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The importance of adjusting for potential confounders in Bayesian hierarchical models synthesising evidence from randomised and non-randomised studies: an application comparing treatments for abdominal aortic aneurysms

机译:在贝叶斯分级模型中调整潜在混杂因素的重要性,综合来自随机和非随机研究的证据:比较腹主动脉瘤治疗方法的应用

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Background Informing health care decision making may necessitate the synthesis of evidence from different study designs (e.g., randomised controlled trials, non-randomised/observational studies). Methods for synthesising different types of studies have been proposed, but their routine use requires development of approaches to adjust for potential biases, especially among non-randomised studies. The objective of this study was to extend a published Bayesian hierarchical model to adjust for bias due to confounding in synthesising evidence from studies with different designs. Methods In this new methodological approach, study estimates were adjusted for potential confounders using differences in patient characteristics (e.g., age) between study arms. The new model was applied to synthesise evidence from randomised and non-randomised studies from a published review comparing treatments for abdominal aortic aneurysms. We compared the results of the Bayesian hierarchical model adjusted for differences in study arms with: 1) unadjusted results, 2) results adjusted using aggregate study values and 3) two methods for downweighting the potentially biased non-randomised studies. Sensitivity of the results to alternative prior distributions and the inclusion of additional covariates were also assessed. Results In the base case analysis, the estimated odds ratio was 0.32 (0.13,0.76) for the randomised studies alone and 0.57 (0.41,0.82) for the non-randomised studies alone. The unadjusted result for the two types combined was 0.49 (0.21,0.98). Adjusted for differences between study arms, the estimated odds ratio was 0.37 (0.17,0.77), representing a shift towards the estimate for the randomised studies alone. Adjustment for aggregate values resulted in an estimate of 0.60 (0.28,1.20). The two methods used for downweighting gave odd ratios of 0.43 (0.18,0.89) and 0.35 (0.16,0.76), respectively. Point estimates were robust but credible intervals were wider when using vaguer priors. Conclusions Covariate adjustment using aggregate study values does not account for covariate imbalances between treatment arms and downweighting may not eliminate bias. Adjustment using differences in patient characteristics between arms provides a systematic way of adjusting for bias due to confounding. Within the context of a Bayesian hierarchical model, such an approach could facilitate the use of all available evidence to inform health policy decisions.
机译:背景信息为医疗保健决策提供依据可能需要综合来自不同研究设计的证据(例如,随机对照试验,非随机/观察性研究)。已经提出了用于合成不同类型研究的方法,但是它们的常规使用要求开发用于调整潜在偏差的方法,尤其是在非随机研究中。这项研究的目的是扩展已发布的贝叶斯层次模型,以调整由于混淆来自不同设计研究的证据而造成的偏差。方法在这种新的方法学方法中,使用研究组之间患者特征(例如年龄)的差异来调整潜在混杂因素的研究估计数。该新模型被用于根据比较腹主动脉瘤治疗方法的已发表评论从随机和非随机研究中合成证据。我们将针对研究领域差异进行调整的贝叶斯层次模型的结果与以下各项进行了比较:1)未经调整的结果,2)使用汇总研究值进行调整的结果,以及3)减少潜在有偏见的非随机研究的两种方法。还评估了结果对其他先验分布的敏感性以及是否包含其他协变量。结果在基本案例分析中,仅随机研究的估计优势比为0.32(0.13,0.76),而非随机研究的估计优势比仅为0.57(0.41,0.82)。两种类型的合并未调整结果为0.49(0.21,0.98)。调整研究组之间的差异后,估计的优势比为0.37(0.17,0.77),这代表着仅对随机研究的估计值的转变。调整汇总值得出的估计值为0.60(0.28,1.20)。两种用于权重降低的方法得出的奇数比分别为0.43(0.18,0.89)和0.35(0.16,0.76)。使用模糊先验时,点估计是可靠的,但可信的间隔更宽。结论使用总研究值进行协变量调整不能解决治疗组之间的协变量失衡问题,而降低体重可能无法消除偏倚。利用手臂之间患者特征差异的调整提供了一种系统化的方法来调整由于混杂而引起的偏差。在贝叶斯层次模型的背景下,这种方法可以促进使用所有可用证据为卫生政策决策提供信息。

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