Publication | Open Access
De novo design of high-affinity protein binders with AlphaProteo
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2024
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Protein AssemblyMolecular BiologyProtein-binding ProteinsProtein FoldingHigh-affinity Protein BindersProteomicsStructure-based Drug DesignProtein ModelingProtein Structure PredictionBioinformaticsTarget PredictionProtein BioinformaticsStructural BiologyNatural SciencesPeptide LibraryComputational BiologyBinder Design ProblemProtein EngineeringSystems BiologyMedicineHigh-throughput Screening
Computational design of protein-binding proteins is a fundamental capability with broad utility in biomedical research and biotechnology. Recent methods have made strides against some target proteins, but on-demand creation of high-affinity binders without multiple rounds of experimental testing remains an unsolved challenge. This technical report introduces AlphaProteo, a family of machine learning models for protein design, and details its performance on the de novo binder design problem. With AlphaProteo, we achieve 3- to 300-fold better binding affinities and higher experimental success rates than the best existing methods on seven target proteins. Our results suggest that AlphaProteo can generate binders "ready-to-use" for many research applications using only one round of medium-throughput screening and no further optimization.