基于药房电子用药记录的第1类药物审查:为定制药房服务对患者进行分层的算法的第一步

Lígia Reis, Miguel Monteiro, Luís Lourenço, João Gregório
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引用次数: 0

摘要

算法、查询和基于知识的系统是筛选存储在数据库中的电子病历和支持药剂师药物审查的方法之一。本研究的目的是进行1类药物回顾,并确定能够定义一种定制药房专业访谈算法的聚类。对药房记录的方便样本进行回顾性观察研究。如果患者在2017年6月至2018年7月期间有药物配药史,并且使用了两种或两种以上的慢性药物,则包括记录。统计分析采用两步聚类来确定55组接受1型药物审查的患者记录的共同特征。每位患者使用药物的中位数为5种[IQR: 3.0 - 7.0]。18.2%的患者存在不适宜用药,30.9%的患者存在中度或重度相互作用潜力。根据相互作用、使用的药物数量、禁忌症、比尔斯标准和可测量的生物标志物等变量确定了四个集群,从而可以设想可能的药物干预措施,以及提供该干预措施的优先级。通过对药房患者电子记录的药物审查来识别患者群,支持基于标准的算法的设计,可能是自动化的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Type 1 medication review based on a pharmacy’s electronic medication records: first steps towards an algorithm to stratify patients for tailored pharmacy services
Algorithms, queries, and knowledge-based systems are among approaches to screen electronic patient records stored in databases and support pharmacist medication reviews. The aim of this study was to perform a type 1 medication review and identify clusters that enable the definition of an algorithm to tailor pharmacy professional interv A retrospective observational study was conducted on a convenience sample of pharmacy records. Records were included if patients had a medication dispensing history between June 2017 - July 2018 and used two or more chronic medications. Statistical analysis used a two-step cluster to identify common characteristics among fifty-five sets of patient records which underwent Type 1 medication review. The median number of drugs used per patient was five [IQR: 3.0 – 7.0]. 18.2% of patients had inappropriate drugs, and 30.9% had moderate or major interaction potential. Four clusters were identified based on the variables of interactions, number of drugs used, contraindications, Beers criteria and measurable biomarkers, allowing to envision possible pharmaceutical interventions, as well as the priority in providing that intervention. The identification of patient clusters via medication review of electronic records of pharmacy patients supports the design of criteria-based algorithms, likely to be automated.
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