2023
DOI: 10.1101/2023.12.26.573336
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GAPS: Geometric Attention-based Networks for Peptide Binding Sites Identification by the Transfer Learning Approach

Cheng Zhu,
Chengyun Zhang,
Tianfeng Shang
et al.

Abstract: The identification of protein-peptide binding sites significantly advances our understanding of their interaction. Recent advancements in deep learning have profoundly transformed the prediction of protein-peptide binding sites. In this work, we describe the Geometric Attention-based networks for Peptide binding Sites identification (GAPS). The GAPS constructs atom representations using geometric feature engineering and employs various attention mechanisms to update pertinent biological features. In addition, … Show more

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