本体作为人工智能和医疗保健之间的语义桥梁。

IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES
Frontiers in digital health Pub Date : 2025-08-29 eCollection Date: 2025-01-01 DOI:10.3389/fdgth.2025.1668385
Radha Ambalavanan, R Sterling Snead, Julia Marczika, Gideon Towett, Alex Malioukis, Mercy Mbogori-Kairichi
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引用次数: 0

摘要

背景:本体是人工智能(AI)和医疗保健之间的基础桥梁,实现结构化知识框架,增强数据互操作性、临床决策支持和精准医疗。目标:本视角旨在强调本体在实现自适应、可互操作的框架方面的重要作用,这些框架随着技术和医学进步而发展,以支持个性化、准确和全球连接的医疗保健解决方案。方法:这一观点是基于对PubMed、Scopus和谷歌Scholar进行的有针对性的文献探索,优先考虑2010年至2025年间发表的研究,并包括早期的开创性作品,在必要时提供历史背景,重点关注本体驱动的人工智能在医疗保健中的应用。源的选择是基于它们与语义集成、互操作性和跨学科适用性的相关性。结果:通过医学概念、关系和术语的标准化,本体实现了跨不同医疗保健数据集(包括临床、基因组和表型数据)的语义集成。它们还解决了数据碎片化和术语不一致等挑战。这种语义清晰度支持人工智能在临床决策支持、预测分析、自然语言处理(NLP)和患者特定疾病建模中的应用。结论:尽管本体集成具有变革潜力,但仍面临重大挑战,包括计算复杂性、可扩展性和跨不断发展的国际标准(如SNOMED CT和HL7 FHIR)的语义不匹配。伦理问题,特别是在数据隐私、知情同意和算法偏见方面,也需要仔细考虑。为了应对这些挑战,本观点概述了包括自适应本体模型、健壮的治理框架和人工智能辅助本体管理技术在内的策略。总之,这些方法旨在支持个性化、准确和全球可互操作的医疗保健系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ontologies as the semantic bridge between artificial intelligence and healthcare.

Background: Ontologies serve as a foundational bridge between artificial intelligence (AI) and healthcare, enabling structured knowledge frameworks that enhance data interoperability, clinical decision support, and precision medicine.

Objective: This perspective aims to highlight the essential role of ontologies in enabling adaptive, interoperable frameworks that evolve with technological and medical advances to support personalized, accurate, and globally connected healthcare solutions.

Methods: This perspective is based on a targeted literature exploration conducted across PubMed, Scopus, and Google Scholar, prioritizing studies published between 2010 and 2025 and including earlier seminal works where necessary to provide historical context, focusing on ontology-driven AI applications in healthcare. Sources were selected for their relevance to semantic integration, interoperability, and interdisciplinary applicability.

Results: Through the standardization of medical concepts, relationships, and terminologies, ontologies enable semantic integration across diverse healthcare datasets, including clinical, genomic, and phenotypic data. They also address challenges such as fragmented data and inconsistent terminologies. This semantic clarity supports AI applications in clinical decision support, predictive analytics, natural language processing (NLP), and patient-specific disease modeling.

Conclusions: Despite their transformative potential, ontology integration faces significant challenges, including computational complexity, scalability, and semantic mismatches across evolving international standards, such as SNOMED CT and HL7 FHIR. Ethical concerns, particularly around data privacy, informed consent, and algorithmic bias, also require careful consideration. To address these challenges, this perspective outlines strategies including adaptive ontology models, robust governance frameworks, and AI-assisted ontology management techniques. Together, these approaches aim to support personalized, accurate, and globally interoperable healthcare systems.

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