基于知识图谱的健康推荐系统的应用综述

Xu Zhang, Mo Yi, Y. Sun, Shuyu Han, Wenmin Zhang, Zhiwen Wang
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引用次数: 0

摘要

背景:基于知识图谱的定制推荐系统(KGRSs)已被证明能够为用户提供准确有效的健康建议,从而显著降低医疗成本。现在强烈建议将它们应用于保健领域。目的:本综述旨在确定KGRSs的当前应用,其目标用户和性能指标,以及在临床实践中实施健康推荐系统的潜在局限性。方法:利用6个科学数据库中的关键搜索词,对自成立以来至2022年11月1日发表的研究进行综述,识别基于知识图谱技术的健康推荐系统。从纳入的研究中提取关键信息并绘制图表。范围审查是在PRISMA范围审查扩展之后报告的。结果:基于知识图谱技术的健康推荐系统共纳入16项研究和5项拨款。它们被用于不同的健康领域:传统中医、健康管理、疾病相关决策支持、饮食和营养建议。其中6项研究是针对公众的,6项研究是针对医生的。共有13项(81.25%)研究使用准确性、召回率、F1分数和曲线下面积等性能指标来评估KGRS。所有的研究都指出了推荐系统的局限性,并为推荐系统的后续优化和改进提供了方向。结论:本文综述了KGRS在医疗保健领域应用的现状和潜在局限性。这种新颖的方法已被证明有效地克服了传统算法的缺点,帮助用户过滤大量的数据,找到他们需要的个性化信息。它在数字卫生方面的巨大潜力有待进一步发掘。
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The application of health recommender systems based on knowledge graph: a scoping review
Abstract Background: Tailored knowledge graph-based recommender systems (KGRSs) have been demonstrated to be able to provide accurate and effective health recommendations to users, and thus significantly reduce health care costs. They are now strongly recommended to be applied in the health care field. Objective: This scoping review aims to identify the current application of KGRSs, their target users and performance metrics, and the potential limitations of implementing health recommender systems in clinical practice. Methods: A review of the studies published from inception to November 1, 2022 was conducted, using key search terms in 6 scientific databases to identify health recommender systems based on knowledge graph technology. Key information from the included studies was extracted and charted. The scoping review was reported following the PRISMA Extension for Scoping Reviews. Result: We included 16 studies and 5 grants totally about the health recommender systems based on knowledge graph technology. They were used in different health areas: traditional Chinese medicine, health management, disease-related decision support, diet, and nutrition recommendations. Among them, 6 studies were for the general public and 6 were for physicians. A total of 13 (81.25%) studies evaluated the KGRS using performance metrics, such as accuracy, recall, F1 score, and area under the curve. All studies pointed out the limitations of the recommender systems and provided directions for their subsequent optimization and improvement. Conclusion: This review describes the state-of-the-art and potential limitations of KGRS used in the health care field. This novel approach has been proven to be effective in overcoming the drawbacks of traditional algorithms, helping users filter massive amounts of data to find out the personalized information they need. Its great potential in digital health needs to be further explored.
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