Litcius/Paper detail

CPMKG: a condition-based knowledge graph for precision medicine

Jiaxin Yang, Xinhao Zhuang, Zhenqi Li, Gang Xiong, Ping Xu, Yunchao Ling, Guoqing Zhang

2024Database11 citationsDOIOpen Access PDF

Abstract

Personalized medicine tailors treatments and dosages based on a patient's unique characteristics, particularly its genetic profile. Over the decades, stratified research and clinical trials have uncovered crucial drug-related information-such as dosage, effectiveness, and side effects-affecting specific individuals with particular genetic backgrounds. This genetic-specific knowledge, characterized by complex multirelationships and conditions, cannot be adequately represented or stored in conventional knowledge systems. To address these challenges, we developed CPMKG, a condition-based platform that enables comprehensive knowledge representation. Through information extraction and meticulous curation, we compiled 307 614 knowledge entries, encompassing thousands of drugs, diseases, phenotypes (complications/side effects), genes, and genomic variations across four key categories: drug side effects, drug sensitivity, drug mechanisms, and drug indications. CPMKG facilitates drug-centric exploration and enables condition-based multiknowledge inference, accelerating knowledge discovery through three pivotal applications. To enhance user experience, we seamlessly integrated a sophisticated large language model that provides textual interpretations for each subgraph, bridging the gap between structured graphs and language expressions. With its comprehensive knowledge graph and user-centric applications, CPMKG serves as a valuable resource for clinical research, offering drug information tailored to personalized genetic profiles, syndromes, and phenotypes. Database URL: https://www.biosino.org/cpmkg/.

Topics & Concepts

InferenceComputer sciencePersonalized medicineKnowledge graphPrecision medicineData scienceResource (disambiguation)DrugInformation retrievalBioinformaticsArtificial intelligenceMedicineBiologyPathologyComputer networkPsychiatryBioinformatics and Genomic NetworksComputational Drug Discovery MethodsPharmacogenetics and Drug Metabolism