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首页> 外文期刊>American Journal of Epidemiology >Evaluating Flexible Modeling of Continuous Covariates in Inverse-Weighted Estimators
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Evaluating Flexible Modeling of Continuous Covariates in Inverse-Weighted Estimators

机译:评估逆加权估计中连续协变量的柔性建模

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摘要

Correct specification of the exposure model is essential for unbiased estimation in marginal structural models with inverse-probability-of-treatment weights. However, although flexible modeling is commonplace when estimating effects of continuous covariates in outcome models, its use is less frequent in estimation of inverse probability weights. Using simulations, we assess the accuracy of the treatment effect estimates and covariate balance obtained with different exposure model specifications when the true relationship between a continuous, possibly time-varying covariate L-t and the logit of the probability of exposure is nonlinear. Specifically, we compare 4 approaches to modeling the effect of L-t when estimating inverse probability weights: a linear function, the covariate-balancing propensity score, and 2 easy-to-implement flexible methods that relax the assumption of linearity: cubic regression splines and fractional polynomials. Using data from 2 empirical studies, we compare linear exposure models with flexible exposure models to estimate the effect of sustained virological response to hepatitis C virus treatment on the progression of liver fibrosis. Our simulation results demonstrate that ignoring important nonlinear relationships when fitting the exposure model may provide poorer covariate balance and induce substantial bias in the estimated exposure-outcome associations. Analysts should routinely consider flexible modeling of continuous covariates when estimating inverse-probability-of-treatment weights.
机译:正确的曝光模型的规范对于具有逆概率的处理重量的边缘结构模型中的无偏估计至关重要。然而,尽管当柔性建模是常见的阶段,但是当估计成果模型中的连续协变量的效果时,估计反向概率重量的使用频率不太频繁。使用模拟,当连续,可能时变的协变量L-T和曝光概率的概率是非线性时,使用不同曝光模型规范获得的治疗效果估算和协变量的准确性。具体而言,我们比较4估算逆概率权重模拟LT的效果的方法:线性函数,协变性平衡倾态得分和2个易于实现的灵活方法,可以放宽线性度的假设:立方回归花键和分数多项式。使用来自2个实证研究的数据,我们将线性曝光模型与灵活的曝光模型进行比较,以估算持续病毒性反应对肝纤维化进展的乙型肝炎病毒治疗的影响。我们的仿真结果表明,当拟合曝光模型时忽略重要的非线性关系可以提供较差的协变量,并在估计的曝光结果协会中诱导大量偏差。当估计逆概率的治疗重量时,分析师应经常考虑灵活的连续协变量模型。

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