Department of Anesthesiology, College of Medicine, Department of Small Animal Clinical Sciences, College of Veterinary Medicine, University of Florida, Gainesville, FL, 32610, USA.
BMC Res Notes. 2022 Feb 21;15(1):73. doi: 10.1186/s13104-022-05965-w.
Translation of animal-based preclinical research is hampered by poor validity and reproducibility issues. Unfortunately, preclinical research has 'fallen between the stools' of competing study design traditions. Preclinical studies are often characterised by small sample sizes, large variability, and 'problem' data. Although Fisher-type designs with randomisation and blocking are appropriate and have been vigorously promoted, structured statistically-based designs are almost unknown. Traditional analysis methods are commonly misapplied, and basic terminology and principles of inference testing misinterpreted. Problems are compounded by the lack of adequate statistical training for researchers, and failure of statistical educators to account for the unique demands of preclinical research. The solution is a return to the basics: statistical education tailored to non-statistician investigators, with clear communication of statistical concepts, and curricula that address design and data issues specific to preclinical research. Statistics curricula should focus on statistics as process: data sampling and study design before analysis and inference. Properly-designed and analysed experiments are a matter of ethics as much as procedure. Shifting the focus of statistical education from rote hypothesis testing to sound methodology will reduce the numbers of animals wasted in noninformative experiments and increase overall scientific quality and value of published research.
基于动物的临床前研究的转化受到有效性和可重复性问题的阻碍。不幸的是,临床前研究“夹在竞争研究设计传统之间”。临床前研究通常具有样本量小、变异性大以及“有问题”的数据的特点。尽管具有随机化和分组的 Fisher 型设计是合适的,并得到了大力推广,但结构化的基于统计学的设计几乎不为人知。传统的分析方法通常被错误地应用,基本术语和推理测试原理被误解。由于研究人员缺乏足够的统计培训,以及统计教育者未能考虑到临床前研究的独特需求,问题更加复杂。解决方法是回归基础:针对非统计学家研究人员的统计教育,清晰地传达统计概念,并制定针对临床前研究的设计和数据问题的课程。统计学课程应侧重于统计学作为过程:数据分析和推理之前的数据采样和研究设计。精心设计和分析的实验在程序方面与伦理同样重要。将统计教育的重点从机械的假设检验转移到合理的方法上,将减少在无信息实验中浪费的动物数量,并提高已发表研究的整体科学质量和价值。