DeepEvidence: Empowering Biomedical Discovery with Deep Knowledge Graph Research
Zifeng Wang, Zheng Chen, Ziwei Yang, Xuan Wang, Qiao Jin, Yifan Peng, Zhiyong Lu, Jimeng Sun

TL;DR
DeepEvidence is an AI framework that enhances biomedical discovery by systematically exploring heterogeneous knowledge graphs through coordinated agents, improving evidence synthesis across multiple discovery stages.
Contribution
It introduces a novel AI-agent system with specialized tools and strategies for deep research in biomedical knowledge graphs, enabling scalable, structured exploration and reasoning.
Findings
Significant improvements in systematic exploration and evidence synthesis.
Effective performance across multiple biomedical discovery stages.
Enhanced capabilities in multi-graph entity search and multi-hop reasoning.
Abstract
Biomedical knowledge graphs (KGs) encode vast, heterogeneous information spanning literature, genes, pathways, drugs, diseases, and clinical trials, but leveraging them collectively for scientific discovery remains difficult. Their structural differences, continual evolution, and limited cross-resource alignment require substantial manual integration, limiting the depth and scale of knowledge exploration. We introduce DeepEvidence, an AI-agent framework designed to perform Deep Research across various heterogeneous biomedical KGs. Unlike generic Deep Research systems that rely primarily on internet-scale text, DeepEvidence incorporates specialized knowledge-graph tooling and coordinated exploration strategies to systematically bridge heterogeneous resources. At its core is an orchestrator that directs two complementary agents: Breadth-First ReSearch (BFRS) for broad, multi-graph entity…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Biomedical Text Mining and Ontologies · Bioinformatics and Genomic Networks
