Farrish Susan, Grando Adela
United States Air Force, Air Force Medical Support Agency, Medical Informatics Division, Joint Base San Antonio Lackland, Texas.
Division of Biomedical Informatics, University of California San Diego, La Jolla, California.
AMIA Annu Symp Proc. 2013 Nov 16;2013:398-407. eCollection 2013.
Patients that are on many medications are often non-compliant due to the complexity of the medication regimen; consequently, a patient that is non-compliant can have poor medical outcomes. Providers are not always aware of the complexity of their patient's prescriptions. Methods have been developed to calculate the complexity for a patient's regimen but there are no widely available automated tools that will do this for a provider. Given that ontologies are known to provide well-principled, sharable, setting-independent and machine-interpretable declarative specification frameworks for modeling and reasoning on biomedical problems, we have explored their use in the context of reducing medication complexity. Previously we proposed an Ontology for modeling drug-related knowledge and a repository for complexity scoring. Here we tested the Ontology with patient data from the University of California San Diego Epic database, and we built a decision aide that computes the complexity and recommends changes to reduce the complexity, if needed.
服用多种药物的患者往往因用药方案复杂而不依从治疗;因此,不依从治疗的患者可能会有较差的医疗结果。医疗服务提供者并不总是了解其患者处方的复杂性。虽然已经开发出计算患者用药方案复杂性的方法,但目前还没有可供医疗服务提供者广泛使用的自动化工具来进行此项工作。鉴于本体已知可为生物医学问题的建模和推理提供原则性强、可共享、与环境无关且机器可解释的声明性规范框架,我们探讨了其在降低用药复杂性方面的应用。此前我们提出了一个用于药物相关知识建模的本体和一个复杂性评分知识库。在此,我们使用来自加利福尼亚大学圣地亚哥分校Epic数据库的患者数据对该本体进行了测试,并构建了一个决策辅助工具,该工具可计算复杂性,并在需要时推荐降低复杂性的更改建议。