Combining Multivariate Bioassays: Accurate Inference Using Small Sample Asymptotics |
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Authors: | Gaurav Sharma Thomas Mathew Ionut Bebu |
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Affiliation: | 1. Department of Mathematics and Statistics, University of Maryland Baltimore County;2. Department of Preventive Medicine and Biometrics, F. Edward Hebert School of Medicine, Uniformed Services, University of the Health Sciences |
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Abstract: | For several independent multivariate bioassays performed at different laboratories or locations, the problem of testing the homogeneity of the relative potencies is addressed, assuming the usual slope‐ratio or parallel line assay model. When the homogeneity hypothesis holds, interval estimation of the common relative potency is also addressed. These problems have been investigated in the literature using likelihood‐based methods, under the assumption of a common covariance matrix across the different studies. This assumption is relaxed in this investigation. Numerical results show that the usual likelihood‐based procedures are inaccurate for both of the above problems, in terms of providing inflated type I error probabilities for the homogeneity test, and providing coverage probabilities below the nominal level for the interval estimation of the common relative potency, unless the sample sizes are large, as expected. Correction based on small sample asymptotics is investigated in this article, and this provides significantly more accurate results in the small sample scenario. The results are also illustrated with examples. |
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Keywords: | Fieller's theorem homogeneity test likelihood ratio test parallel line assay relative potency slope‐ratio assay |
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