Spatial analysis of cluster randomised trials: a systematic review of analysis methods.

IF 3.6 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Emerging Themes in Epidemiology Pub Date : 2017-09-21 eCollection Date: 2017-01-01 DOI:10.1186/s12982-017-0066-2
Christopher Jarvis, Gian Luca Di Tanna, Daniel Lewis, Neal Alexander, W John Edmunds
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引用次数: 11

Abstract

Background: Cluster randomised trials (CRTs) often use geographical areas as the unit of randomisation, however explicit consideration of the location and spatial distribution of observations is rare. In many trials, the location of participants will have little importance, however in some, especially against infectious diseases, spillover effects due to participants being located close together may affect trial results. This review aims to identify spatial analysis methods used in CRTs and improve understanding of the impact of spatial effects on trial results.

Methods: A systematic review of CRTs containing spatial methods, defined as a method that accounts for the structure, location, or relative distances between observations. We searched three sources: Ovid/Medline, Pubmed, and Web of Science databases. Spatial methods were categorised and details of the impact of spatial effects on trial results recorded.

Results: We identified ten papers which met the inclusion criteria, comprising thirteen trials. We found that existing approaches fell into two categories; spatial variables and spatial modelling. The spatial variable approach was most common and involved standard statistical analysis of distance measurements. Spatial modelling is a more sophisticated approach which incorporates the spatial structure of the data within a random effects model. Studies tended to demonstrate the importance of accounting for location and distribution of observations in estimating unbiased effects.

Conclusions: There have been a few attempts to control and estimate spatial effects within the context of human CRTs, but our overall understanding is limited. Although spatial effects may bias trial results, their consideration was usually a supplementary, rather than primary analysis. Further work is required to evaluate and develop the spatial methodologies relevant to a range of CRTs.

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聚类随机试验的空间分析:分析方法的系统回顾。
背景:聚类随机试验(crt)通常使用地理区域作为随机化的单位,但很少明确考虑观察的位置和空间分布。在许多试验中,参与者的位置并不重要,但在某些试验中,特别是针对传染病的试验,由于参与者位置靠得很近而产生的溢出效应可能会影响试验结果。本综述旨在确定用于crt的空间分析方法,并提高对空间效应对试验结果影响的理解。方法:对包含空间方法的crt进行系统回顾,空间方法定义为解释观测值之间的结构、位置或相对距离的方法。我们搜索了三个来源:Ovid/Medline, Pubmed和Web of Science数据库。对空间方法进行了分类,并详细记录了空间效应对试验结果的影响。结果:我们确定了10篇符合纳入标准的论文,包括13项试验。我们发现现有的方法分为两类;空间变量和空间建模。空间变量方法是最常见的,涉及距离测量的标准统计分析。空间建模是一种更复杂的方法,它将数据的空间结构纳入随机效应模型中。研究倾向于证明在估计无偏效应时考虑观测值的位置和分布的重要性。结论:在人类crt的背景下,已经有一些控制和估计空间效应的尝试,但我们的总体理解是有限的。虽然空间效应可能会使试验结果偏倚,但它们的考虑通常是补充分析,而不是主要分析。需要进一步的工作来评价和发展与一系列crt相关的空间方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Emerging Themes in Epidemiology
Emerging Themes in Epidemiology Medicine-Epidemiology
CiteScore
4.40
自引率
4.30%
发文量
9
审稿时长
28 weeks
期刊介绍: Emerging Themes in Epidemiology is an open access, peer-reviewed, online journal that aims to promote debate and discussion on practical and theoretical aspects of epidemiology. Combining statistical approaches with an understanding of the biology of disease, epidemiologists seek to elucidate the social, environmental and host factors related to adverse health outcomes. Although research findings from epidemiologic studies abound in traditional public health journals, little publication space is devoted to discussion of the practical and theoretical concepts that underpin them. Because of its immediate impact on public health, an openly accessible forum is needed in the field of epidemiology to foster such discussion.
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