompanying structures that can be used to evaluate methods for modeling antibody interactions. Our Antibody‐Bind (AB‐Bind) database includes 1101 mutants with experimentally determined changes in binding free energies (ΔΔG) across 32 complexes. Using the AB‐Bind data set, we evaluated the performance of protein scoring potentials in their ability to predict changes in binding free energies upon mutagenesis. Numerical correlations between computed and observed ΔΔG values were low (r = 0.16–0.45), but the potentials exhibited predictive power for classifying variants as improved vs weakened binders. Performance was evaluated using the area under the curve (AUC) for receiver operator characteristic (ROC) curves; the highest AUC values for 527 mutants with |ΔΔG| > 1.0 kcal/mol were 0.81, 0.87, and 0.88 using STATIUM, FoldX, and Discovery Studio scoring potentials, respectively. Some methods could also enrich for variants with improved binding affinity; FoldX and Discovery Studio were able to correctly rank 42% and 30%, respectively, of the 80 most improved binders (those with ΔΔG < −1.0 kcal/mol) in the top 5% of the database. This modest predictive performance has value but demonstrates the continuing need to develop and improve protein energy functions for affinity prediction. |
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Keywords: | protein– protein interactions antibody affinity antibody mutagenesis mutational database affinity optimization computational affinity prediction structure‐based modeling protein interface design scoring interface mutations |
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