Tags

  • Published on

    Values needed for sample size calculations

    Evidence-based measures of effect

    Use the empirical literature to your advantage

    One of the most important things you can do when designing your study is to conduct an a priori power analysis. Doing so will tell you how many people that you will need in your sample size to detect the effect size or treatment effect in your study.

    Without an a priori calculation, you could frivolously waste months or years of your life conducting a study only to find out that you only needed 100 in each group to achieve significance. Or, with the inverse, you conduct a study with only 50 patients and find out in a post hoc fashion that you would have needed 10,000 to prove your effect!  

    If you are using Research Engineer and G*Power to run your analyses, here are the things you will need:

    1. An evidence-based measure of effect from the literature is the first thing you should seek out. Find a study that is theoretically, conceptually, or clinically similar to your own. Try to find a study that uses the same outcome you plan to use in your study.  

    2. Use the means, standard deviations, and proportions from these published studies as evidence-based measures of effect size to calculate how large of a sample size you will need. These values will be reported in body of the results section or in tables within the manuscript. It shows more empirical rigor on your part if you conduct an a priori power analysis based on a well-known study in the field.

    3. Plug these values into G*Power using the steps published on the sample size page to find out how many people you will need to collect for your study.
  • Published on

    G*Power for the masses

    G*Power is a necessary tool for every researcher's toolkit

    Easy statistical power and sample size calculations

    I'm trying to run an online business so I'm fully Google-integrated. I see that there many search queries of different derivations related to sample size calculation as it relates to behind-the-scenes tracking measures.

    There is an open-source tool available to EVERYONE that allows you to calculate your own a priori and post hoc power analyses. It is called G*Power and as your personal statistical consultant, I highly suggest you go to the following web address and download Version 3.0 to your respective device:

    http://www.gpower.hhu.de/en.html    

    The researchers that developed this program have made a great contribution to science. It is truly a great and FREE program that can run a litany of different power analyses. You can find out in minutes how large of a sample size that you need, given that you have an idea of the effect size that you are attempting to detect in your study.

    Use means, proportions, and variance measures from published studies in your field to have the most empirically rigorous hypothesized effect. Enter these values into G*Power and the adjust the variance and magnitude of the effect size to see how the required sample size changes.   

    Click on the Sample Size button to access the methods of conducting and interpreting sample size calculations for ten different statistical tests.