Death of the P Value? Bayesian Statistics for Orthopaedic Surgeons.

IF 2.6 2区 医学 Q1 ORTHOPEDICS
Michael Polmear, Terrie Vasilopoulos, Nathan O'Hara, Thomas Krupko
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引用次数: 0

Abstract

Statistical interpretation is foundational to evidence-based medicine. Frequentist ( P value testing) and Bayesian statistics are two major approaches for hypothesis testing. Studies analyzed with Bayesian methods are increasingly common with a 4-fold increase in the past 10 years. The Bayesian approach can align with clinical decision making by interpreting smaller differences that are not limited by P values and misleading claims of "trends toward significance." Both methods follow a workflow that includes sampling, hypothesis testing, interpretation, and iteration. Frequentist methodology is familiar and common. However, the limitations are the misunderstanding, misuse, and deceptively simple utility of interpreting dichotomous P values. Bayesian approaches are relatively less common and provide an alternative approach to trial design and data interpretation. Marginal differences elucidated by Bayesian methods may be perceived as less decisive than a P value that may reject a null hypothesis. The purposes of this review are to introduce Bayesian principles and Bayes theorem, define how pretest probability and known information may inform diagnostic testing using an example from prosthetic joint infection, contrast Bayesian and frequentist approaches using an example from the VANCO orthopaedic prospective trial, and describe the criteria for critically reviewing Bayesian studies.

P值的消亡?骨科贝叶斯统计。
统计解释是循证医学的基础。频率检验(P值检验)和贝叶斯统计是检验假设的两种主要方法。用贝叶斯方法分析的研究越来越普遍,在过去10年中增加了4倍。贝叶斯方法通过解释不受P值限制的较小差异和误导性的“显著趋势”主张,可以与临床决策保持一致。这两种方法都遵循一个工作流,包括抽样、假设检验、解释和迭代。频率论的方法论是大家所熟悉和普遍的。然而,其局限性在于误解、误用和解释二分P值的简单实用。贝叶斯方法相对来说不太常见,为试验设计和数据解释提供了另一种方法。贝叶斯方法阐明的边际差异可能被认为不如可能拒绝原假设的P值具有决定性。本综述的目的是介绍贝叶斯原理和贝叶斯定理,以假体关节感染为例,定义预测概率和已知信息如何为诊断测试提供信息,以VANCO骨科前瞻性试验为例,对比贝叶斯方法和频率方法,并描述批判性评价贝叶斯研究的标准。
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来源期刊
CiteScore
6.10
自引率
6.20%
发文量
529
审稿时长
4-8 weeks
期刊介绍: The Journal of the American Academy of Orthopaedic Surgeons was established in the fall of 1993 by the Academy in response to its membership’s demand for a clinical review journal. Two issues were published the first year, followed by six issues yearly from 1994 through 2004. In September 2005, JAAOS began publishing monthly issues. Each issue includes richly illustrated peer-reviewed articles focused on clinical diagnosis and management. Special features in each issue provide commentary on developments in pharmacotherapeutics, materials and techniques, and computer applications.
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