Semantically enabling clinical decision support recommendations.

IF 1.6 3区 工程技术 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Oshani Seneviratne, Amar K Das, Shruthi Chari, Nkechinyere N Agu, Sabbir M Rashid, Jamie McCusker, Jade S Franklin, Miao Qi, Kristin P Bennett, Ching-Hua Chen, James A Hendler, Deborah L McGuinness
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引用次数: 0

Abstract

Background: Clinical decision support systems have been widely deployed to guide healthcare decisions on patient diagnosis, treatment choices, and patient management through evidence-based recommendations. These recommendations are typically derived from clinical practice guidelines created by clinical specialties or healthcare organizations. Although there have been many different technical approaches to encoding guideline recommendations into decision support systems, much of the previous work has not focused on enabling system generated recommendations through the formalization of changes in a guideline, the provenance of a recommendation, and applicability of the evidence. Prior work indicates that healthcare providers may not find that guideline-derived recommendations always meet their needs for reasons such as lack of relevance, transparency, time pressure, and applicability to their clinical practice.

Results: We introduce several semantic techniques that model diseases based on clinical practice guidelines, provenance of the guidelines, and the study cohorts they are based on to enhance the capabilities of clinical decision support systems. We have explored ways to enable clinical decision support systems with semantic technologies that can represent and link to details in related items from the scientific literature and quickly adapt to changing information from the guidelines, identifying gaps, and supporting personalized explanations. Previous semantics-driven clinical decision systems have limited support in all these aspects, and we present the ontologies and semantic web based software tools in three distinct areas that are unified using a standard set of ontologies and a custom-built knowledge graph framework: (i) guideline modeling to characterize diseases, (ii) guideline provenance to attach evidence to treatment decisions from authoritative sources, and (iii) study cohort modeling to identify relevant research publications for complicated patients.

Conclusions: We have enhanced existing, evidence-based knowledge by developing ontologies and software that enables clinicians to conveniently access updates to and provenance of guidelines, as well as gather additional information from research studies applicable to their patients' unique circumstances. Our software solutions leverage many well-used existing biomedical ontologies and build upon decades of knowledge representation and reasoning work, leading to explainable results.

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语义上支持临床决策支持建议。
背景:临床决策支持系统已被广泛应用于通过循证建议来指导患者诊断、治疗选择和患者管理方面的医疗决策。这些建议通常来自临床专家或医疗保健组织创建的临床实践指南。虽然已经有许多不同的技术方法将指南建议编码到决策支持系统中,但是以前的大部分工作并没有集中在通过指南变更的形式化、建议的来源和证据的适用性来使系统生成建议。先前的工作表明,由于缺乏相关性、透明度、时间压力和对临床实践的适用性等原因,医疗保健提供者可能不会发现指南衍生的建议总是满足他们的需求。结果:我们引入了几种基于临床实践指南、指南来源及其所基于的研究队列的疾病建模语义技术,以增强临床决策支持系统的能力。我们已经探索了使用语义技术使临床决策支持系统能够表示和链接科学文献中相关项目的细节,并快速适应指南中不断变化的信息,识别差距,并支持个性化解释的方法。以前的语义驱动的临床决策系统在所有这些方面的支持都是有限的,我们在三个不同的领域提出了本体和基于语义网的软件工具,这些工具使用一组标准的本体和一个定制的知识图谱框架进行统一:(i)建立指导性模型以描述疾病特征,(ii)建立指导性来源,为权威来源的治疗决定提供证据,以及(iii)建立研究队列模型以确定有关复杂患者的研究出版物。结论:我们通过开发本体论和软件增强了现有的循证知识,使临床医生能够方便地访问指南的更新和来源,并从适用于其患者独特情况的研究中收集额外的信息。我们的软件解决方案利用了许多广泛使用的现有生物医学本体,并建立在数十年的知识表示和推理工作的基础上,从而产生可解释的结果。
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来源期刊
Journal of Biomedical Semantics
Journal of Biomedical Semantics MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
4.20
自引率
5.30%
发文量
28
审稿时长
30 weeks
期刊介绍: Journal of Biomedical Semantics addresses issues of semantic enrichment and semantic processing in the biomedical domain. The scope of the journal covers two main areas: Infrastructure for biomedical semantics: focusing on semantic resources and repositories, meta-data management and resource description, knowledge representation and semantic frameworks, the Biomedical Semantic Web, and semantic interoperability. Semantic mining, annotation, and analysis: focusing on approaches and applications of semantic resources; and tools for investigation, reasoning, prediction, and discoveries in biomedicine.
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