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多处理比较荟萃分析中添加处理效果的稳定性:一项模拟研究。

Stability of additive treatment effects in multiple treatment comparison meta-analysis: a simulation study.

机构信息

Department of Clinical Epidemiology and Biostatistics, McMaster University, Hamilton.

出版信息

Clin Epidemiol. 2012;4:75-85. doi: 10.2147/CLEP.S29470. Epub 2012 Apr 16.

Abstract

BACKGROUND

Many medical interventions are administered in the form of treatment combinations involving two or more individual drugs (eg, drug A + drug B). When the individual drugs and drug combinations have been compared in a number of randomized clinical trials, it is possible to quantify the comparative effectiveness of all drugs simultaneously in a multiple treatment comparison (MTC) meta-analysis. However, current MTC models ignore the dependence between drug combinations (eg, A + B) and the individual drugs that are part of the combination. In particular, current models ignore the possibility that drug effects may be additive, ie, the property that the effect of A and B combined is equal to the sum of the individual effects of A and B. Current MTC models may thus be suboptimal for analyzing data including drug combinations when their effects are additive or approximately additive. However, the extent to which the additivity assumption can be violated before the conventional model becomes the more optimal approach is unknown. The objective of this study was to evaluate the comparative statistical performance of the conventional MTC model and the additive effects MTC model in MTC scenarios where additivity holds true, is mildly violated, or is strongly violated.

METHODS

We simulated MTC scenarios in which additivity held true, was mildly violated, or was strongly violated. For each scenario we simulated 500 MTC data sets and applied the conventional and additive effects MTC models in a Bayesian framework. Under each scenario we estimated the proportion of treatment effect estimates that were 20% larger than 'the truth' (ie, % overestimates), the proportion that were 20% smaller than 'the truth' (ie, % underestimates), the coverage of the 95% credible intervals, and the statistical power. We did this for all the comparisons under both models.

RESULTS

Under true additivity, the additive effects model is superior to the conventional model. Under mildly violated additivity, the additive model generally yields more overestimates or underestimates for a subset of treatment comparisons, but comparable coverage and greater power. Under strongly violated additivity, the proportion of overestimates or underestimates and coverage is considerably worse with the additive effects model.

CONCLUSION

The additive MTC model is statistically superior when additivity holds true. The two models are comparably advantageous in terms of a bias-precision trade-off when additivity is only mildly violated. When additivity is strongly violated, the additive effects model is statistically inferior.

摘要

背景

许多医学干预措施以包含两种或多种药物的治疗组合形式给予(例如,药物 A + 药物 B)。当个体药物和药物组合已在多项随机临床试验中进行比较时,可以在多治疗比较(MTC)荟萃分析中同时量化所有药物的比较有效性。然而,目前的 MTC 模型忽略了药物组合(例如,A + B)之间的依赖性以及组合中包含的个别药物。特别是,目前的模型忽略了药物效应可能是相加的可能性,即 A 和 B 联合的效应等于 A 和 B 的个体效应之和。因此,当药物组合的作用是相加或近似相加时,当前的 MTC 模型可能不是分析数据的最佳选择。但是,在常规模型变得更优之前,加性假设可以被违反到何种程度是未知的。本研究的目的是评估在加性成立、轻度违反或强烈违反的 MTC 情况下,常规 MTC 模型和相加效应 MTC 模型的比较统计性能。

方法

我们模拟了加性成立、轻度违反或强烈违反的 MTC 情况。对于每种情况,我们模拟了 500 个 MTC 数据集,并在贝叶斯框架下应用常规和相加效应 MTC 模型。在每种情况下,我们估计了治疗效果估计值比“真实值”高出 20%(即高估百分比)的比例、比“真实值”低 20%(即低估百分比)的比例、95%可信区间的覆盖率和统计功效。我们在两种模型下对所有比较都进行了此操作。

结果

在真正的加性下,相加效应模型优于常规模型。在轻度违反加性的情况下,相加模型通常会对一部分治疗比较产生更多的高估或低估,但具有相似的覆盖率和更高的功效。在强烈违反加性的情况下,相加效应模型的高估或低估比例和覆盖率要差得多。

结论

当加性成立时,相加 MTC 模型在统计学上是优越的。当加性仅轻度违反时,两种模型在偏差-精度权衡方面具有可比性优势。当加性被强烈违反时,相加效应模型在统计学上是劣等的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fc01/3346206/c388abe2499a/clep-4-075f1.jpg

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