论文标题

人口调整的方法,访问各个患者数据的访问有限:审查和仿真研究

Methods for Population Adjustment with Limited Access to Individual Patient Data: A Review and Simulation Study

论文作者

Remiro-Azócar, Antonio, Heath, Anna, Baio, Gianluca

论文摘要

当访问各个患者数据的访问量且作用修饰符上存在跨审判差异时,人口调整后的间接比较估计治疗效果。流行方法包括匹配调整的间接比较(MAIC)和模拟治疗比较(STC)。对这些方法的正式评估有限,以及它们是否可以用于准确比较治疗方法。因此,我们进行了一项全面的仿真研究,以比较162个场景中的MAIC和STC的标准未经调整的间接比较。这项模拟研究假设试验正在研究生存结果并测量连续协变量,而对数危险比作为效果量度。 MAIC在没有假设失败的情况下,无偏的治疗效果估计值。 STC的典型用法会产生偏见,因为它针对有条件的治疗效果,而目标估计应为边缘治疗效果。间接比较中估计值的不相容性会导致偏见,因为效果的量度是不可能的。标准间接比较是系统偏见的,尤其是在更强的协变量失衡和相互作用效果下。标准误差和覆盖率通常在MAIC中有效,但是稳健的三明治方差估计值低估了有效样本量很小的变异性。标准间接比较的间隔估计值太窄,STC遭受偏置引起的底层底层的损坏。 MAIC提供了最准确的估计值,并且具有较低程度的协变量重叠,其偏置减少在没有假设失败的情况下,其偏差比有效样本量和精度的损失大于损失。一个重要的未来目标是开发针对边缘治疗效果的STC的替代配方。

Population-adjusted indirect comparisons estimate treatment effects when access to individual patient data is limited and there are cross-trial differences in effect modifiers. Popular methods include matching-adjusted indirect comparison (MAIC) and simulated treatment comparison (STC). There is limited formal evaluation of these methods and whether they can be used to accurately compare treatments. Thus, we undertake a comprehensive simulation study to compare standard unadjusted indirect comparisons, MAIC and STC across 162 scenarios. This simulation study assumes that the trials are investigating survival outcomes and measure continuous covariates, with the log hazard ratio as the measure of effect. MAIC yields unbiased treatment effect estimates under no failures of assumptions. The typical usage of STC produces bias because it targets a conditional treatment effect where the target estimand should be a marginal treatment effect. The incompatibility of estimates in the indirect comparison leads to bias as the measure of effect is non-collapsible. Standard indirect comparisons are systematically biased, particularly under stronger covariate imbalance and interaction effects. Standard errors and coverage rates are often valid in MAIC but the robust sandwich variance estimator underestimates variability where effective sample sizes are small. Interval estimates for the standard indirect comparison are too narrow and STC suffers from bias-induced undercoverage. MAIC provides the most accurate estimates and, with lower degrees of covariate overlap, its bias reduction outweighs the loss in effective sample size and precision under no failures of assumptions. An important future objective is the development of an alternative formulation to STC that targets a marginal treatment effect.

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