Data-driven computational protein design
Author(s)
Frappier, Vincent; Keating, Amy E.
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Computational protein design can generate proteins not found in nature that adopt desired structures and perform novel functions. Although proteins could, in theory, be designed with ab initio methods, practical success has come from using large amounts of data that describe the sequences, structures, and functions of existing proteins and their variants. We present recent creative uses of multiple-sequence alignments, protein structures, and high-throughput functional assays in computational protein design. Approaches range from enhancing structure-based design with experimental data to building regression models to training deep neural nets that generate novel sequences. Looking ahead, deep learning will be increasingly important for maximizing the value of data for protein design.
Date issued
2021-08Department
Massachusetts Institute of Technology. Department of Biology; Massachusetts Institute of Technology. Department of Biological EngineeringJournal
Current Opinion in Structural Biology
Publisher
Elsevier BV
Citation
Frappier, Vincent and Amy E. Keating. "Data-driven computational protein design." Current Opinion in Structural Biology 69 (August 2021): 63-69. © 2021 Elsevier Ltd
Version: Author's final manuscript
ISSN
0959-440X
Keywords
Molecular Biology, Structural Biology