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引用次数: 1
摘要
目的:选择、呈现和总结2020年知识表示与管理(Knowledge Representation and Management, KRM)领域发表的部分优秀论文。方法:基于PubMed查询,对医学信息学文献进行全面、标准化的综述,选择2020年发表的KRM最有趣的论文。这次审查是根据IMIA年鉴准则进行的。结果:在1175篇论文中筛选出4篇最佳论文。与去年入选的论文相比,2020年的四篇最佳论文表现出对本体管理和设计的方法和工具的重视。通常的KRM应用领域(生物信息学、机器学习和电子健康记录)也有代表。结论:2020年,本体管理将成为一个重要的研究热点。生物信息学、机器学习和电子健康记录仍然是KRM社区中具有各种应用的重要研究领域。知识表示是通过提供上下文和开发新的生物信息学度量来推进机器学习的关键。与2019年一样,申述服务于许多医疗领域的各种应用,具有可操作的结果,并且现在越来越多地加入开放科学倡议。
Knowledge Representation and Management: Interest in New Solutions for Ontology Curation.
Objective: To select, present and summarize some of the best papers in the field of Knowledge Representation and Management (KRM) published in 2020.
Methods: A comprehensive and standardized review of the medical informatics literature was performed to select the most interesting papers of KRM published in 2020, based on PubMed queries. This review was conducted according to the IMIA Yearbook guidelines.
Results: Four best papers were selected among 1,175 publications. In contrast with the papers selected last year, the four best papers of 2020 demonstrated a significant focus on methods and tools for ontology curation and design. The usual KRM application domains (bioinformatics, machine learning, and electronic health records) were also represented.
Conclusion: In 2020, ontology curation emerges as a significant topic of research interest. Bioinformatics, machine learning, and electronics health records remain significant research areas in the KRM community with various applications. Knowledge representations are key to advance machine learning by providing context and to develop novel bioinformatics metrics. As in 2019, representations serve a great variety of applications across many medical domains, with actionable results and now with growing adhesion to the open science initiative.
期刊介绍:
Published by the International Medical Informatics Association, this annual publication includes the best papers in medical informatics from around the world.