MADD: Multi-Agent Drug Discovery Orchestra

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📝 Original Info

  • Title: MADD: Multi-Agent Drug Discovery Orchestra
  • ArXiv ID: 2511.08217
  • Date: 2025-11-11
  • Authors: ** 정보 제공되지 않음 (Authors not specified in the source material) **

📝 Abstract

Hit identification is a central challenge in early drug discovery, traditionally requiring substantial experimental resources. Recent advances in artificial intelligence, particularly large language models (LLMs), have enabled virtual screening methods that reduce costs and improve efficiency. However, the growing complexity of these tools has limited their accessibility to wet-lab researchers. Multi-agent systems offer a promising solution by combining the interpretability of LLMs with the precision of specialized models and tools. In this work, we present MADD, a multi-agent system that builds and executes customized hit identification pipelines from natural language queries. MADD employs four coordinated agents to handle key subtasks in de novo compound generation and screening. We evaluate MADD across seven drug discovery cases and demonstrate its superior performance compared to existing LLM-based solutions. Using MADD, we pioneer the application of AI-first drug design to five biological targets and release the identified hit molecules. Finally, we introduce a new benchmark of query-molecule pairs and docking scores for over three million compounds to contribute to the agentic future of drug design.

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ChemCrow.png Cost.png MADD-ab.png Main_Fig.png Transformer_molecule-Encoder.png chemagent.png compact_metrics4.png dataset.png diff_architectures.png ds_1_new.png mad_ex1.png mad_ex2.png ml_models_bars_2.png molformer.png mtdd-mw.png similarity.png

Reference

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