Multivariate Adjustments for Average Equivalence Testing
Multivariate (average) equivalence testing is widely used to assess whether the means of two conditions of interest are `equivalent' for different outcomes simultaneously. The multivariate Two One-Sided Tests (TOST) procedure is typically used in this context by checking if, outcome by outcome,...
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Zusammenfassung: | Multivariate (average) equivalence testing is widely used to assess whether
the means of two conditions of interest are `equivalent' for different outcomes
simultaneously. The multivariate Two One-Sided Tests (TOST) procedure is
typically used in this context by checking if, outcome by outcome, the marginal
$100(1-2\alpha$)\% confidence intervals for the difference in means between the
two conditions of interest lie within pre-defined lower and upper equivalence
limits. This procedure, known to be conservative in the univariate case, leads
to a rapid power loss when the number of outcomes increases, especially when
one or more outcome variances are relatively large. In this work, we propose a
finite-sample adjustment for this procedure, the multivariate $\alpha$-TOST,
that consists in a correction of $\alpha$, the significance level, taking the
(arbitrary) dependence between the outcomes of interest into account and making
it uniformly more powerful than the conventional multivariate TOST. We present
an iterative algorithm allowing to efficiently define $\alpha^{\star}$, the
corrected significance level, a task that proves challenging in the
multivariate setting due to the inter-relationship between $\alpha^{\star}$ and
the sets of values belonging to the null hypothesis space and defining the test
size. We study the operating characteristics of the multivariate $\alpha$-TOST
both theoretically and via an extensive simulation study considering cases
relevant for real-world analyses -- i.e.,~relatively small sample sizes,
unknown and heterogeneous variances, and different correlation structures --
and show the superior finite-sample properties of the multivariate
$\alpha$-TOST compared to its conventional counterpart. We finally re-visit a
case study on ticlopidine hydrochloride and compare both methods when
simultaneously assessing bioequivalence for multiple pharmacokinetic
parameters. |
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DOI: | 10.48550/arxiv.2411.16429 |