Simulation study of Q statistic with constant weights for testing and estimation of heterogeneity of standardized mean differences in meta-analysis

Abstract

Cochran's Q statistic is routinely used for testing heterogeneity in meta-analysis. Its expected value is also used for estimation of between-study variance τ2. Cochran's Q, or QIV, uses estimated inverse-variance weights which makes approximating its distribution rather complicated. As an alternative, we are investigating a new Q statistic, QF, whose constant weights use only the studies' effective sample sizes. For standardized mean difference as the measure of effect, we study, by simulation, approximations to distributions of QIV and QF, as the basis for tests of heterogeneity and for new point and interval estimators of the between-study variance τ2. These include new DerSimonian-Kacker (2007)-type moment estimators based on the first moment of QF, and novel median-unbiased estimators of τ2.

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