Gabrielle Simoneau, Marian Mitroiu, Thomas Pa Debray, Wei Wei, Stan Rw Wijn, Joana Caldas Magalhães, Justin Bohn, Changyu Shen, Fabio Pellegrini, Carl de Moor
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引用次数: 0
Abstract
Aim: Comparative effectiveness research using real-world data often involves pairwise propensity score matching to adjust for confounding bias. We show that corresponding treatment effect estimates may have limited external validity, and propose two visualization tools to clarify the target estimand. Materials & methods: We conduct a simulation study to demonstrate, with bivariate ellipses and joy plots, that differences in covariate distributions across treatment groups may affect the external validity of treatment effect estimates. We showcase how these visualization tools can facilitate the interpretation of target estimands in a case study comparing the effectiveness of teriflunomide (TERI), dimethyl fumarate (DMF) and natalizumab (NAT) on manual dexterity in patients with multiple sclerosis. Results: In the simulation study, estimates of the treatment effect greatly differed depending on the target population. For example, when comparing treatment B with C, the estimated treatment effect (and respective standard error) varied from -0.27 (0.03) to -0.37 (0.04) in the type of patients initially receiving treatment B and C, respectively. Visualization of the matched samples revealed that covariate distributions vary for each comparison and cannot be used to target one common treatment effect for the three treatment comparisons. In the case study, the bivariate distribution of age and disease duration varied across the population of patients receiving TERI, DMF or NAT. Although results suggest that DMF and NAT improve manual dexterity at 1 year compared with TERI, the effectiveness of DMF versus NAT differs depending on which target estimand is used. Conclusion: Visualization tools may help to clarify the target population in comparative effectiveness studies and resolve ambiguity about the interpretation of estimated treatment effects.
目的:使用真实世界数据进行的比较效果研究通常涉及成对倾向得分匹配,以调整混杂偏差。我们表明,相应的治疗效果估计值可能具有有限的外部有效性,并提出了两种可视化工具来明确目标估计值。材料与方法:我们进行了一项模拟研究,通过双变量椭圆图和欢乐图证明,不同治疗组间协变量分布的差异可能会影响治疗效果估计值的外部有效性。我们在一项案例研究中比较了特立氟胺(TERI)、富马酸二甲酯(DMF)和纳他珠单抗(NAT)对多发性硬化症患者手部灵活性的疗效,展示了这些可视化工具如何促进目标估计值的解释。研究结果在模拟研究中,治疗效果的估计值因目标人群的不同而大相径庭。例如,在比较治疗 B 和治疗 C 时,最初接受治疗 B 和治疗 C 的患者类型的估计治疗效果(及各自的标准误差)分别从-0.27(0.03)到-0.37(0.04)不等。配对样本的可视化显示,每个比较的协变量分布各不相同,不能用于针对三个治疗比较的一个共同治疗效果。在案例研究中,接受 TERI、DMF 或 NAT 治疗的患者中,年龄和病程的双变量分布各不相同。尽管研究结果表明,与 TERI 相比,DMF 和 NAT 可在 1 年后改善患者的手部灵活性,但 DMF 和 NAT 的疗效因使用的目标估计值不同而有所差异。结论:可视化工具有助于明确比较效果研究的目标人群,并解决对估计治疗效果解释不清的问题。
期刊介绍:
Journal of Comparative Effectiveness Research provides a rapid-publication platform for debate, and for the presentation of new findings and research methodologies.
Through rigorous evaluation and comprehensive coverage, the Journal of Comparative Effectiveness Research provides stakeholders (including patients, clinicians, healthcare purchasers, and health policy makers) with the key data and opinions to make informed and specific decisions on clinical practice.