| Literature DB >> 35521689 |
Jessica I Murphy1,2, Nicholas E Weaver1, Audrey E Hendricks1,2.
Abstract
Longitudinal studies are commonly used to examine possible causal factors associated with human health and disease. However, the statistical models, such as two-way ANOVA, often applied in these studies do not appropriately model the experimental design, resulting in biased and imprecise results. Here, we describe the linear mixed effects (LME) model and how to use it for longitudinal studies. We re-analyze a dataset published by Blanton et al. in 2016 that modeled growth trajectories in mice after microbiome implantation from nourished or malnourished children. We compare the fit and stability of different parameterizations of ANOVA and LME models; most models found that the nourished versus malnourished growth trajectories differed significantly. We show through simulation that the results from the two-way ANOVA and LME models are not always consistent. Incorrectly modeling correlated data can result in increased rates of false positives or false negatives, supporting the need to model correlated data correctly. We provide an interactive Shiny App to enable accessible and appropriate analysis of longitudinal data using LME models.Entities:
Keywords: ANOVA; Linear mixed effects; Longitudinal; Microbiome; Mouse; Shiny app
Mesh:
Year: 2022 PMID: 35521689 PMCID: PMC9092652 DOI: 10.1242/dmm.048025
Source DB: PubMed Journal: Dis Model Mech ISSN: 1754-8403 Impact factor: 5.732
Parameter definitions for linear mixed effects models
Assessment of random effect terms and autocorrelation structure in nested models
Stability of the effect of interest over different random effect and correlation structures with model comparison
Type I error and power for the group by time interaction effect
Type I error by sample size for the group by time interaction effect
Fig. 1.EasyLME Shiny app user interface featuring the ‘Fitted Lines’ tab. (A) Default variables for the Blanton et al. demo data. (B) Main tabs of the app. (C) Drop-down menu to select a specific model to visualize the fitted lines. (D) Plot of the original data and fitted lines for the higher-level random effect variable in the maximal model (Donor Intercept/Slope+Mouse Intercept/Slope).
Fig. 2.Study design for the Blanton et al. dataset. Fecal samples from children aged 6-18 months were orally transferred to five germ-free mice (M). The analysis was restricted to the three healthy (H) and five undernourished (U) donor samples that produced >50% transplantation efficiency. The percentage weight change of each mouse was recorded at 12 time points (t1-12): 0, 1, 3, 4, 7, 11, 14, 18, 21, 25, 28 and 32 days.