LLM$^3$-DTI: A Large Language Model and Multi-modal data co-powered framework for Drug-Target Interaction prediction
Yuhao Zhang, Qinghong Guo, Qixian Chen, Liuwei Zhang, Hongyan Cui, Xiyi Chen

TL;DR
This paper introduces LLM$^3$-DTI, a novel framework that leverages large language models and multi-modal data fusion to improve drug-target interaction prediction accuracy.
Contribution
It proposes a multi-modal embedding approach with dual cross-attention and TSFusion modules, enhancing DTI prediction performance over existing models.
Findings
Outperforms comparison models in identifying validated DTIs
Effective multi-modal data fusion improves prediction accuracy
Framework generalizes well across diverse scenarios
Abstract
Drug-target interaction (DTI) prediction is of great significance for drug discovery and drug repurposing. With the accumulation of a large volume of valuable data, data-driven methods have been increasingly harnessed to predict DTIs, reducing costs across various dimensions. Therefore, this paper proposes a arge anguage odel and ulti-odel data co-powered rug arget nteraction prediction framework, named LLM-DTI. LLM-DTI constructs multi-modal data embedding to enhance DTI prediction performance. In this framework, the text semantic embeddings of drugs and targets are encoded by a domain-specific LLM. To effectively align and fuse multi-modal embedding. We propose the dual cross-attention mechanism and the TSFusion module. Finally, these multi-modal data are utilized for the DTI task…
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Taxonomy
TopicsComputational Drug Discovery Methods · Topic Modeling · Biomedical Text Mining and Ontologies
