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  • How to take to account matching in cluster randomised controlled trial analysis?

    Hello,

    I am analysing data from a matched-pair cluster randomised controlled trial. Pairs were matched according to schools’ and classes’ (5th grades) size and spacial proximity.

    Final match was the following:
    24 pairs – 1 + 1
    4 pairs – 2 + 1 (e.g. one very big school had the same number of children in 5th grades as two big schools)
    6 „empty“ pairs – 1 + 0 (e.g. the school declined their participation just before the study)

    So far I have not taken to account of matching when doing multilevel analysis.

    As an example:

    Code:
    xtmelogit initiation intervention || school_no:, variance or
    where initiation refers to alcohol use initiation by the participant (yes/no), intervention refers to intervention condition (yes/no) and school_no refers to a number each school has (altogether there are 66 schools, 34 intervention and 32 control).

    I am unsure of how to take account of matching. Any ideas?

    Many thanks,
    Mariliis Tael-Öeren

  • #2
    Create a variable that identifies each pair (or triplet). The pairs and schools form a multiple-membership model which you can model as if they were crossed random effects. Or, perhaps simpler, keep the random effects part of the model as is and just add i.pair_identifier to the fixed effects level.

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    • #3
      Thank you. I will try that.

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