Division of Biostatistics, Department of Preventive Medicine, Northwestern University Feinberg School of Medicine, Chicago, Illinois, USA.
Department of Public Health Sciences, University of Chicago, Chicago, Illinois, USA.
Stat Med. 2023 Apr 30;42(9):1430-1444. doi: 10.1002/sim.9679. Epub 2023 Feb 16.
As a result of advances in data collection technology and study design, modern longitudinal datasets can be much larger than they historically have been. Such "intensive" longitudinal datasets are rich enough to allow for detailed modeling of the variance of a response as well as the mean, and a flexible class of models called mixed-effects location-scale (MELS) regression models are commonly used to do so. However, fitting MELS models can pose computational challenges related to the numerical evaluation of multi-dimensional integrals; the slow runtime of current methods is inconvenient for data analysis and makes bootstrap inference impractical. In this paper, we introduce a new fitting technique, called FastRegLS, that is considerably faster than existing techniques while still providing consistent estimators for the model parameters.
由于数据收集技术和研究设计的进步,现代纵向数据集可以比以往任何时候都大得多。这种“密集”的纵向数据集足够丰富,可以对响应的方差和均值进行详细建模,并且通常使用称为混合效应位置-尺度(MELS)回归模型的灵活模型类来实现。然而,拟合 MELS 模型可能会带来与多维积分的数值评估相关的计算挑战;当前方法的运行缓慢对于数据分析来说很不方便,并且使得引导推理变得不切实际。在本文中,我们引入了一种新的拟合技术,称为 FastRegLS,它比现有技术快得多,同时仍然为模型参数提供一致的估计量。