Power Calculations in Longitudinal Mixed Effects - from two measurements to three measurements
Hi everyone. In recent weeks, I’ve been going down the rabbit hole about power calculations for longitudinal mixed effects.
One: in PAS software, it states that both in the GEE and mixed effects options, the power remains the same as we move from two measurements to three measurements
Second: The same results are yielded by the software WebPower - Statistical Power Analysis and Sample Size Planning for Linear mixed-effects model
Three: it appears that many of these calculations are based on the book Sample Size Calculations for Clustered and Longitudinal Outcomes in Clinical Research. Sponsored by LLMs, I was able to reproduce their table 5.3
.
Then I extended the codes to two, three, and four measurements. In that simulation, actually, the power increased a little bit, but almost no impact.
So questions are:
- Are this references and code correct? I find it extremely counterintuitive and surprising that adding a third measurement has no/almost no impact on power.
I was expecting a 10 to 20% decrease on the sample size depending on the circumstances
- On that note, does anyone have a verified R script that correctly calculates power for longitudinal designs in these scenarios?
I have attached some reports. Thank you
Rplot02.pdf (34.6 KB)
power_simulation_results_wide.pdf (236.3 KB)
Report6 gee.pdf (313.7 KB)
Discussion in the ATmosphere