A novel method for continuous measurements of clinical practice guideline adherence

IF 2.6 Q2 HEALTH POLICY & SERVICES Learning Health Systems Pub Date : 2023-09-07 DOI:10.1002/lrh2.10384
Kees C.W.J. Ebben, Cornelis D. de Kroon, Channa E. Schmeink, Olga L. van der Hel, Thijs van Vegchel, Arturo Moncada-Torres, Ignace H.J.T. de Hingh, Jurrian van der Werf
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Abstract

Introduction

Clinical practice guidelines (hereafter ‘guidelines’) are crucial in providing evidence-based recommendations for physicians and multidisciplinary teams to make informed decisions regarding diagnostics and treatment in various diseases, including cancer. While guideline implementation has been shown to reduce (unwanted) variability and improve outcome of care, monitoring of adherence to guidelines remains challenging. Real-world data collected from cancer registries can provide a continuous source for monitoring adherence levels. In this work, we describe a novel structured approach to guideline evaluation using real-world data that enables continuous monitoring. This method was applied to endometrial cancer patients in the Netherlands and implemented through a prototype web-based dashboard that enables interactive usage and supports various analyses.

Method

The guideline under study was parsed into clinical decision trees (CDTs) and an information standard was drawn up. A dataset from the Netherlands Cancer Registry (NCR) was used and data items from both instruments were mapped. By comparing guideline recommendations with real-world data an adherence classification was determined. The developed prototype can be used to identify and prioritize potential topics for guideline updates.

Results

CDTs revealed 68 data items for recording in an information standard. Thirty-two data items from the NCR were mapped onto information standard data items. Four CDTs could sufficiently be populated with NCR data.

Conclusion

The developed methodology can evaluate a guideline to identify potential improvements in recommendations and the success of the implementation strategy. In addition, it is able to identify patient and disease characteristics that influence decision-making in clinical practice. The method supports a cyclical process of developing, implementing and evaluating guidelines and can be scaled to other diseases and settings. It contributes to a learning healthcare cycle that integrates real-world data with external knowledge.

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一种连续测量临床实践指南依从性的新方法
临床实践指南(以下简称“指南”)对于为医生和多学科团队提供基于证据的建议至关重要,以就包括癌症在内的各种疾病的诊断和治疗做出明智的决定。尽管指南的实施已被证明可以减少(不必要的)变异性并改善护理结果,但监测指南的遵守情况仍然具有挑战性。从癌症登记处收集的真实世界数据可以为监测依从性水平提供持续的来源。在这项工作中,我们描述了一种使用真实世界数据进行指南评估的新的结构化方法,该方法能够实现持续监测。该方法应用于荷兰的子宫内膜癌症患者,并通过基于网络的原型仪表板实现,该仪表板能够实现交互式使用并支持各种分析。将正在研究的指南解析为临床决策树(CDT),并制定了信息标准。使用荷兰癌症注册中心(NCR)的数据集,绘制两种仪器的数据项。通过将指南建议与真实世界的数据进行比较,确定了依从性分类。开发的原型可用于识别潜在主题并确定其优先级,以便更新指南。CDT揭示了在信息标准中记录的68个数据项。NCR中的32个数据项被映射到信息标准数据项上。NCR数据可以充分填充四个CDT。所制定的方法可以评估指导方针,以确定建议中的潜在改进和执行战略的成功。此外,它能够识别影响临床实践决策的患者和疾病特征。该方法支持制定、实施和评估指南的周期性过程,并可扩展到其他疾病和环境。它有助于学习医疗保健周期,将真实世界的数据与外部知识相结合。
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来源期刊
Learning Health Systems
Learning Health Systems HEALTH POLICY & SERVICES-
CiteScore
5.60
自引率
22.60%
发文量
55
审稿时长
20 weeks
期刊最新文献
Issue Information Envisioning public health as a learning health system Thanks to our peer reviewers Learning health systems to implement chronic disease prevention programs: A novel framework and perspectives from an Australian health service The translation-to-policy learning cycle to improve public health
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