Prognostic score-based model averaging approach for propensity score estimation.

IF 3.9 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Daijiro Kabata, Elizabeth A Stuart, Ayumi Shintani
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引用次数: 0

Abstract

Background: Propensity scores (PS) are typically evaluated using balance metrics that focus on covariate balance, often without considering their predictive power for the outcome. This approach may not always result in optimal bias reduction in the treatment effect estimate. To address this issue, evaluating covariate balance through prognostic scores, which account for the relationship between covariates and the outcome, has been proposed. Similarly, using a typical model averaging approach for PS estimation that minimizes prediction error for treatment status and covariate imbalance does not necessarily optimize PS-based confounding adjustment. As an alternative approach, using the averaged PS model that minimizes inter-group differences in the prognostic score may further reduce bias in the treatment effect estimate. Moreover, since the prognostic score is also an estimated quantity, model averaging in the prognostic scores can help identify a better prognostic score model. Utilizing the model-averaged prognostic scores as the balance metric for constructing the averaged PS model can contribute to further decreasing bias in treatment effect estimates. This paper demonstrates the effectiveness of the PS model averaging approach based on prognostic score balance and proposes a method that uses the model-averaged prognostic score as a balance metric, evaluating its performance through simulations and empirical analysis.

Methods: We conduct a series of simulations alongside an analysis of empirical observational data to compare the performances of weighted treatment effect estimates using the proposed and existing approaches. In our examination, we separately provid four candidate estimates for the PS and prognostic score models using traditional regression and machine learning methods. The model averaging of PS based on these candidate estimators is performed to either maximize the prediction accuracy of the treatment or to minimize intergroup differences in covariate distributions or prognostic scores. We also utilize not only the prognostic scores from each candidate model but also an averaged score that best predicted the outcome, for the balance assessment.

Results: The simulation and empirical data analysis reveal that our proposed model-averaging approaches for PS estimation consistently yield lower bias and less variability in treatment effect estimates across various scenarios compared to existing methods. Specifically, using the optimally averaged prognostic scores as a balance metric significantly improves the robustness of the weighted treatment effect estimates.

Discussion: The prognostic score-based model averaging approach for estimating PS can outperform existing model averaging methods. In particular, the estimator using the model averaging prognostic score as a balance metric can produce more robust estimates. Since our results are obtained under relatively simple conditions, applying them to real data analysis requires adjustments to obtain accurate estimates according to the complexity and dimensionality of the data.

Conclusions: Using the prognostic score as the balance metric for the PS model averaging enhances the performance of the treatment effect estimator, which can be recommended for a wide variety of situations. When applying the proposed method to real-world data, it is important to use it in conjunction with techniques that mitigate issues arising from the complexity and high dimensionality of the data.

基于预后评分模型平均法的倾向评分估算。
背景:倾向评分(PS)通常使用平衡指标进行评估,该指标侧重于协变量的平衡,通常不考虑其对结果的预测能力。这种方法并不总能减少治疗效果估计值的偏差。为了解决这个问题,有人提出通过预后评分来评估协变量平衡,这种评分考虑了协变量与结果之间的关系。同样,使用典型的模型平均法进行 PS 估计,使治疗状态和协变量不平衡的预测误差最小化,并不一定能优化基于 PS 的混杂调整。作为一种替代方法,使用预后评分组间差异最小化的平均 PS 模型可能会进一步减少治疗效果估计值的偏差。此外,由于预后评分也是一个估计量,对预后评分进行模型平均有助于找出更好的预后评分模型。利用模型平均预后评分作为构建平均 PS 模型的平衡指标,有助于进一步减少治疗效果估计值的偏差。本文展示了基于预后评分平衡的 PS 模型平均方法的有效性,并提出了一种使用模型平均预后评分作为平衡指标的方法,通过模拟和实证分析对其性能进行了评估:方法:我们在分析经验观察数据的同时进行了一系列模拟,以比较使用建议方法和现有方法的加权治疗效果估计值的性能。在研究中,我们使用传统回归和机器学习方法分别为 PS 和预后评分模型提供了四种候选估计值。根据这些候选估计值对 PS 进行模型平均,以最大限度地提高治疗的预测准确性,或最大限度地缩小协变量分布或预后评分的组间差异。我们不仅利用每个候选模型的预后得分,还利用最能预测结果的平均得分进行平衡评估:模拟和实证数据分析显示,与现有方法相比,我们提出的预后评估模型平均法在各种情况下都能获得较低的偏差和较小的治疗效果估计值。具体而言,使用最优化的平均预后评分作为平衡指标,可显著提高加权治疗效果估计值的稳健性:讨论:基于预后评分的模型平均估算 PS 的方法优于现有的模型平均方法。讨论:基于预后评分的模型平均估算 PS 的方法优于现有的模型平均估算方法,尤其是使用模型平均预后评分作为平衡指标的估算方法能得出更稳健的估算结果。由于我们的结果是在相对简单的条件下获得的,因此将其应用于实际数据分析需要根据数据的复杂性和维度进行调整,以获得准确的估计值:结论:使用预后评分作为 PS 模型平均的平衡度量,可以提高治疗效果估计值的性能,建议在各种情况下使用。在将所提出的方法应用于实际数据时,重要的是将其与缓解数据复杂性和高维性所产生问题的技术结合起来使用。
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来源期刊
BMC Medical Research Methodology
BMC Medical Research Methodology 医学-卫生保健
CiteScore
6.50
自引率
2.50%
发文量
298
审稿时长
3-8 weeks
期刊介绍: BMC Medical Research Methodology is an open access journal publishing original peer-reviewed research articles in methodological approaches to healthcare research. Articles on the methodology of epidemiological research, clinical trials and meta-analysis/systematic review are particularly encouraged, as are empirical studies of the associations between choice of methodology and study outcomes. BMC Medical Research Methodology does not aim to publish articles describing scientific methods or techniques: these should be directed to the BMC journal covering the relevant biomedical subject area.
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