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Dataset . 2024
License: CC BY NC
Data sources: ZENODO
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ZENODO
Dataset . 2025
License: CC BY NC
Data sources: ZENODO
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Dataset . 2024
License: CC BY NC
Data sources: Datacite
ZENODO
Dataset . 2025
License: CC BY NC
Data sources: Datacite
ZENODO
Dataset . 2025
License: CC BY NC
Data sources: Datacite
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Traditional Chinese Medicine Multidimensional Knowledge Graph

中医药多维知识图谱
Authors: Zeng, Jingqi; Jia, Xiaobin;

Traditional Chinese Medicine Multidimensional Knowledge Graph

Abstract

Reference Databases This database integrates data from a diverse range of authoritative sources, encompassing key areas such as Traditional Chinese Medicine (TCM), modern drug chemistry, genetics, diseases, and more. The data comes from over 30 reputable databases, which include, but are not limited to, DrugBank, BindingDB, BioGRID, DisGeNET, NCBI Taxonomy, and others. These sources offer high-quality, up-to-date information that spans both traditional and contemporary medical research, providing a comprehensive view of the relationships between TCM and modern biomedical science. World Health Organization International Standard Terminologies on Traditional Chinese Medicine (WHO IST TCM) – Provides standard terminology for Traditional Chinese Medicine.Version: 3-Mar-22 | Link NCBI Taxonomy – Detailed classification of biological species.Version: 22-May-24 | Link Comprehensive Medicinal Chemistry Analysis Using Machine Learning (CMAUP) – A comprehensive analysis of medicinal chemistry using machine learning.Version: V2.0 | Link RDKit – An open-source toolkit for cheminformatics.Version: Apr-24 | Link Binding Database (BindingDB) – Provides data on the interactions between small molecules and biological macromolecules.Version: 28-Apr-24 | Link DrugBank – A comprehensive resource for drug and drug target information.Version: V5.1.12 | Link Search Tool for Interacting Chemicals (STITCH) – A tool for retrieving data on chemical interactions.Version: V5.0 | Link Therapeutic Target Database (TTD) – A database of therapeutic targets and their associated diseases.Version: 10-Jan-24 | Link Natural Product Classifier (NPClassifier) – A classifier for natural products based on their molecular properties.Version: V1.5 | Link Biological General Repository for Interaction Datasets (BioGRID) – A database of protein and genetic interactions.Version: V4.4.233 | Link IntAct – A database for protein interaction data.Version: 15-Feb-24 | Link Molecular INTeraction Database (MINT) – A database for molecular interaction data.Version: 22-May-24 | Link Signaling Network Open Resource (SIGNOR) – A database for signaling networks and pathways.Version: V3.0 | Link Search Tool for the Retrieval of Interacting Genes/Proteins (STRING) – A tool for retrieving interaction data between genes/proteins.Version: V12.0 | Link Ensembl – A genome browser for accessing genomic data.Version: GRCh37.p13 | Link UniProt – A comprehensive resource for protein sequence and functional data.Version: Release 2024_02 | Link UMLS (Unified Medical Language System) – A system that integrates biomedical terminologies.Version: 6-May-24 | Link China Medical Information Platform (CMIP) – A medical information platform for China.Version: 22-May-24 | Link Pharmacopoeia of the People’s Republic of China 2020 (PPRC 2020) – The official pharmacopoeia of China.Version: 2020 | Link Disease Ontology (DO) – A comprehensive resource for disease classification and terminology.Version: Release 2024_04 | Link DisGeNET – A database of human disease-gene associations.Version: V7.0 | Link Comparative Toxicogenomics Database (CTD) – A database for toxicology and genomics data.Version: Apr-24 | Link Diseases – A comprehensive collection of disease-related data.Version: V2.0 | Link International Classification of Diseases, 11th Revision (ICD-11) – The latest revision of the WHO’s disease classification system.Version: Jan-24 | Link Encyclopedia of Traditional Chinese Medicine (ETCM) – An encyclopedia of TCM knowledge.Version: V2.0 | Link Herbal Ingredients' Targets (HERB) – A database of herbal ingredient-target interactions.Version: V2.0 | Link Herbal Ingredients Targets Database (HIT) – A comprehensive database of herbal ingredient-target interactions.Version: V2.0 | Link Symptom Mapping Database (SymMap) – A database mapping symptoms to diseases and treatments.Version: V2.0 | Link Traditional Chinese Medicine Bank (TCMbank) – A comprehensive database of Traditional Chinese Medicine.Version: V1.0 | Link Traditional Chinese Medicine Integrated Database (TCMID) – An integrated database of Traditional Chinese Medicine resources.Version: V2.0 | Link Traditional Chinese Medicine Systems Pharmacology Database (TCMSP) – A database focused on the pharmacology of Traditional Chinese Medicine.Version: V1.0 | Link These rich and varied data sources collectively create a robust and interconnected framework that enhances our understanding of both TCM and its potential integration into current scientific research. By combining diverse knowledge from various fields, the platform supports interdisciplinary exploration and provides valuable insights for researchers, clinicians, and practitioners in the study and application of TCM.

