流行病学家的贝叶斯和频率比较:逻辑回归的非数学应用

P. Salameh, M. Waked, G. Khayat, M. Dramaix
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引用次数: 11

摘要

背景:统计频率论技术有时会被误解或滥用,而贝叶斯技术似乎呈现出一些实用的优势,例如适应小样本量,未观察到的变量以及测量误差,并结合以前研究的信息。本研究的主要目的是通过比较频率法和贝叶斯方法的结果来评估水管依赖与慢性阻塞性肺疾病(COPD)之间的关系。方法:这是一项多中心病例对照研究,将一组COPD患者与对照组进行比较。COPD诊断在临床和临床旁检测后进行,同时使用标准化问卷评估吸烟史。进行了频率分析和贝叶斯分析。结果:虽然在同一数据集上进行,但频率分析和贝叶斯分析的结果在数量上存在差异。每当频率结果明确时,例如吸烟与慢性阻塞性肺病的关联,执行MCMC方法有助于提高结果的准确性,但不会改变假设接受的方向,除非在可疑的情况下。当频率p值≤0.100时,例如吸烟超过15个水烟年,MCMC方法改进了零假设和备择假设之间的决定。结论:贝叶斯方法可能比频率分析方法有优势,特别是在频率分析的低功率情况下,由于低样本量或稀疏数据;信息性先验的使用在缩小可信区间和精确地选择零假设和备择假设之间可能特别有用。对于边缘频域结果,MCMC方法可能更加保守,特别是没有先验。然而,在大样本量的情况下,使用频率方法是首选的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian and Frequentist Comparison for Epidemiologists: A NonMathematical Application on Logistic Regressions
Background: Statistical frequentist techniques are sometimes misinterpreted or misused, while Bayesian techniques seem to present several practical advantages, such as accommodating small sample sizes, unobserved variables along with measurement errors and incorporating information from previous studies. The primary objective of this study was to evaluate the association between waterpipe dependence and chronic obstructive pulmonary disease (COPD), by comparing frequentist and Bayesian methods' results. Methods: It is a multicenter case-control study, comparing a group of COPD patients with a control group. COPD diagnosis was held after clinical and paraclinical testing, while a standardized questionnaire was used to evaluate smoking history. Both frequentist and Bayesian analyses were performed. Results: Although carried out on the same dataset, the results quantitatively differed between the frequentist and Bayesian analysis. Whenever the frequentist results were clear cut such as in case of cigarette smoking association with COPD, performing the MCMC method helped to increase the accuracy of the results, but did not change the direction of hypothesis acceptance, except in doubtful cases. When the frequentist p-value was ≤0.100, such as in case of smoking more than 15 waterpipe-years, the MCMC method improved deciding between the null and alternative hypothesis. Conclusion: The Bayesian approach may have advantages over the frequentist one, particularly in case of a low power of the frequentist analysis, due to low sample size or sparse data; the use of informative priors might be particularly useful in narrowing credible interval and precising the choice between the null and alternative hypothesis. In case of borderline frequentist results, the MCMC method may be more conservative, particularly without priors. However, in case of large sample sizes, using frequentist methods is preferred.
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