Litcius/Paper detail

Antibody structure prediction using interpretable deep learning

Jeffrey A. Ruffolo, Jeremias Sulam, Jeffrey J. Gray

2021Patterns212 citationsDOIOpen Access PDF

Abstract

structures from sequence. We evaluate DeepAb on a set of structurally diverse, therapeutically relevant antibodies and find that our method consistently outperforms the leading alternatives. Previous deep learning methods have operated as "black boxes" and offered few insights into their predictions. By introducing a directly interpretable attention mechanism, we show our network attends to physically important residue pairs (e.g., proximal aromatics and key hydrogen bonding interactions). Finally, we present a novel mutant scoring metric derived from network confidence and show that for a particular antibody, all eight of the top-ranked mutations improve binding affinity. This model will be useful for a broad range of antibody prediction and design tasks.

Topics & Concepts

Deep learningComputer scienceArtificial intelligenceMetric (unit)AntibodyMachine learningSet (abstract data type)Computational biologyBiologyImmunologyEngineeringProgramming languageOperations managementMonoclonal and Polyclonal Antibodies Researchvaccines and immunoinformatics approachesProtein purification and stability