Zolhavarieh Seyedjamal, Parry David, Bai Quan
Department of Computer Science, Auckland University of Technology, Auckland, New Zealand.
JMIR Med Inform. 2017 Jul 5;5(3):e18. doi: 10.2196/medinform.6169.
Knowledge-based clinical decision support system (KB-CDSS) can be used to help practitioners make diagnostic decisions. KB-CDSS may use clinical knowledge obtained from a wide variety of sources to make decisions. However, knowledge acquisition is one of the well-known bottlenecks in KB-CDSSs, partly because of the enormous growth in health-related knowledge available and the difficulty in assessing the quality of this knowledge as well as identifying the "best" knowledge to use. This bottleneck not only means that lower-quality knowledge is being used, but also that KB-CDSSs are difficult to develop for areas where expert knowledge may be limited or unavailable. Recent methods have been developed by utilizing Semantic Web (SW) technologies in order to automatically discover relevant knowledge from knowledge sources.
The two main objectives of this study were to (1) identify and categorize knowledge acquisition issues that have been addressed through using SW technologies and (2) highlight the role of SW for acquiring knowledge used in the KB-CDSS.
We conducted a systematic review of the recent work related to knowledge acquisition MeM for clinical decision support systems published in scientific journals. In this regard, we used the keyword search technique to extract relevant papers.
The retrieved papers were categorized based on two main issues: (1) format and data heterogeneity and (2) lack of semantic analysis. Most existing approaches will be discussed under these categories. A total of 27 papers were reviewed in this study.
The potential for using SW technology in KB-CDSS has only been considered to a minor extent so far despite its promise. This review identifies some questions and issues regarding use of SW technology for extracting relevant knowledge for a KB-CDSS.
基于知识的临床决策支持系统(KB - CDSS)可用于帮助从业者做出诊断决策。KB - CDSS可能会使用从各种来源获得的临床知识来进行决策。然而,知识获取是KB - CDSS中众所周知的瓶颈之一,部分原因在于与健康相关的可用知识呈爆炸式增长,且难以评估这些知识的质量以及确定要使用的“最佳”知识。这个瓶颈不仅意味着使用了质量较低的知识,还意味着在专家知识可能有限或无法获取的领域,很难开发KB - CDSS。最近已开发出利用语义网(SW)技术从知识源自动发现相关知识的方法。
本研究的两个主要目的是:(1)识别并分类通过使用SW技术解决的知识获取问题;(2)突出SW在获取KB - CDSS中使用的知识方面的作用。
我们对科学期刊上发表的与临床决策支持系统的知识获取相关的近期工作进行了系统综述。在这方面,我们使用关键词搜索技术提取相关论文。
检索到的论文根据两个主要问题进行分类:(1)格式和数据异质性;(2)缺乏语义分析。大多数现有方法将在这些类别下进行讨论。本研究共审查了27篇论文。
尽管SW技术有前景,但迄今为止在KB - CDSS中使用它的潜力仅在很小程度上得到考虑。本综述确定了一些关于使用SW技术为KB - CDSS提取相关知识的问题。