Wang Yongzhe, Nonzee Narissa J, Zhang Haonan, Ashing Kimlin T, Song Gaole, Crespi Catherine M
City Of Hope National Medical Center.
University of Washington.
Res Sq. 2024 Feb 27:rs.3.rs-3972428. doi: 10.21203/rs.3.rs-3972428/v1.
Segmented regression, a common model for interrupted time series (ITS) analysis, primarily utilizes two equation parametrizations. Interpretations of coefficients vary between the two segmented regression parametrizations, leading to occasional user misinterpretations.
To illustrate differences in coefficient interpretation between two common parametrizations of segmented regression in ITS analysis, we derived analytical results and present an illustration evaluating the impact of a smoking regulation policy in Italy using a publicly accessible dataset. Estimated coefficients and their standard errors were obtained using two commonly used parametrizations for segmented regression with continuous outcomes. We clarified coefficient interpretations and intervention effect calculations.
Our investigation revealed that both parametrizations represent the same model. However, due to differences in parametrization, the immediate effect of the intervention is estimated differently under the two approaches. The key difference lies in the interpretation of the coefficient related to the binary indicator for intervention implementation, impacting the calculation of the immediate effect.
Two common parametrizations of segmented regression represent the same model but have different interpretations of a key coefficient. Researchers employing either parametrization should exercise caution when interpreting coefficients and calculating intervention effects.
分段回归是中断时间序列(ITS)分析的常用模型,主要使用两种方程参数化方法。两种分段回归参数化方法对系数的解释有所不同,这偶尔会导致用户误解。
为了说明ITS分析中分段回归的两种常见参数化方法在系数解释上的差异,我们推导出分析结果,并使用一个可公开获取的数据集展示了一项评估意大利吸烟管制政策影响的示例。使用两种常用的具有连续结果的分段回归参数化方法获得估计系数及其标准误差。我们阐明了系数解释和干预效果计算方法。
我们的研究表明,两种参数化方法代表的是同一个模型。然而,由于参数化的差异,两种方法对干预的即时效果估计不同。关键差异在于与干预实施的二元指标相关的系数解释,这影响了即时效果的计算。
分段回归的两种常见参数化方法代表同一个模型,但对一个关键系数有不同解释。采用任何一种参数化方法的研究人员在解释系数和计算干预效果时都应谨慎。