Abstract
The three-dimensional structure of proteins determines their function in vital biological processes. Thus, when the structure is known, the molecular mechanism of protein function can be understood in more detail and obtained information utilized in biotechnological, diagnostics, and therapeutic applications. Over the past five years, machine learning (ML)-based modeling has pushed protein structure prediction to the next level with AlphaFold in the front line, predicting the structure for hundreds of millions of proteins. Further advances recently report promising ML-based approaches for solving remaining challenges by incorporating functionally important metals, co-factors, post-translational modifications, structural dynamics, and interdomain and multimer interactions in the structure prediction process.
Original language | English |
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Article number | 102819 |
Journal | Current Opinion in Structural Biology |
Volume | 86 |
DOIs | |
Publication status | Published - Jun 2024 |
MoE publication type | A2 Review article in a scientific journal |
Keywords
- Proteins/chemistry
- Machine Learning
- Protein Conformation
- Models, Molecular
- Computational Biology/methods