2024
DOI: 10.1093/bioinformatics/btae319
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DEAttentionDTA: protein–ligand binding affinity prediction based on dynamic embedding and self-attention

Xiying Chen,
Jinsha Huang,
Tianqiao Shen
et al.

Abstract: Motivation Predicting protein–ligand binding affinity is crucial in new drug discovery and development. However, most existing models rely on acquiring 3D structures of elusive proteins. Combining amino acid sequences with ligand sequences and better highlighting active sites are also significant challenges. Results We propose an innovative neural network model called DEAttentionDTA, based on dynamic word embeddings and a sel… Show more

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