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开发一种检测和简化药物治疗复杂性的算法及其技术实现。

Development of an algorithm to detect and reduce complexity of drug treatment and its technical realisation.

机构信息

Department of Clinical Pharmacology and Pharmacoepidemiology, University of Heidelberg, Im Neuenheimer Feld 410, 69120, Heidelberg, Germany.

Cooperation Unit Clinical Pharmacy, University of Heidelberg, Im Neuenheimer Feld 410, 69120, Heidelberg, Germany.

出版信息

BMC Med Inform Decis Mak. 2020 Jul 8;20(1):154. doi: 10.1186/s12911-020-01162-6.

Abstract

BACKGROUND

The increasing complexity of current drug therapies jeopardizes patient adherence. While individual needs to simplify a medication regimen vary from patient to patient, a straightforward approach to integrate the patients' perspective into decision making for complexity reduction is still lacking. We therefore aimed to develop an electronic, algorithm-based tool that analyses complexity of drug treatment and supports the assessment and consideration of patient preferences and needs regarding the reduction of complexity of drug treatment.

METHODS

Complexity factors were selected based on literature and expert rating and specified for integration in the automated assessment. Subsequently, distinct key questions were phrased and allocated to each complexity factor to guide conversation with the patient and personalize the results of the automated assessment. Furthermore, each complexity factor was complemented with a potential optimisation measure to facilitate drug treatment (e.g. a patient leaflet). Complexity factors, key questions, and optimisation strategies were technically realized as tablet computer-based application, tested, and adapted iteratively until no further technical or content-related errors occurred.

RESULTS

In total, 61 complexity factors referring to the dosage form, the dosage scheme, additional instructions, the patient, the product, and the process were considered relevant for inclusion in the tool; 38 of them allowed for automated detection. In total, 52 complexity factors were complemented with at least one key question for preference assessment and at least one optimisation measure. These measures included 29 recommendations for action for the health care provider (e.g. to suggest a dosage aid), 27 training videos, 44 patient leaflets, and 5 algorithms to select and suggest alternative drugs.

CONCLUSIONS

Both the set-up of an algorithm and its technical realisation as computer-based app was successful. The electronic tool covers a wide range of different factors that potentially increase the complexity of drug treatment. For the majority of factors, simple key questions could be phrased to include the patients' perspective, and, even more important, for each complexity factor, specific measures to mitigate or reduce complexity could be defined.

摘要

背景

当前药物治疗的日益复杂性危及患者的依从性。虽然每位患者简化药物治疗方案的需求各不相同,但仍缺乏一种直接的方法将患者的观点纳入降低复杂性的决策中。因此,我们旨在开发一种电子的、基于算法的工具,分析药物治疗的复杂性,并支持评估和考虑患者对降低药物治疗复杂性的偏好和需求。

方法

根据文献和专家评分选择复杂性因素,并将其指定为自动化评估的一部分。随后,提出了不同的关键问题,并将其分配给每个复杂性因素,以指导与患者的对话,并使自动化评估的结果个性化。此外,每个复杂性因素都补充了潜在的优化措施,以促进药物治疗(例如,患者用药指南)。复杂性因素、关键问题和优化策略在技术上实现为基于平板电脑的应用程序,经过反复测试和调整,直到不再出现技术或内容相关的错误。

结果

总共考虑了 61 个与剂型、剂量方案、附加说明、患者、产品和流程相关的复杂性因素,其中 38 个因素允许进行自动化检测。总共 52 个复杂性因素补充了至少一个用于偏好评估的关键问题和至少一个优化措施。这些措施包括 29 项针对医疗保健提供者的行动建议(例如,建议使用剂量辅助工具)、27 个培训视频、44 个患者用药指南和 5 个用于选择和建议替代药物的算法。

结论

算法的设置及其作为基于计算机的应用程序的技术实现都取得了成功。该电子工具涵盖了广泛的不同因素,这些因素可能增加药物治疗的复杂性。对于大多数因素,可以提出简单的关键问题来纳入患者的观点,更重要的是,对于每个复杂性因素,可以定义具体的措施来减轻或降低复杂性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5e8e/7346621/af7473e3458c/12911_2020_1162_Fig1_HTML.jpg

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