McLean Hospital.
Brigham and Women's Hospital and Ariadne Labs.
Multivariate Behav Res. 2024 Jan-Feb;59(1):110-122. doi: 10.1080/00273171.2023.2217662. Epub 2023 Jun 28.
In many psychometric applications, the relationship between the mean of an outcome and a quantitative covariate is too complex to be described by simple parametric functions; instead, flexible nonlinear relationships can be incorporated using penalized splines. Penalized splines can be conveniently represented as a linear mixed effects model (LMM), where the coefficients of the spline basis functions are random effects. The LMM representation of penalized splines makes the extension to multivariate outcomes relatively straightforward. In the LMM, no effect of the quantitative covariate on the outcome corresponds to the null hypothesis that a fixed effect and a variance component are both zero. Under the null, the usual asymptotic chi-square distribution of the likelihood ratio test for the variance component does not hold. Therefore, we propose three permutation tests for the likelihood ratio test statistic: one based on permuting the quantitative covariate, the other two based on permuting residuals. We compare simulation the Type I error rate and power of the three permutation tests obtained from joint models for multiple outcomes, as well as a commonly used parametric test. The tests are illustrated using data from a stimulant use disorder psychosocial clinical trial.
在许多心理计量学应用中,结果的均值与定量协变量之间的关系过于复杂,无法用简单的参数函数来描述;相反,可以使用惩罚样条来纳入灵活的非线性关系。惩罚样条可以方便地表示为线性混合效应模型 (LMM),其中样条基函数的系数是随机效应。惩罚样条的 LMM 表示形式使得向多变量结果的扩展相对简单。在 LMM 中,定量协变量对结果没有影响,这对应于固定效应和方差分量均为零的零假设。在零假设下,方差分量似然比检验的常用渐近卡方分布不成立。因此,我们提出了三种似然比检验统计量的置换检验:一种基于置换定量协变量,另外两种基于置换残差。我们比较了联合多变量结果模型的三种置换检验的模拟Ⅰ型错误率和功效,以及一种常用的参数检验。使用兴奋剂使用障碍心理社会临床试验的数据说明了这些检验。