| Literature DB >> 33972018 |
Yann Vander Meersche1, Gabriel Cretin1, Alexandre G de Brevern1, Jean-Christophe Gelly2, Tatiana Galochkina3.
Abstract
Information on the protein flexibility is essential to understand crucial molecular mechanisms such as protein stability, interactions with other molecules and protein functions in general. B-factor obtained in the X-ray crystallography experiments is the most common flexibility descriptor available for the majority of the resolved protein structures. Since the gap between the number of the resolved protein structures and available protein sequences is continuously growing, it is important to provide computational tools for protein flexibility prediction from amino acid sequence. In the current study, we report a Deep Learning based protein flexibility prediction tool MEDUSA (https://www.dsimb.inserm.fr/MEDUSA). MEDUSA uses evolutionary information extracted from protein homologous sequences and amino acid physico-chemical properties as input for a convolutional neural network to assign a flexibility class to each protein sequence position. Trained on a non-redundant dataset of X-ray structures, MEDUSA provides flexibility prediction in two, three and five classes. MEDUSA is freely available as a web-server providing a clear visualization of the prediction results as well as a standalone utility (https://github.com/DSIMB/medusa). Analysis of the MEDUSA output allows a user to identify the potentially highly deformable protein regions and general dynamic properties of the protein.Keywords: B-factor; deep learning; prediction tool; protein flexibility; protein structure
Year: 2021 PMID: 33972018 DOI: 10.1016/j.jmb.2021.166882
Source DB: PubMed Journal: J Mol Biol ISSN: 0022-2836 Impact factor: 5.469