Area under the Curve as an Alternative to Latent Growth Curve Modeling When Assessing the Effects of Predictor Variables on Repeated Measures of a Continuous Dependent Variable

IF 0.9 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Stats Pub Date : 2023-05-25 DOI:10.3390/stats6020043
Daniel Rodriguez
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Abstract

Researchers conducting longitudinal data analysis in psychology and the behavioral sciences have several statistical methods to choose from, most of which either require specialized software to conduct or advanced knowledge of statistical methods to inform the selection of the correct model options (e.g., correlation structure). One simple alternative to conventional longitudinal data analysis methods is to calculate the area under the curve (AUC) from repeated measures and then use this new variable in one’s model. The present study assessed the relative efficacy of two AUC measures: the AUC with respect to the ground (AUC-g) and the AUC with respect to the increase (AUC-i) in comparison to latent growth curve modeling (LGCM), a popular repeated measures data analysis method. Using data from the ongoing Panel Study of Income Dynamics (PSID), we assessed the effects of four predictor variables on repeated measures of social anxiety, using both the AUC and LGCM. We used the full information maximum likelihood (FIML) method to account for missing data in LGCM and multiple imputation to account for missing data in the calculation of both AUC measures. Extracting parameter estimates from these models, we next conducted Monte Carlo simulations to assess the parameter bias and power (two estimates of performance) of both methods in the same models, with sample sizes ranging from 741 to 50. The results using both AUC measures in the initial models paralleled those of LGCM, particularly with respect to the LGCM baseline. With respect to the simulations, both AUC measures preformed as well or even better than LGCM in all sample sizes assessed. These results suggest that the AUC may be a viable alternative to LGCM, especially for researchers with less access to the specialized software necessary to conduct LGCM.
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当评估预测变量对连续因变量重复测量的影响时,曲线下面积作为潜在增长曲线模型的替代方法
在心理学和行为科学中进行纵向数据分析的研究人员有几种统计方法可供选择,其中大多数要么需要专门的软件来进行,要么需要高级的统计方法知识来告知正确模型选项的选择(例如,相关结构)。与传统的纵向数据分析方法相比,一个简单的替代方法是通过重复测量计算曲线下面积(AUC),然后在模型中使用这个新变量。与潜在生长曲线模型(LGCM)(一种流行的重复测量数据分析方法)相比,本研究评估了两种AUC测量的相对功效:相对于地面的AUC (AUC-g)和相对于增加的AUC (AUC-i)。使用正在进行的收入动态小组研究(PSID)的数据,我们使用AUC和LGCM评估了四个预测变量对重复测量社交焦虑的影响。我们使用全信息最大似然(FIML)方法来解释LGCM中的缺失数据,并使用多重插值来解释两种AUC度量计算中的缺失数据。从这些模型中提取参数估计,我们接下来进行蒙特卡罗模拟,以评估两种方法在相同模型中的参数偏差和功率(两种性能估计),样本量从741到50不等。在初始模型中使用两种AUC测量的结果与LGCM的结果相似,特别是在LGCM基线方面。就模拟而言,在所有评估的样本量中,两种AUC测量都表现得与LGCM一样好,甚至更好。这些结果表明,AUC可能是LGCM的一个可行的替代方案,特别是对于那些很少获得进行LGCM所需的专门软件的研究人员。
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CiteScore
0.60
自引率
0.00%
发文量
0
审稿时长
7 weeks
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