High-resolution de novo structure prediction from primary sequence
Helix (United States) · Westlake University · +1 more institution
Abstract
Abstract Recent breakthroughs have used deep learning to exploit evolutionary information in multiple sequence alignments (MSAs) to accurately predict protein structures. However, MSAs of homologous proteins are not always available, such as with orphan proteins or fast-evolving proteins like antibodies, and a protein typically folds in a natural setting from its primary amino acid sequence into its three-dimensional structure, suggesting that evolutionary information and MSAs should not be necessary to predict a protein’s folded form. Here, we introduce OmegaFold, the first computational method to successfully predict high-resolution protein structure from a single primary sequence alone. Using a new…
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Authors
12Topics & keywords
- Computer science
- Computational biology
- Protein structure prediction
- Protein structure
- Sequence (biology)
- Protein family
- Protein folding
- Protein sequencing