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Effects of lack of independence in meta-epidemiology. Peter Herbison Preventive and Social Medicine University of Otago. The problem. Median number of trials in a meta-analysis in the Cochrane Library is 2-3. In spite of this many of these reviews make quite strong recommendations.
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Effects of lack of independence in meta-epidemiology Peter Herbison Preventive and Social Medicine University of Otago
The problem • Median number of trials in a meta-analysis in the Cochrane Library is 2-3. • In spite of this many of these reviews make quite strong recommendations. • Are they justified in making these recommendations?
What we wanted to do • Used an existing data set that has 65 meta-analyses from 18 systematic reviews that was collected for another purpose • Using cumulative meta-analysis we looked at what the answer was after the first three and the first five studies and compared this with the answer from all the studies (“final” answer)
Referees • Paper came back from the journal saying that it was a good idea but they were not certain if using multiple outcomes from the same systematic review was reasonable • Most similar meta-epidemiology studies only select one outcome from each systematic review • This would leave us with only 18 results
Lack of independence • I find it hard to imagine that this lack of independence will influence how quickly results settle down • Especially since there is often a different mix of studies for the different outcomes • One referee suggested a sensitivity analysis using one outcome from each review
Bootstrapping • Why just randomly choose one outcome from each review when you can do this repeatedly? • Using strata and size in the bootstrap command • This should give some idea whether the lack of independence is important or not
Results • Does the confidence interval include the “final” value?
Results • Does the confidence interval overlap with that of the “final” value?
More traditional meta-epidemiology • Use the same data set to see if lack of allocation concealment is associated with bias. • Assuming independence • ROR 0.91 (95%CI 0.84 – 0.98) • Bootstrap • ROR 0.91 (95%CI 0.83 – 0.99)
Conclusion • In this data set at least, lack of independence does not seem to make much difference.