4.7 Article

ZetaDesign: an end-to-end deep learning method for protein sequence design and side-chain packing

Journal

BRIEFINGS IN BIOINFORMATICS
Volume -, Issue -, Pages -

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bib/bbad257

Keywords

Protein sequence design; Deep learning; High structural accuracy; Fixed-backbone design

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Computational protein design is the most powerful tool in protein designing and repacking tasks. A new systematic approach, combining posterior probability and joint probability, is proposed to solve the design problems. This approach considers the physicochemical property of amino acids and ensures the convergence between structure and amino acid type using the joint probability model. The results show that this method can generate feasible, high-confidence sequences with low-energy side conformations.
Computational protein design has been demonstrated to be the most powerful tool in the last few years among protein designing and repacking tasks. In practice, these two tasks are strongly related but often treated separately. Besides, state-of-the-art deep-learning-based methods cannot provide interpretability from an energy perspective, affecting the accuracy of the design. Here we propose a new systematic approach, including both a posterior probability and a joint probability parts, to solve the two essential questions once for all. This approach takes the physicochemical property of amino acids into consideration and uses the joint probability model to ensure the convergence between structure and amino acid type. Our results demonstrated that this method could generate feasible, high-confidence sequences with low-energy side conformations. The designed sequences can fold into target structures with high confidence and maintain relatively stable biochemical properties. The side chain conformation has a significantly lower energy landscape without delegating to a rotamer library or performing the expensive conformational searches. Overall, we propose an end-to-end method that combines the advantages of both deep learning and energy-based methods. The design results of this model demonstrate high efficiency, and precision, as well as a low energy state and good interpretability.

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