1.9 KiB

Exercise: Power simulation for LMM

Physical healing as a function of perceived time

Aungle and Langer (2023) investigate how perceived time influences physical healing

  • They used cupping to induce bruises on 33 subjects, then took a picture, waited for 28 min and took another picture
  • Subjective time was manipulated to feel like 14, 28, or 56 min
  • The pre and post pictures were presented to 25 raters who rated the amount of healing on a 10-point-scale with 0 = not at all healed, 5 = somewhat healed, 10 = completely healed
  • Subjects participated in all three conditions over a two week period

Data: healing.RData

load("../data/healing.RData")

str(dat)

# Subject ID
dat$Subject <- factor(dat$Subject)
# Rater ID
dat$ResponseId <- factor(dat$ResponseId)
  1. Visualize the data.

    • Aggregate the data over Raters and plot the data for each subject using lattice::xyplot()
    • Aggregate the data over Subjects and plot one panel for each rater
    • How would you choose the random effects for a model testing healing over the three conditions
  2. Fit the model you think fits the experimental design best

  3. Test the effects of condition

  4. Run a power simulation for a replication study:

    • Set up a data frame containing the study design and sample size.

    • Specify the minimum relevant effects.

    • Set the fixed effects and variance components to plausible values.

    • How many participants are required to detect the specified effect with a power of 80%?

    • Recover the parameters of the model for one simulated data set.

Reference

Aungle, P., and E. Langer. 2023. “Physical Healing as a Function of Perceived Time.” Scientific Reports 13 (1): 22432. https://doi.org/10.1038/s41598-023-50009-3.