Building reliable evidence from real-world data: methods, cautiousness and recommendations

Q3 Nursing
G. Corrao
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引用次数: 14

Abstract

Routinely stored information on healthcare utilisation in everyday clinical practice has proliferated over the past several decades. There is, however, some reluctance on the part of many health professionals to use observational data to support healthcare decisions, especially when data are derived from large databases. Challenges in conducting observational studies based on electronic databases include concern about the adequacy of study design and methods to minimise the effect of both misclassifications (in the absence of direct assessments of exposure and outcome validity) and confounding (in the absence of randomisation). This paper points out issues that may compromise the validity of such studies, and approaches to managing analytic challenges. First, strategies of sampling within a large cohort, as an alternative to analysing the full cohort, will be presented. Second, methods for controlling outcome and exposure misclassifications will be described. Third, several techniques that take into account both measured and unmeasured confounders will also be presented. Fourth, some considerations regarding random uncertainty in the framework of observational studies using healthcare utilisation data will be discussed. Finally, some recommendations for good research practice are listed in this paper. The aim is to provide researchers with a methodological framework, while commenting on the value of new techniques for more advanced users.
从真实世界的数据中建立可靠的证据:方法、谨慎和建议
在过去的几十年里,日常临床实践中关于医疗保健利用的常规存储信息激增。然而,许多卫生专业人员不愿意使用观察数据来支持卫生保健决策,特别是当数据来自大型数据库时。进行基于电子数据库的观察性研究的挑战包括研究设计和方法的充分性,以尽量减少错误分类(缺乏对暴露和结果有效性的直接评估)和混淆(缺乏随机化)的影响。本文指出了可能损害这些研究有效性的问题,以及管理分析挑战的方法。首先,将介绍在一个大队列中抽样的策略,作为分析整个队列的替代方法。其次,将描述控制结果和暴露错误分类的方法。第三,还将介绍几种考虑可测量和不可测量混杂因素的技术。第四,将讨论使用医疗保健利用数据的观察性研究框架中关于随机不确定性的一些考虑。最后,本文提出了一些良好的研究实践建议。其目的是为研究人员提供一个方法框架,同时评论新技术对更高级用户的价值。
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来源期刊
Epidemiology Biostatistics and Public Health
Epidemiology Biostatistics and Public Health PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
自引率
0.00%
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0
期刊介绍: Epidemiology, Biostatistics, and Public Health (EBPH) is a multidisciplinary journal that has two broad aims: -To support the international public health community with publications on health service research, health care management, health policy, and health economics. -To strengthen the evidences on effective preventive interventions. -To advance public health methods, including biostatistics and epidemiology. EBPH welcomes submissions on all public health issues (including topics like eHealth, big data, personalized prevention, epidemiology and risk factors of chronic and infectious diseases); on basic and applied research in epidemiology; and in biostatistics methodology. Primary studies, systematic reviews, and meta-analyses are all welcome, as are research protocols for observational and experimental studies. EBPH aims to be a cross-discipline, international forum for scientific integration and evidence-based policymaking, combining the methodological aspects of epidemiology, biostatistics, and public health research with their practical applications.
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