DrugAgent: Multi-Agent Large Language Model-Based Reasoning for Drug-Target Interaction Prediction
Yoshitaka Inoue, Tianci Song, Xinling Wang, Augustin Luna, Tianfan Fu

TL;DR
DrugAgent is a multi-agent LLM system designed for drug-target interaction prediction, integrating diverse data sources and transparent reasoning frameworks to improve accuracy and interpretability in biomedical applications.
Contribution
It introduces a novel multi-agent LLM framework with domain-specific data integration and transparent reasoning for drug-target interaction prediction.
Findings
Outperformed non-reasoning models by 45% in F1 score.
Demonstrated the effectiveness of each agent component through ablation studies.
Provided human-interpretable reasoning for each prediction.
Abstract
Advancements in large language models (LLMs) allow them to address diverse questions using human-like interfaces. Still, limitations in their training prevent them from answering accurately in scenarios that could benefit from multiple perspectives. Multi-agent systems allow the resolution of questions to enhance result consistency and reliability. While drug-target interaction (DTI) prediction is important for drug discovery, existing approaches face challenges due to complex biological systems and the lack of interpretability needed for clinical applications. DrugAgent is a multi-agent LLM system for DTI prediction that combines multiple specialized perspectives with transparent reasoning. Our system adapts and extends existing multi-agent frameworks by (1) applying coordinator-based architecture to the DTI domain, (2) integrating domain-specific data sources, including ML…
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Taxonomy
TopicsTopic Modeling
