Increasing the statistical power of animal experiments with historical control data

被引:0
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作者
V. Bonapersona
H. Hoijtink
R. A. Sarabdjitsingh
M. Joëls
机构
[1] University Medical Center Utrecht Brain Center,Department of Translational Neuroscience
[2] Utrecht University,Department of Methodology and Statistics
[3] Utrecht University,Swammerdam Institute for Life Sciences, SILS
[4] University of Groningen,CNS
[5] University Medical Center Groningen,Department of Anatomy/Neurobiology
[6] University of Amsterdam,Department of Pediatrics
[7] University of California Irvine,Department of Stress Neurobiology and Neurogenetics
[8] University of California Irvine,National Clinical Research Center for Mental Disorders
[9] Max Planck Institute of Psychiatry,Key Laboratory of Mental Health
[10] Peking University,Faculty of Medicine
[11] Peking University,Department of Psychiatry
[12] University Center Unicerrado,Department of Neurobiology
[13] McGill University,undefined
[14] Zhejiang University School of Medicine,undefined
来源
Nature Neuroscience | 2021年 / 24卷
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摘要
Low statistical power reduces the reliability of animal research; yet, increasing sample sizes to increase statistical power is problematic for both ethical and practical reasons. We present an alternative solution using Bayesian priors based on historical control data, which capitalizes on the observation that control groups in general are expected to be similar to each other. In a simulation study, we show that including data from control groups of previous studies could halve the minimum sample size required to reach the canonical 80% power or increase power when using the same number of animals. We validated the approach on a dataset based on seven independent rodent studies on the cognitive effects of early-life adversity. We present an open-source tool, RePAIR, that can be widely used to apply this approach and increase statistical power, thereby improving the reliability of animal experiments.
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页码:470 / 477
页数:7
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