CPMKG:基于病情的精准医疗知识图谱。

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Jiaxin Yang, Xinhao Zhuang, Zhenqi Li, Gang Xiong, Ping Xu, Yunchao Ling, Guoqing Zhang
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引用次数: 0

摘要

个性化医疗根据患者的独特特征,尤其是基因特征,量身定制治疗方法和剂量。几十年来,分层研究和临床试验发现了与药物相关的重要信息,如剂量、疗效和副作用,这些信息影响着具有特定遗传背景的特定个体。这些基因特异性知识具有复杂的多重关系和条件,无法在传统知识系统中得到充分表达或存储。为了应对这些挑战,我们开发了 CPMKG,这是一个基于条件的平台,可以实现全面的知识表征。通过信息提取和精心整理,我们汇编了 307 614 个知识条目,涵盖数千种药物、疾病、表型(并发症/副作用)、基因和基因组变异,涉及四个关键类别:药物副作用、药物敏感性、药物机制和药物适应症。CPMKG 可促进以药物为中心的探索,实现基于条件的多知识推断,通过三个关键应用加速知识发现。为了增强用户体验,我们无缝集成了一个复杂的大型语言模型,为每个子图提供文本解释,在结构图和语言表达之间架起了一座桥梁。凭借其全面的知识图谱和以用户为中心的应用,CPMKG 成为临床研究的宝贵资源,为个性化基因图谱、综合症和表型提供量身定制的药物信息。数据库网址:https://www.biosino.org/cpmkg/。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CPMKG: a condition-based knowledge graph for precision medicine.

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/.

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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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