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Poster
in
Workshop: Machine Learning in Structural Biology Workshop

Pair-EGRET: Enhancing the prediction of protein-protein interaction sites through graph attention networks and protein language models

Ramisa Alam · Sazan Mahbub · Md. Shamsuzzoha Bayzid


Abstract:

Proteins are responsible for most biological functions, many of which require the interaction of more than one protein molecule. However, predicting protein-protein interaction (PPI) sites (the interfacial residues of a protein that interact with other protein molecules) remains a challenge. The growing demand and cost associated with the reliable identification of PPI sites using conventional experimental methods call for computational tools for automated prediction and understanding of PPIs. Here, we present Pair-EGRET, an edge-aggregated graph attention network that leverages the features extracted from pre-trained transformer-like models to accurately predict pairwise protein-protein interaction sites. Pair-EGRET works on a k-nearest neighbor graph, representing the three-dimensional structure of a protein, and utilizes the cross-attention mechanism on top of a siamese network to accurately identify interfacial residues of a pair of proteins. Through an extensive evaluation study using a diverse array of experimental data, evaluation metrics, and case studies on representative protein sequences, we find that our method outperforms other state-of-the-art methods for predicting PPI sites. Moreover, Pair-EGRET can provide interpretable insights from the learned cross-attention matrix. Pair-EGRET is freely available at https://github.com/1705004/Pair-EGRET.

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