2021
DOI: 10.48550/arxiv.2112.12033
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Encoding protein dynamic information in graph representation for functional residue identification

Abstract: Recent advances in protein function prediction exploit graph-based deep learning approaches to correlate the structural and topological features of proteins with their molecular functions. However, proteins in vivo are not static but dynamic molecules that alter conformation for functional purposes. Here we apply normal mode analysis to native protein conformations and augment protein graphs by connecting edges between dynamically correlated residue pairs. In the multilabel function classification task, our me… Show more

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