Overview of the Traditional Chinese Medicine Multi-dimensional Knowledge Graph (TCM-MKG) The Traditional Chinese Medicine Multi-dimensional Knowledge Graph (TCM-MKG) is a comprehensive, open-source data platform developed by Jingqi Zeng in November 2024. This platform aims to integrate and standardize a vast array of data from multiple sources, encompassing both traditional Chinese medicine (TCM) and modern biomedical sciences. By organizing and linking this diverse information, TCM-MKG acts as a bridge that connects the ancient wisdom of TCM with contemporary medical research and applications. Key Features and Objectives: Multi-source Data Integration: TCM-MKG consolidates data from over 30 authoritative resources, covering a broad spectrum of topics, including TCM terminology, Chinese patent medicines (CPM), Chinese herbal pieces (CHP), natural products (NP), chemical components, disease targets, and more. These data sources are carefully curated and interlinked, ensuring a rich, multi-dimensional view of TCM in relation to modern biomedical research. The platform incorporates data from reputable databases such as DrugBank, BioGRID, DisGeNET, STRING, and many others, ensuring that the TCM knowledge is not only expansive but also scientifically robust and cross-referenced with global biomedical standards. Standardized Design for Global Interoperability: TCM-MKG adheres to international data standards and integrates with widely-used global medical classification systems such as ICD-11, UMLS, MeSH, and DOID. This ensures that the platform’s data is globally comparable and facilitates easy integration with international research efforts, promoting collaboration and knowledge exchange across the fields of TCM and modern medicine. Open Source and Collaborative: In line with its mission to enhance transparency and accessibility, TCM-MKG is open-sourced in a structured tabular format. This allows researchers worldwide to freely access, contribute to, and expand upon the data, fostering interdisciplinary collaboration and accelerating innovation in both TCM research and modern medicine. Advanced Analytical Capabilities: By leveraging the power of knowledge graph technology and graph-based intelligence algorithms, TCM-MKG supports deep data mining and relational reasoning. Researchers can uncover hidden associations between TCM components, diseases, and targets, providing insights into the mechanisms of herbal interactions and offering new pathways for drug discovery and therapeutic research. Personal Research Application: Using the TCM-MKG platform, I conducted a study titled "Graph Neural Networks for Quantifying Compatibility Mechanisms in Traditional Chinese Medicine." This research applied advanced graph intelligence algorithms to quantitatively assess the compatibility mechanisms of Chinese herbal formulas. The study provides fresh insights into the underlying principles of TCM herbal combinations. This research has been published: Zeng, J., & Jia, X. (2025). Quantifying compatibility mechanisms in traditional Chinese medicine with interpretable graph neural networks. Journal of Pharmaceutical Analysis, 101342. https://doi.org/10.1016/j.jpha.2025.101342 The code and methodology for this research have been open-sourced and are available on GitHub. Acknowledgments: I would like to express my deep gratitude to the contributors and organizations that have made their data freely available for this project. The integration of diverse data sources such as those from the World Health Organization (WHO), NCBI, DrugBank, BioGRID, and many others has been essential in creating a comprehensive and multi-dimensional resource. Their commitment to open access and data sharing has greatly enriched the TCM-MKG platform and enabled the exploration of novel research directions that bridge traditional and modern scientific knowledge. Contact Information: For further inquiries or more detailed information, please feel free to contact:Email: zjingqi@163.com

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selected citations
These citations are derived from selected sources.
This is an alternative to the "Influence" indicator, which also reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically).
BIP!Citations provided by BIP!
popularity
This indicator reflects the "current" impact/attention (the "hype") of an article in the research community at large, based on the underlying citation network.
BIP!Popularity provided by BIP!
influence
This indicator reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically).
BIP!Influence provided by BIP!
impulse
This indicator reflects the initial momentum of an article directly after its publication, based on the underlying citation network.
BIP!Impulse provided by BIP!
0
Average
Average
Average