Frequentist and Bayesian Hypothesis Testing: An Intuitive Guide for Urologists and Clinicians

J. Gaona, Daniel Sánchez, César González, Fabio González, Angélica Rueda, Sebastián Ortiz
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引用次数: 0

Abstract

Given the limitations of frequentist method for null hypothesis significance testing, different authors recommend alternatives such as Bayesian inference. A poor understanding of both statistical frameworks is common among clinicians. The present is a gentle narrative review of the frequentist and Bayesian methods intended for physicians not familiar with mathematics. The frequentist p-value is the probability of finding a value equal to or higher than that observed in a study, assuming that the null hypothesis (H0) is true. The H0 is rejected or not based on a p threshold of 0.05, and this dichotomous approach does not express the probability that the alternative hypothesis (H1) is true. The Bayesian method calculates the probability of H1 and H0 considering prior odds and the Bayes factor (Bf). Prior odds are the researcher's belief about the probability of H1, and the Bf quantifies how consistent the data is concerning H1 and H0. The Bayesian prediction is not dichotomous but is expressed in continuous scales of the Bf and of the posterior odds. The JASP software enables the performance of both frequentist and Bayesian analyses in a friendly and intuitive way, and its application is displayed at the end of the paper. In conclusion, the frequentist method expresses how consistent the data is with H0 in terms of p-values, with no consideration of the probability of H1. The Bayesian model is a more comprehensive prediction because it quantifies in continuous scales the evidence for H1 versus H0 in terms of the Bf and the posterior odds.
频率和贝叶斯假设检验:泌尿科医生和临床医生的直觉指南
鉴于频率论方法在零假设显著性检验中的局限性,不同的作者推荐了贝叶斯推理等替代方法。临床医生对这两种统计框架的理解都很差。本书是对频率论和贝叶斯方法的温和叙述性综述,旨在为不熟悉数学的医生提供帮助。频率学家p值是指在假设零假设(H0)成立的情况下,发现一个等于或高于研究中观察到的值的概率。H0基于0.05的p阈值被拒绝或不被拒绝,并且这种二分法并不表示替代假设(H1)为真的概率。贝叶斯方法考虑先验概率和贝叶斯因子(Bf)来计算H1和H0的概率。先验概率是研究人员对H1概率的信念,Bf量化了H1和H0数据的一致性。贝叶斯预测不是二分法的,而是用Bf和后验概率的连续尺度表示的。JASP软件以一种友好直观的方式实现了频率分析和贝叶斯分析的性能,并在论文末尾展示了其应用。总之,频率论方法表达了数据与H0在p值方面的一致性,而没有考虑H1的概率。贝叶斯模型是一个更全面的预测,因为它在连续尺度上量化了H1与H0在Bf和后验优势方面的证据。
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来源期刊
Urologia Colombiana
Urologia Colombiana Medicine-Urology
CiteScore
0.30
自引率
0.00%
发文量
26
期刊介绍: Urología Colombiana is the serial scientific publication of the Colombian Society of Urology at intervals of three issues per year, in which the results of original research, review articles and other research designs that contribute to increase knowledge in medicine and particularly in the specialty of urology.
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