Intensive Care Unit, Liverpool Hospital Sydney Australia, Liverpool, NSW, Australia.
Western Sydney University, Penrith South, NSW, Australia.
Acta Anaesthesiol Scand. 2021 Feb;65(2):146-150. doi: 10.1111/aas.13725. Epub 2020 Oct 24.
Most clinical trials use null hypothesis significance testing with frequentist statistical inference to report P values and confidence intervals for effect estimates. This method leads to a dichotomisation of results as 'significant' or 'non-significant'. A more nuanced interpretation may often be considered and in particular when the majority of the confidence interval for the effect estimate suggests benefit or harm. In contrast to the frequentist dichotomised approach based on a P value, the application of Bayesian statistics allocates credibility to a continuous spectrum of possibilities and for this reason a Bayesian approach to inference is often warranted as it will incorporate uncertainty when updating our current belief with information from a new trial. The use of Bayesian statistics is introduced in this paper for a hypothetical sepsis trial with worked examples in the R language for Statistical Computing environment and the open-source statistical software JASP. It is hoped that this general introduction to Bayesian inference stimulates some interest and confidence among clinicians to consider applying these methods to the interpretation of new evidence for interventions relevant to anaesthesia and intensive care medicine.
大多数临床试验使用假设检验和频率统计学推断来报告 P 值和置信区间,以估计效果。这种方法将结果分为“显著”或“非显著”。当效果估计的置信区间大多数表明获益或危害时,通常可以考虑更细致的解释。与基于 P 值的频率统计学二分法方法相反,贝叶斯统计学将可信度分配给连续的可能性范围,因此,当用新试验的信息更新我们当前的信念时,贝叶斯推理方法通常是合理的。本文引入了贝叶斯统计学,用于假设的脓毒症试验,并在 R 语言统计计算环境和开源统计软件 JASP 中提供了实例。希望这篇关于贝叶斯推理的概述能激发临床医生的兴趣和信心,让他们考虑将这些方法应用于解释与麻醉和重症监护医学相关的新干预措施的证据。