作者
Vinícius Zambaldi,David La,Alexander E. Chu,Harshnira Patani,Amy E. Danson,Tristan O. C. Kwan,Thomas Frerix,Rosalia G. Schneider,David Saxton,Ashok Thillaisundaram,Zachary Wu,Isabel Moraes,O. Lange,Eliseo Papa,Gabriella Stanton,Victor S. Martı́n,Sukhdeep Singh,Lai Hong Wong,Russ Bates,Simon Kohl,Josh Abramson,Andrew Senior,Yilmaz Alguel,Mary Wu,Irene M. Aspalter,Katie Bentley,David L.V. Bauer,Peter Cherepanov,Demis Hassabis,Pushmeet Kohli,Rob Fergus,Jue Wang
摘要
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.