The Right Stuff: Getting the right data at the right time and using that data to drive evidence-based practice and policy

IF 2.6 Q2 HEALTH POLICY & SERVICES Learning Health Systems Pub Date : 2024-05-27 DOI:10.1002/lrh2.10432
Lucy A. Savitz, Sarah M. Greene, Michael K. Gould, Harold S. Luft
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引用次数: 0

Abstract

When researchers are embedded within healthcare systems and collaborate with practitioners and operational leaders, they may be able to rapidly identify problems and opportunities that can be addressed to improve quality and affordability. While other industries have well-developed data exploration processes (e.g., banking), healthcare is still developing its methods with widely varying data sources, huge quantities of unstructured data, uncertain precision in measurement, uncertainties about data quality, and complicated and stringent regulations and policies on data access. In recognition of these challenges, the AcademyHealth Learning Health System (LHS) Interest Group (In 2021, Learning Health Systems journal established a formal relationship with AcademyHealth, serving as the official journal of its LHS Interest Group.) released a call for papers in June 2023 to focus on challenges encountered by investigators related to the use of real-world data in embedded research.

We use the term “embedded researcher” to characterize a broad range of people well-trained in research methods using real-world data. Being located inside a health system, they often have privileged access to data and the practitioners who may be observing new situations, problems, or opportunities for improvement. Unlike colleagues only involved in internal quality improvement efforts, embedded researchers also seek to broadly share their findings and create generalizable knowledge. The sharing is less focused on the specific findings—too many things may be unique about the setting, people, and other factors to be directly generalizable. The challenges faced and techniques used to overcome them, however, may offer important lessons for other embedded researchers.

As LHSs mature and internally tackle increasingly complex problems with embedded research, the challenges presented in using real-world data for locally applied health services research are important to understand. Taken together, the papers in this Special Issue offer insights into the frontiers of embedded research as LHSs embark on their own learning journey. Accelerating the transformation of data to knowledge requires an understanding of the underlying data and techniques needed to draw useful lessons from the data. Sharing experiences across teams and settings will help others in anticipating and addressing the challenges they are likely to encounter.

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正确的东西:在正确的时间获取正确的数据,并利用这些数据推动循证实践和政策
当研究人员融入医疗保健系统并与从业人员和业务领导者合作时,他们就能迅速发现问题和机遇,从而提高质量和经济效益。其他行业(如银行业)拥有完善的数据探索流程,而医疗保健行业仍在开发其方法,数据来源千差万别,非结构化数据数量巨大,测量精度不确定,数据质量不确定,数据访问法规和政策复杂而严格。鉴于这些挑战,AcademyHealth 学习健康系统(LHS)兴趣小组(2021 年,《学习健康系统》杂志与 AcademyHealth 建立了正式关系,成为其学习健康系统兴趣小组的官方期刊)于 2023 年 6 月发出论文征集令,重点关注研究人员在嵌入式研究中使用真实世界数据时遇到的挑战。由于身处医疗系统内部,他们往往拥有接触数据和从业人员的特权,而从业人员可能会观察到新的情况、问题或改进机会。与只参与内部质量改进工作的同事不同,嵌入式研究人员还寻求广泛分享他们的研究成果,并创造可推广的知识。分享的重点不在于具体的研究结果--环境、人员和其他因素可能有太多独特之处,无法直接推广。随着本地健康服务系统的成熟,以及内部通过嵌入式研究解决日益复杂的问题,我们有必要了解在本地应用健康服务研究中使用真实世界数据所面临的挑战。综上所述,本特刊中的论文为地方保健系统踏上自己的学习之旅提供了对嵌入式研究前沿的见解。要加快将数据转化为知识,就必须了解从数据中汲取有用经验所需的基础数据和技术。在不同团队和环境中分享经验将有助于其他人预测和应对可能遇到的挑战。
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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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