Author
Listed:
- Shan Gao
(Yunnan University)
- Kaixian Yu
(Insilicom LLC)
- Yue Yang
(University of North Carolina at Chapel Hill)
- Sheng Yu
(Tsinghua University)
- Chenglong Shi
(Kunming Medical University)
- Xueqin Wang
(University of Science and Technology of China)
- Niansheng Tang
(Yunnan University)
- Hongtu Zhu
(University of North Carolina at Chapel Hill
University of North Carolina at Chapel Hill
University of North Carolina at Chapel Hill
University of North Carolina at Chapel Hill)
Abstract
Mental health is a major global concern, yet findings remain fragmented across studies and databases, hindering integrative understanding and clinical translation. To address this gap, we present the Mental Disorders Knowledge Graph (MDKG)—a large-scale, contextualized knowledge graph built using large language models to unify evidence from biomedical literature and curated databases. MDKG comprises over 10 million relations, including nearly 1 million novel associations absent from existing resources. By structurally encoding contextual features such as conditionality, demographic factors, and co-occurring clinical attributes, the graph enables more nuanced interpretation and rapid expert validation, reducing evaluation time by up to 70%. Applied to predictive modeling in the UK Biobank, MDKG-enhanced representations yielded significant gains in predictive performance across multiple mental disorders. As a scalable and semantically enriched resource, MDKG offers a powerful foundation for accelerating psychiatric research and enabling interpretable, data-driven clinical insights.
Suggested Citation
Shan Gao & Kaixian Yu & Yue Yang & Sheng Yu & Chenglong Shi & Xueqin Wang & Niansheng Tang & Hongtu Zhu, 2025.
"Large language model powered knowledge graph construction for mental health exploration,"
Nature Communications, Nature, vol. 16(1), pages 1-16, December.
Handle:
RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-62781-z
DOI: 10.1038/s41467-025-62781-z
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