Author: Eguchi, Raphael R.; Anand, Namrata; Choe, Christian A.; Huang, Po-Ssu
                    Title: IG-VAE: Generative Modeling of Immunoglobulin Proteins by Direct 3D Coordinate Generation  Cord-id: d440jsek  Document date: 2020_8_10
                    ID: d440jsek
                    
                    Snippet: While deep learning models have seen increasing applications in protein science, few have been implemented for protein backbone generation—an important task in structure-based problems such as active site and interface design. We present a new approach to building class-specific backbones, using a variational auto-encoder to directly generate the 3D coordinates of immunoglobulins. Our model is torsion- and distance-aware, learns a high-resolution embedding of the dataset, and generates novel, 
                    
                    
                    
                     
                    
                    
                    
                    
                        
                            
                                Document: While deep learning models have seen increasing applications in protein science, few have been implemented for protein backbone generation—an important task in structure-based problems such as active site and interface design. We present a new approach to building class-specific backbones, using a variational auto-encoder to directly generate the 3D coordinates of immunoglobulins. Our model is torsion- and distance-aware, learns a high-resolution embedding of the dataset, and generates novel, high-quality structures compatible with existing design tools. We show that the Ig-VAE can be used to create a computational model of a SARS-CoV2-RBD binder via latent space sampling. We further demonstrate that the model’s generative prior is a powerful tool for guiding computational protein design, motivating a new paradigm under which backbone design is solved as constrained optimization problem in the latent space of a generative model.
 
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