A knowledge-based clinical decision support system for personalized health examination items in China: design and evaluation.

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS
Dan Wu, Jiye An, Shan Nan, Yutong She, Huilong Duan, Ning Deng
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Abstract

Background: Health examination identifies risk factors and diseases at an early stage through a series of health examination items. In China, however, the incidence of consulting services for health examination items is low and the current health examination item package is insufficiently personalized. Therefore, we created and evaluated a clinical decision support system (CDSS) for personalized health examination items.

Methods: An ontology with the data properties as the core design was created to guide the knowledge expression. A knowledge graph composed of ontology-guided property graphs was developed to provide rich and clear decision-making knowledge. The system, including the web for primary care clinicians and the app for participants, was constructed to directly assist primary care clinicians through personalized and interpretable health examination item recommendations. The enter rate and mapping rate were created to evaluate the system's capability to process input health feature data. The two-step expert evaluation was designed to assess whether recommendations with several health examination items were appropriate for participants. The system recommendations and existing packages were compared to the expert's gold standard.

Results: There were 15 classes, 2-level class hierarchies, 3 types of object properties, and 16 types of data properties in the health examination item recommendation ontology. Several different data properties could express a piece of complex decision-making knowledge and reduce the number of classes. There were 584 classes, 781 object properties, and 1094 data properties in the knowledge graph. Retrospective data from 70 participants, with a total of 472 health features, were selected for system evaluation. The ontology can cover 96.2% of the health features. 56.4% health features entered into the system had corresponding health examination items. The precision and recall of the system were 96.3% and 84.8%, and the packages were 72.5% and 69.1%.

Conclusions: The performance of this system was close to experts and outperformed the current impersonalized health examination item packages. This system could improve the personalization of health examination items and the health examination consultation services, and promote participants' engagement in the health examination.

基于知识的中国个性化健康检查项目临床决策支持系统的设计与评价。
背景:健康检查通过一系列的健康检查项目,在早期发现危险因素和疾病。然而,在中国,健康检查项目咨询服务的发生率较低,目前的健康检查项目套餐个性化不足。因此,我们创建并评估了一个个性化健康检查项目的临床决策支持系统(CDSS)。方法:建立以数据属性为核心设计的本体,指导知识表达。为了提供丰富、清晰的决策知识,提出了由本体引导的属性图组成的知识图谱。该系统包括初级保健临床医生网站和参与者应用程序,旨在通过个性化和可解释的健康检查项目建议直接协助初级保健临床医生。创建了输入率和映射率来评估系统处理输入健康特征数据的能力。两步专家评估的目的是评估包含若干健康检查项目的建议是否适合参与者。将系统建议和现有的软件包与专家的黄金标准进行比较。结果:健康检查项目推荐本体包含15个类,2级类层次,3种对象属性,16种数据属性。几个不同的数据属性可以表达一条复杂的决策知识,并减少类的数量。知识图中有584个类,781个对象属性,1094个数据属性。来自70名参与者的回顾性数据,共有472个健康特征,被选择用于系统评估。本体可以覆盖96.2%的运行状况特征。56.4%输入系统的健康特征有相应的健康检查项目。系统的精密度和召回率分别为96.3%和84.8%,包装的精密度和召回率分别为72.5%和69.1%。结论:该系统性能接近专家水平,优于现行的非个性化健康体检项目包。该系统可以提高健康检查项目的个性化和健康检查咨询服务,提高参与者对健康检查的参与度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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