• To learn the rationale for complementing or replacing a P-value with a Bayesian inference
• To understand the basic concepts and compelling statistical and practical benefits of Bayesian analysis
• To learn about the two Bayesian approaches increasingly advocated as alternatives or complements to commonly applied P-value statistics
• To identify user-friendly software available for Bayesian analysis
Background The statistical shortcomings of null hypothesis significance testing (NHST) are well documented, yet it continues to be the default paradigm in quantitative healthcare research. This is due partly to unfamiliarity with Bayesian statistics.
Aim To highlight some of the theoretical and practical benefits of using Bayesian analysis.
Discussion A growing body of literature demonstrates that Bayesian analysis offers statistical and practical benefits that are unavailable to researchers who rely solely on NHST. Bayesian analysis uses prior information in the inference process. It tests a hypothesis and yields the probability of that hypothesis, conditional on the observed data; in contrast, NHST checks observed data – and more extreme unobserved data – against a hypothesis and yields the long-term probability of the data based on repeated hypothetical experiments. Bayesian analysis provides quantification of the evidence for the null and alternative hypothesis, whereas NHST does not provide evidence for the null hypothesis. Bayesian analysis allows for multiplicity of testing without corrections, whereas NHST multiplicity requires corrections. Finally, it allows sequential data collection with variable stopping, whereas NHST sequential designs require specialised statistical approaches.
Conclusion The Bayesian approach provides statistical, practical and ethical advantages over NHST.
Implications for practice The quantification of uncertainty provided by Bayesian analysis – particularly Bayesian parameter estimation – should better inform evidence-based clinical decision-making. Bayesian analysis provides researchers with the freedom to analyse data in real time with optimal stopping when the data is persuasive and continuing when data is weak, thereby ensuring better use of the researcher’s time and resources
Nurse Researcher. 31, 1, 25-32. doi: 10.7748/nr.2023.e1852
Correspondence Peer reviewThis article has been subject to external double-blind peer review and checked for plagiarism using automated software
Conflict of interestNone declared
PermissionTo reuse this article or for information about reprints and permissions, please contact permissions@rcni.com
Write for usFor information about writing for RCNi journals, visit rcni.com/publish-article-with-rcni
For author guidelines, go to rcni.com/write-for-nurse-researcher
or
Are you a student? Our student subscription has content especially for you.
Find out more