卫生政策评估中的间断时间序列设计与分析

Huan Jiang, Jurgen Rehm, Alexander Tran, Shannon Lange
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引用次数: 0

摘要

间断时间序列设计是一种准实验研究设计,通常用于评估特定干预措施(如卫生政策的实施)对特定结果的影响。中断时间序列分析最常推荐的两种分析方法是自回归综合移动平均法(ARIMA)和广义加法模型(GAM)。我们进行了模拟测试,以确定 ARIMA 和 GAM 方法在不同的政策效应大小、有无季节性以及有无政策变量的误设情况下的性能差异。我们发现,在某些条件下,如不同的政策效应大小、有无季节性,ARIMA 的结果更为一致,而 GAM 在模型被误设时更为稳健。鉴于这些发现,模型之间的差异凸显了在卫生政策研究中谨慎选择和验证模型的必要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interrupted Time Series Design and Analyses in Health Policy Assessment
Interrupted time series design is a quasi-experimental study design commonly used to evaluate the impact of a particular intervention (e.g., a health policy implementation) on a specific outcome. Two of the most often recommended analytical approaches to interrupted time series analysis are autoregressive integrated moving average (ARIMA) and Generalized Additive Models (GAM). We conducted simulation tests to determine the performance differences between ARIMA and GAM methodology across different policy effect sizes, with or without seasonality, and with or without misspecification of policy variables. We found that ARIMA exhibited more consistent results under certain conditions, such as with different policy effect sizes, with or without seasonality, while GAM were more robust when the model was misspecified. Given these findings, the variation between the models underscores the need for careful model selection and validation in health policy studies.
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