Carpenter Jacque, Gajewski Byron, Teel Cynthia, Aaronson Lauren S
School of Nursing, University of Kansas, USA.
Nurs Res. 2008 May-Jun;57(3):214-9. doi: 10.1097/01.NNR.0000319495.59746.b8.
Bayesian inference provides a formal framework for updating knowledge by combining prior knowledge with current data. Over the past 10 years, the Bayesian paradigm has become a popular analytic tool in health research. Although the nursing literature contains examples of Bayes' theorem applications to clinical decision making, it lacks an adequate introduction to Bayesian data analysis.
Bayesian data analysis is introduced through a fully Bayesian model for determining the efficacy of tai chi as an illustrative example. The mechanics of using Bayesian models to combine prior knowledge, or data from previous studies, with observed data from a current study are discussed.
The primary outcome in the illustrative example was physical function. Three prior probability distributions (priors) were generated for physical function using data from a similar study found in the literature. Each prior was combined with the likelihood from observed data in the current study to obtain a posterior probability distribution. In each case, the posterior distribution showed that the probability that the control group is better than the tai chi treatment group was low.
Bayesian analysis is a valid technique that allows the researcher to manage varying amounts of data appropriately. As advancements in computer software continue, Bayesian techniques will become more accessible. Researchers must educate themselves on applications for Bayesian inference, as well as its methods and implications for future research.
贝叶斯推理提供了一个通过将先验知识与当前数据相结合来更新知识的正式框架。在过去十年中,贝叶斯范式已成为健康研究中一种流行的分析工具。尽管护理文献中包含贝叶斯定理应用于临床决策的示例,但它缺乏对贝叶斯数据分析的充分介绍。
通过一个用于确定太极拳疗效的全贝叶斯模型来介绍贝叶斯数据分析,并以此作为一个示例。讨论了使用贝叶斯模型将先验知识或先前研究的数据与当前研究的观测数据相结合的机制。
示例中的主要结果是身体功能。利用文献中一项类似研究的数据,为身体功能生成了三种先验概率分布(先验)。每种先验都与当前研究中观测数据的似然性相结合,以获得后验概率分布。在每种情况下,后验分布都表明对照组优于太极拳治疗组的概率较低。
贝叶斯分析是一种有效的技术,它允许研究人员适当地处理不同数量的数据。随着计算机软件的不断进步,贝叶斯技术将变得更容易获得。研究人员必须自行学习贝叶斯推理的应用及其方法以及对未来研究的影响。