Reeves B C, van Binsbergen J, van Weel C
London School of Hygiene and Tropical Medicine, Public Health and Policy, Keppel street, London, UK.
Eur J Clin Nutr. 2005 Aug;59 Suppl 1:S155-61. doi: 10.1038/sj.ejcn.1602190.
Systematic reviews that include nonrandomized studies (NRS) face a number of logistical challenges. However, the greatest threat to the validity of such reviews arises from the differing susceptibility of randomized controlled trials (RCTs) and NRS to selection bias. Groups compared in NRS are unlikely to be balanced because of the reasons leading study participants to adopt different health behaviours or to be treated differentially. Researchers can try to minimize the susceptibility of NRS to selection bias both at the design stage, for example, by matching participants on key prognostic factors, and during data analysis, for example, by regression modelling. However, because of logistical difficulties in matching, imperfect knowledge about the relationships between prognostic factors and between prognostic factors and outcome, and measurement limitations, it is inevitable that estimates of effect size derived from NRS will be confounded to some extent. Researchers, reviewers and users of evidence alike need to be aware of the consequences of residual confounding. In poor quality RCTs, selection bias tends to favour the new treatment being evaluated. Selection bias need not necessarily lead to systematic bias in favour of one treatment but, even if it acts in an unpredictable way, it will still give rise to additional, nonstatistical uncertainty bias around the estimate of effect size. Systematic reviews of NRS studies run the risk of compounding these biases. Nutritional choices and uptake of health education about nutrition are very likely to be associated with potential confounding factors. Therefore, pooled estimates of the effects of nutritional exposures and their confidence intervals are likely to be misleading; reviewers need to take into account both systematic and uncertainty bias.
纳入非随机研究(NRS)的系统评价面临诸多后勤方面的挑战。然而,此类评价有效性面临的最大威胁源于随机对照试验(RCT)和NRS对选择偏倚的易感性不同。由于导致研究参与者采取不同健康行为或接受不同治疗的原因,NRS中进行比较的组不太可能达到平衡。研究人员可以在设计阶段尝试将选择偏倚对NRS的影响降至最低,例如,通过在关键预后因素上对参与者进行匹配;在数据分析阶段也可以这样做,例如,通过回归建模。然而,由于匹配过程中的后勤困难、对预后因素之间以及预后因素与结局之间关系的了解不完美以及测量限制,从NRS得出的效应大小估计在某种程度上不可避免地会受到混杂影响。研究人员、评价者和证据使用者都需要意识到残余混杂的后果。在质量较差的RCT中,选择偏倚往往有利于正在评估的新治疗方法。选择偏倚不一定会导致偏向一种治疗方法的系统偏倚,但即使它以不可预测的方式起作用,它仍会在效应大小估计周围产生额外的、非统计性的不确定性偏倚。对NRS研究的系统评价存在使这些偏倚加剧的风险。营养选择和对营养健康教育的接受程度很可能与潜在的混杂因素相关。因此,营养暴露效应的合并估计及其置信区间可能会产生误导;评价者需要同时考虑系统偏倚和不确定性偏倚。