Scientists often use meta-analysis to characterize the impact of an intervention on some outcome of interest across a body of literature. However, threats to the utility and validity of meta-analytic estimates arise when scientists average over potentially important variations in context like different research designs. Uncertainty about quality and commensurability of evidence casts doubt on results from meta-analysis, yet existing software tools for meta-analysis do not provide an explicit software representation of these concerns. We present MetaExplorer, a prototype system for meta-analysis that we developed using iterative design with meta-analysis experts to provide a guided process for eliciting assessments of uncertainty and reasoning about how to incorporate them during statistical inference. Our qualitative evaluation of MetaExplorer with experienced meta-analysts shows that imposing a structured workflow both elevates the perceived importance of epistemic concerns and presents opportunities for tools to engage users in dialogue around goals and standards for evidence aggregation.
翻译:科学家们经常使用元分析来说明干预对整个文献中感兴趣的某些结果的影响。然而,当科学家们在诸如不同研究设计等情况下平均地对潜在的重要差异进行潜在的重要变化,例如不同的研究设计时,元分析估计的效用和有效性就会受到威胁。关于证据质量和共性不确定性的不确定性使人对元分析的结果产生怀疑,但现有的元分析软件工具并没有对这些关切提供明确的软件代表。我们介绍了MetaExprorer,这是一个元分析的原型系统,我们开发了这个原型系统,利用迭代设计,与元分析专家一起,为在统计推论中如何将这些不确定性和推理纳入其中提供一种指导性进程。我们对有经验元分析的MetaExextorer的定性评价表明,将结构化的工作流程既提升了认知性关切的明显重要性,又为用户参与围绕证据汇总的目标和标准进行对话提供了各种工具的机会。