Mistra EviEM, Stockholm Environment Institute, Linnégatan 87D, Stockholm, Sweden; Africa Centre for Evidence, University of Johannesburg, Johannesburg, South Africa.
Canadian Centre for Evidence-Based Conservation and Environmental Management, Institute of Environmental Sciences, Carleton University, Canada.
Environ Int. 2018 May;114:357-359. doi: 10.1016/j.envint.2018.02.018. Epub 2018 Feb 23.
Meta-analysis is becoming increasingly popular in the field of ecology and environmental management. It increases the effective power of analyses relative to single studies, and allows researchers to investigate effect modifiers and sources of heterogeneity that could not be easily examined within single studies. Many systematic reviewers will set out to conduct a meta-analysis as part of their synthesis, but meta-analysis requires a niche set of skills that are not widely held by the environmental research community. Each step in the process of carrying out a meta-analysis requires decisions that have both scientific and statistical implications. Reviewers are likely to be faced with a plethora of decisions over which effect size to choose, how to calculate variances, and how to build statistical models. Some of these decisions may be simple based on appropriateness of the options. At other times, reviewers must choose between equally valid approaches given the information available to them. This presents a significant problem when reviewers are attempting to conduct a reliable synthesis, such as a systematic review, where subjectivity is minimised and all decisions are documented and justified transparently. We propose three urgent, necessary developments within the evidence synthesis community. Firstly, we call on quantitative synthesis experts to improve guidance on how to prepare data for quantitative synthesis, providing explicit detail to support systematic reviewers. Secondly, we call on journal editors and evidence synthesis coordinating bodies (e.g. CEE) to ensure that quantitative synthesis methods are adequately reported in a transparent and repeatable manner in published systematic reviews. Finally, where faced with two or more broadly equally valid alternative methods or actions, reviewers should conduct multiple analyses, presenting all options, and discussing the implications of the different analytical approaches. We believe it is vital to tackle the possible subjectivity in quantitative synthesis described herein to ensure that the extensive efforts expended in producing systematic reviews and other evidence synthesis products is not wasted because of a lack of rigour or reliability in the final synthesis step.
元分析在生态学和环境管理领域越来越受欢迎。它相对于单个研究增加了分析的有效能力,并允许研究人员调查在单个研究中不易检查的效应修饰符和异质性来源。许多系统评价者将着手进行元分析作为其综合的一部分,但元分析需要一套专门的技能,而这些技能在环境研究界并不广泛。元分析过程的每一步都需要做出具有科学和统计意义的决策。评审员可能会面临大量的决策,例如选择哪个效应量、如何计算方差以及如何构建统计模型。其中一些决策可能基于选项的适当性而很简单。在其他时候,评审员必须在可用信息的基础上,在同等有效的方法之间做出选择。当评审员试图进行可靠的综合(例如系统评价)时,这会带来一个重大问题,在系统评价中,主观性被最小化,并且所有决策都以透明的方式记录和证明是合理的。我们在证据综合界提出了三个紧迫的、必要的发展。首先,我们呼吁定量综合专家改进如何为定量综合准备数据的指导,提供明确的细节以支持系统评价者。其次,我们呼吁期刊编辑和证据综合协调机构(例如 CEE)确保在发表的系统评价中以透明和可重复的方式充分报告定量综合方法。最后,在面临两个或更多大致同样有效的替代方法或行动时,评审员应进行多次分析,提出所有选项,并讨论不同分析方法的影响。我们认为,必须解决本文所述的定量综合中可能存在的主观性,以确保由于最终综合步骤的严谨性或可靠性不足,而不会浪费系统评价和其他证据综合产品所付出的大量努力。