Anfinsen Goes Neural: a Graphical Model for Conditional Antibody Design

8 Feb 2024  ·  Nayoung Kim, Minsu Kim, Jinkyoo Park ·

Antibody design plays a pivotal role in advancing therapeutics. Although deep learning has made rapid progress in this field, existing methods make limited use of general protein knowledge and assume a graphical model (GM) that violates empirical findings on proteins. To address these limitations, we present Anfinsen Goes Neural (AGN), a graphical model that uses a pre-trained protein language model (pLM) and encodes a seminal finding on proteins called Anfinsen's dogma. Our framework follows a two-step process of sequence generation with pLM and structure prediction with graph neural network (GNN). Experiments show that our approach outperforms state-of-the-art results on benchmark experiments. We also address a critical limitation of non-autoregressive models -- namely, that they tend to generate unrealistic sequences with overly repeating tokens. To resolve this, we introduce a composition-based regularization term to the cross-entropy objective that allows an efficient trade-off between high performance and low token repetition. We demonstrate that our approach establishes a Pareto frontier over the current state-of-the-art. Our code is available at https://github.com/lkny123/AGN.

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