知识图谱与中医经典集成:多智能体系统融合的挑战与未来展望。

IF 5.7 3区 医学 Q1 INTEGRATIVE & COMPLEMENTARY MEDICINE
Shate Xiang, Huanxiang Lin, Fen Cai, Zhehan Jiang
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引用次数: 0

摘要

中医经典知识的传承面临着文献碎片化、术语异质性和依赖传统学徒制等挑战。知识图谱(Knowledge Graphs, KG)已成为ACMC数字化、智能化的工具之一,在统一术语、规范数据、构建和链接知识等方面发挥着重要作用。然而,由于古汉语在ACMC文本中的复杂性和辨证系统的多样性,目前的KG构建技术仍然依赖于人工输入或传统的自然语言处理,应用主要局限于基本的问答系统。虽然中医领域的大型语言模型(llm)已经纳入了ACMC语料库,但KG内的自动提取和智能集成仍然不发达。本文提出了一种将多智能体系统(MAS)与KG相结合的创新方法,以推进ACMC的智能化应用。技术方法包括使用KG作为知识基础,同时利用MAS基于llm的语义理解和协作任务分配,实现三重提取技术的突破,并推进ACMC的智能应用,包括上下文感知问答,草药配方创新,动态诊断和治疗以及个性化教育。此外,检索增强生成技术的集成实现了多源知识的动态综合,解决了语义歧义,优化了MAS决策。这些讨论旨在为ACMC的智能继承和创新提供高保真、自适应、感知驱动的自主系统设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Integrating knowledge graphs with ancient Chinese medicine classics: challenges and future prospects of multi-agent system convergence.

Integrating knowledge graphs with ancient Chinese medicine classics: challenges and future prospects of multi-agent system convergence.

Integrating knowledge graphs with ancient Chinese medicine classics: challenges and future prospects of multi-agent system convergence.

Integrating knowledge graphs with ancient Chinese medicine classics: challenges and future prospects of multi-agent system convergence.

The inheritance of knowledge from Ancient Chinese Medicine Classics (ACMC) confronts challenges including fragmented literature, terminological heterogeneity, and reliance on traditional apprenticeship. Knowledge Graphs (KG) have become one of the tools for the digitalization and intelligentization of ACMC, playing a vital role in unifying terminology, standardizing data, and structuring and linking knowledge. However, due to the complexity of the ancient Chinese language in ACMC texts and the diversity of syndrome differentiation systems, current KG construction techniques still rely on manual input or traditional Natural Language Processing, with applications primarily limited to basic question-answering (Q&A) systems. Although large language models (LLMs) in the field of traditional Chinese medicine have incorporated ACMC corpora, automated extraction and intelligent integration within KG remain underdeveloped. This paper proposes an innovative approach that combines Multi-Agent Systems (MAS) with KG for advancing the intelligent application of ACMC. The technical approach involves using KG as the knowledge foundation, while leveraging MAS's LLM-based semantic understanding and collaborative task distribution to enable breakthroughs in triple extraction technology and to advance the intelligent applications of ACMC, including context-aware Q&A, herbal formula innovation, dynamic diagnosis and treatment, and personalized education. Additionally, the integration of Retrieval-Augmented Generation technology enables the dynamic synthesis of multi-source knowledge, resolves semantic ambiguities, and optimizes MAS decision-making. These discussions aim to inform the design of a high-fidelity, adaptive, and perception-driven autonomous system for the intelligent inheritance and innovation of ACMC.

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来源期刊
Chinese Medicine
Chinese Medicine INTEGRATIVE & COMPLEMENTARY MEDICINE-PHARMACOLOGY & PHARMACY
CiteScore
7.90
自引率
4.10%
发文量
133
审稿时长
31 weeks
期刊介绍: Chinese Medicine is an open access, online journal publishing evidence-based, scientifically justified, and ethical research into all aspects of Chinese medicine. Areas of interest include recent advances in herbal medicine, clinical nutrition, clinical diagnosis, acupuncture, pharmaceutics, biomedical sciences, epidemiology, education, informatics, sociology, and psychology that are relevant and significant to Chinese medicine. Examples of research approaches include biomedical experimentation, high-throughput technology, clinical trials, systematic reviews, meta-analysis, sampled surveys, simulation, data curation, statistics, omics, translational medicine, and integrative methodologies. Chinese Medicine is a credible channel to communicate unbiased scientific data, information, and knowledge in Chinese medicine among researchers, clinicians, academics, and students in Chinese medicine and other scientific disciplines of medicine.
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