Announcement

Collapse
No announcement yet.
X
  • Filter
  • Time
  • Show
Clear All
new posts

  • Sample size calculation for a cluster randomized controlled trail with three arms

    Dear All,
    How can I calculate sample size determination for a cluster randomized controlled trail which had three arms using STATA?

    I have three trial arms:
    Control group - will receive a currently used treatment
    Intervention group 1 - will receive new treatment 1
    Intervention group 2 - will receive new treatment 2
    With regard to the nature of clusters: It will be a two stage cluster.
    Stage one = districts will be randomly selected
    Stage two = One primary health care facility/Health Center per sampled district will will be selected
    Thus, all clients, who will fulfill the inclusion criteria of the study, coming for the specified health care service at the sampled health facility/Health Center will be included.
    I have two types of outcomes; binary and count.

    The sample size I want to determine will take into consideration the following issues;
    1. Number of clusters
    2. Cluster size (varying cluster size)
    3. Coefficient of variation
    4. Intracluster correlation coefficient / rho and
    5. Effect size
    How can I determine the sample size for the three groups; is the Bonferroni or Tukey-Kramer correction appropriate for it or is it possible to use the two population formula and then allocate for the three groups or is there any correction assumption other than this that STATA will consider?

    I was looking at STATA but I didn't see option for cluster data sample size calculation and for multiple group too. Which option should I use?

    http://www.statalist.org/forums/help#adviceextras

    Regards

    Teketo
    Last edited by Teketo Tegegne; 14 Dec 2016, 06:56.

  • #2
    I am not aware of any software that will do this for a three armed study, nor with varying cluster sizes.

    The user written -clustersampsi- is the closest thing that I know of. You can get it at -net sj 15-2 st0286_2- (Follow the -net install- and -net get- instructions there.)

    It may be that there is something more flexible out there that I don't know about, and I, too, would be eager to learn of it if somebody else responds.

    Comment


    • #3

      For complex study designs, I typically use simulation to estimate power. The idea is to generate fake datasets with known effect sizes, simulating the noise, and determine in what proportion the effect is detected (P < 0.05) under a suitable test. The proportion will be the power. This article may get you started http://www.stata-journal.com/sjpdf.h...iclenum=st0010


      hth,
      Jeph
      Last edited by Jeph Herrin; 15 Dec 2016, 16:07.

      Comment


      • #4
        Jeph Herrin . Thanks. Actually, that's what I generally do, too. I was hoping, along with Teketo, that somebody has come up with something easier: something similar to -sampsi-. These simulations can be time consuming to code, and even more so to run, if, as is often the case, you need to do sensitivity analysis around several uncertain parameters.

        Comment


        • #5
          Clyde - There is a formula for calculating sample size for a cluster randomized trial, at least in the two arm case - one adjusts for the variance inflation factor (VIF) = (1+(m-1)*ICC); this works fine unders some assumptions about uniform cluster size. See http://www.jclinepi.com/article/S089...169-2/fulltext

          And I've just remembered this as well -findit clustersampsi-

          Jeph

          Comment


          • #6
            Yes, -clustersampsi- is quite useful for the simple case of uniform cluster size, as is the VIF formula. Unfortunately, in my line of work, cluster sizes usually vary quite a bit, so these approaches don't do the trick.

            I have an intuition that when the cluster sizes vary, one might be able to get the right results, or at least a decent approximation to them, by calculating the harmonic mean of the cluster sizes and using that as if it were a uniform cluster size study. But I've never been able to prove that, nor find it anywhere in the literature.

            Comment

            Working...
            X