Abstract

Despite the potential benefits of sequential designs, studies evaluating treatments or experimental manipulations in preclinical experimental biomedicine almost exclusively use classical block designs. Our aim with this article is to bring the existing methodology of group sequential designs to the attention of researchers in the preclinical field and to clearly illustrate its potential utility. Group sequential designs can offer higher efficiency than traditional methods and are increasingly used in clinical trials. Using simulation of data, we demonstrate that group sequential designs have the potential to improve the efficiency of experimental studies, even when sample sizes are very small, as is currently prevalent in preclinical experimental biomedicine. When simulating data with a large effect size of d = 1 and a sample size of n = 18 per group, sequential frequentist analysis consumes in the long run only around 80% of the planned number of experimental units. In larger trials (n = 36 per group), additional stopping rules for futility lead to the saving of resources of up to 30% compared to block designs. We argue that these savings should be invested to increase sample sizes and hence power, since the currently underpowered experiments in preclinical biomedicine are a major threat to the value and predictiveness in this research domain.

Highlights

  • Group sizes in preclinical research are seldom informed by statistical power considerations but rather are chosen on practicability [1, 2]

  • True positives are often missed, and many statistically significant findings are due to chance

  • A group sequential design is a type of adaptive design that allows for early stopping of an experiment because of efficacy or futility, based on interim analyses before all experimental units are spent [7,8,9], thereby offering an increase in efficiency

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Summary

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We demonstrate that group sequential designs have the potential to improve the efficiency of experimental studies, even when sample sizes are very small, as is currently prevalent in preclinical experimental biomedicine. In larger trials (n = 36 per group), additional stopping rules for futility lead to the saving of resources of up to 30% compared to block designs. We argue that these savings should be invested to increase sample sizes and power, since the currently underpowered experiments in preclinical biomedicine are a major threat to the value and predictiveness in this research domain

Background
Sequential study designs
Increase in efficiency
Bayes Factor
Applications of sequential designs
Findings
Supporting information
Full Text
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