Jillian C Strayhorn, Linda M Collins, David J Vanness
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We used Monte Carlo simulation to evaluate the performance of a posterior expected value approach and CSA (automated for simulation purposes) relative to two benchmarks: random component selection, and the classical treatment package approach. We found that both the posterior expected value approach and CSA yielded substantial performance gains relative to the benchmarks. We also found that the posterior expected value approach outperformed CSA modestly but consistently in terms of overall accuracy, sensitivity, and specificity, across a wide range of realistic variations in simulated factorial optimization trials. We discuss implications for intervention optimization and promising future directions in the use of posterior expected value to make decisions in MOST. 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引用次数: 0
摘要
在目前的实践中,干预科学家在应用多阶段优化策略(MOST)进行 2k 因式优化试验时,会使用成分筛选法(CSA)来选择干预成分,以便将其纳入优化干预中。在这种方法中,科学家们会审查所有估计的主效应和交互作用,根据固定阈值确定重要效应,然后根据这些重要效应来决定干预成分的选择。我们提出了另一种基于贝叶斯决策理论的后验预期值方法。这种新方法更易于应用,也更容易扩展到各种干预优化问题中。我们使用蒙特卡罗模拟评估了后验期望值方法和 CSA(为模拟目的而自动进行)相对于随机成分选择和经典治疗包方法这两个基准的性能。我们发现,与基准相比,后验期望值法和 CSA 都能大幅提高性能。我们还发现,在模拟因子优化试验的各种现实变化中,后验期望值方法在总体准确性、灵敏度和特异性方面略微优于 CSA,但表现一致。我们讨论了干预优化的意义,以及使用后验预期值在 MOST 中做出决策的未来发展方向。(PsycInfo Database Record (c) 2023 APA, all rights reserved)。
A posterior expected value approach to decision-making in the multiphase optimization strategy for intervention science.
In current practice, intervention scientists applying the multiphase optimization strategy (MOST) with a 2k factorial optimization trial use a component screening approach (CSA) to select intervention components for inclusion in an optimized intervention. In this approach, scientists review all estimated main effects and interactions to identify the important ones based on a fixed threshold, and then base decisions about component selection on these important effects. We propose an alternative posterior expected value approach based on Bayesian decision theory. This new approach aims to be easier to apply and more readily extensible to a variety of intervention optimization problems. We used Monte Carlo simulation to evaluate the performance of a posterior expected value approach and CSA (automated for simulation purposes) relative to two benchmarks: random component selection, and the classical treatment package approach. We found that both the posterior expected value approach and CSA yielded substantial performance gains relative to the benchmarks. We also found that the posterior expected value approach outperformed CSA modestly but consistently in terms of overall accuracy, sensitivity, and specificity, across a wide range of realistic variations in simulated factorial optimization trials. We discuss implications for intervention optimization and promising future directions in the use of posterior expected value to make decisions in MOST. (PsycInfo Database Record (c) 2024 APA, all rights reserved).
期刊介绍:
Psychological Methods is devoted to the development and dissemination of methods for collecting, analyzing, understanding, and interpreting psychological data. Its purpose is the dissemination of innovations in research design, measurement, methodology, and quantitative and qualitative analysis to the psychological community; its further purpose is to promote effective communication about related substantive and methodological issues. The audience is expected to be diverse and to include those who develop new procedures, those who are responsible for undergraduate and graduate training in design, measurement, and statistics, as well as those who employ those procedures in research.