Weed D L
Division of Cancer Prevention, National Cancer Institute, Bethesda, MD 20892-7105, USA.
Int J Epidemiol. 2000 Jun;29(3):387-90.
Interpreting observational epidemiological evidence can involve both the quantitative method of meta-analysis and the qualitative criteria-based method of causal inference. The relationships between these two methods are examined in terms of the capacity of meta-analysis to contribute to causal claims, with special emphasis on the most commonly used causal criteria: consistency, strength of association, dose-response, and plausibility. Although meta-analysis alone is not sufficient for making causal claims, it can provide a reproducible weighted average of the estimate of effect that seems better than the rules-of-thumb (e.g. majority rules and all-or-none) often used to assess consistency. A finding of statistical heterogeneity, however, need not preclude a conclusion of consistency (e.g. consistently greater than 1.0). For the criteria of strength of association and dose-response, meta-analysis provides more precise estimates, but the causal relevance of these estimates remains a matter of judgement. Finally, meta-analysis may be used to summarize evidence from biological, clinical, and social levels of knowledge, but combining evidence across levels is beyond its current capacity. Meta-analysis has a real but limited role in causal inference, adding to an understanding of some causal criteria. Meta-analysis may also point to sources of confounding or bias in its assessment of heterogeneity.
解读观察性流行病学证据既可以采用荟萃分析的定量方法,也可以采用基于定性标准的因果推断方法。本文从荟萃分析对因果推断的贡献能力方面考察了这两种方法之间的关系,特别强调了最常用的因果标准:一致性、关联强度、剂量反应和合理性。虽然仅靠荟萃分析不足以做出因果推断,但它可以提供一个可重复的效应估计加权平均值,这似乎比常用于评估一致性的经验法则(如多数法则和全有或全无法则)更好。然而,统计异质性的发现并不一定排除一致性的结论(例如始终大于1.0)。对于关联强度和剂量反应标准,荟萃分析提供了更精确的估计,但这些估计的因果相关性仍然是一个判断问题。最后,荟萃分析可用于总结来自生物学、临床和社会知识层面的证据,但跨层面合并证据超出了其目前的能力。荟萃分析在因果推断中具有实际但有限的作用,有助于对一些因果标准的理解。荟萃分析也可能在其异质性评估中指出混杂或偏倚的来源。