A method for obtaining randomized block designs in preclinical studies with multiple quantitative blocking variables |
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Authors: | Stephen J. Iturria |
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Affiliation: | Global Statistical Sciences, Eli Lilly & Company, Indianapolis, IN, USA |
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Abstract: | A method is proposed for block randomization of treatments to experimental units that can accommodate both multiple quantitative blocking variables and unbalanced designs. Hierarchical clustering in conjunction with leaf‐order optimization is used to block experimental units in multivariate space. The method is illustrated in the context of a diabetic mouse assay. A simulation study is presented to explore the utility of the proposed randomization method relative to that of a completely randomized approach, both in the presence and absence of covariate adjustment. An example R function is provided to illustrate the implementation of the method. Copyright © 2010 John Wiley & Sons, Ltd. |
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Keywords: | randomized block designs clustering preclinical assays |
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