3.8 Article

Machine learning methods for protein-protein binding affinity prediction in protein design

期刊

FRONTIERS IN BIOINFORMATICS
卷 2, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fbinf.2022.1065703

关键词

machine learning; deep neural network; protein-protein interaction; binding affinity; protein design

资金

  1. This work was supported by KAKENHI grants (22K18003, 21K19939) from the Japan Society of the Promotion of Science and grants from the Uehara Memorial Foundation. [22K18003, 21K19939]
  2. KAKENHI grants
  3. Japan Society of the Promotion of Science
  4. Uehara Memorial Foundation

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Protein-protein interactions play a crucial role in biological activity. The rapid development of machine learning methods for predicting protein-protein binding affinity has opened up new possibilities for protein design.
Protein-protein interactions govern a wide range of biological activity. A proper estimation of the protein-protein binding affinity is vital to design proteins with high specificity and binding affinity toward a target protein, which has a variety of applications including antibody design in immunotherapy, enzyme engineering for reaction optimization, and construction of biosensors. However, experimental and theoretical modelling methods are time-consuming, hinder the exploration of the entire protein space, and deter the identification of optimal proteins that meet the requirements of practical applications. In recent years, the rapid development in machine learning methods for protein-protein binding affinity prediction has revealed the potential of a paradigm shift in protein design. Here, we review the prediction methods and associated datasets and discuss the requirements and construction methods of binding affinity prediction models for protein design.

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