mit-ll/AlphaSeq_Antibody_Dataset
Dataset with quantitative binding scores of scFv-format antibodies against SARS-CoV-2 target peptide
This dataset provides quantitative binding scores for scFv-format antibodies against a SARS-CoV-2 target peptide, measured using an AlphaSeq assay. It offers crucial experimental data for researchers developing new methods to predict or design effective antibodies. Scientists working on protein engineering, vaccine development, or drug discovery will find this resource valuable for training and validating their computational models.
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Use this if you need a high-quality, experimentally validated dataset of antibody-peptide binding affinities to train machine learning models for antibody design or affinity prediction.
Not ideal if you are looking for structural data, datasets for different antibody formats, or binding data against non-SARS-CoV-2 targets.
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Mar 30, 2023
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