Machine learning in protein structure prediction |
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Affiliation: | 1. Program for Mathematical Genomics, Columbia University, New York, NY, USA;2. Department of Systems Biology, Columbia University, New York, NY, USA |
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Abstract: | ![](https://cache.aipub.cn/images/ars.els-cdn.com/content/image/1-s2.0-s1367593121000508-gr1.jpg) Prediction of protein structure from sequence has been intensely studied for many decades, owing to the problem's importance and its uniquely well-defined physical and computational bases. While progress has historically ebbed and flowed, the past two years saw dramatic advances driven by the increasing “neuralization” of structure prediction pipelines, whereby computations previously based on energy models and sampling procedures are replaced by neural networks. The extraction of physical contacts from the evolutionary record; the distillation of sequence–structure patterns from known structures; the incorporation of templates from homologs in the Protein Databank; and the refinement of coarsely predicted structures into finely resolved ones have all been reformulated using neural networks. Cumulatively, this transformation has resulted in algorithms that can now predict single protein domains with a median accuracy of 2.1 Å, setting the stage for a foundational reconfiguration of the role of biomolecular modeling within the life sciences. |
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Keywords: | Protein structure prediction Machine learning Deep learning Alphafold Protein folding Biophysics Protein modeling Protein design Protein structure |
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