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Poster
in
Workshop: New Frontiers of AI for Drug Discovery and Development

FragXsiteDTI: an interpretable transformer-based model for drug-target interaction prediction

Ali Khodabandeh Yalabadi · Mehdi Yazdani-Jahromi · Niloofar Yousefi · Aida Tayebi · Sina Abdidizaji · OZLEM GARIBAY

Keywords: [ interpretability ] [ DTI ] [ Drug-target interaction ] [ transformer ]


Abstract:

Drug-Target Interaction (DTI) prediction is vital for drug discovery, yet challenges persist in achieving model interpretability and optimizing performance. We propose a novel transformer-based model, FragXsiteDTI, that aims to address these challenges in DTI prediction. Notably, FragXsiteDTI is the first DTI model to simultaneously leverage drug molecule fragments and protein pockets. Our information-rich representations for both proteins and drugs offer a detailed perspective on their interaction. Inspired by the Perceiver IO framework, our model features a learnable latent array, initially interacting with protein binding site embeddings using cross-attention and later refined through self-attention and used as a query to the drug fragments in the drug's cross-attention transformer block. This learnable query array serves as a mediator and enables seamless information translation, preserving critical nuances in drug-protein interactions. Our computational results on two benchmarking datasets demonstrate the superior predictive power of our model over several state-of-the-art models. We also show the interpretability of our model in terms of the critical components of both target proteins and drug molecules within drug-target pairs.

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