| Literature DB >> 35898310 |
Sian Xiao1, Hao Tian1, Peng Tao1.
Abstract
Allostery is a fundamental process in regulating protein activities. The discovery, design, and development of allosteric drugs demand better identification of allosteric sites. Several computational methods have been developed previously to predict allosteric sites using static pocket features and protein dynamics. Here, we define a baseline model for allosteric site prediction and present a computational model using automated machine learning. Our model, PASSer2.0, advanced the previous results and performed well across multiple indicators with 82.7% of allosteric pockets appearing among the top three positions. The trained machine learning model has been integrated with the Protein Allosteric Sites Server (PASSer) to facilitate allosteric drug discovery.Entities:
Keywords: allosteric site prediction; allostery; automated machine learning (AutoML); deep learning; machine learning
Year: 2022 PMID: 35898310 PMCID: PMC9309527 DOI: 10.3389/fmolb.2022.879251
Source DB: PubMed Journal: Front Mol Biosci ISSN: 2296-889X