过敏和超敏疾病调查中的多重假设检验:教学视角

Hugo Guillermou , Christophe Abraham , Isabella Annesi-Maesano , Nicolas Molinari
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引用次数: 0

摘要

背景过敏和超敏性疾病(AHD)是影响人体不同器官的多因素疾病,严重程度各不相同。因此,多重假设检验是过敏性疾病调查中的常见做法。然而,这会增加拒绝真实零假设(即没有影响)的概率,即所谓的 1 型错误风险或 alpha 风险。我们在此介绍如何在 AHD 调查中进行多重比较或多重检验时控制全局阿尔法风险,以最大限度地降低得出假阳性结论的风险。方法将四种控制全局阿尔法风险的方法,即 Bonferroni、Sidak、Holm-Bonferroni 和 Benjamini-Hochberg 应用于模拟数据和真实数据。结果发现,Bonferroni 方法最保守,而 Benjamini-Hochberg 方法最有效。Holm-Bonferroni方法是统计能力和假阳性控制之间的折中方法。研究人员应考虑假设和目标,选择最适合其研究的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Multiple hypothesis testing in allergy and hypersensitivity diseases investigation: a pedagogical perspective

Multiple hypothesis testing in allergy and hypersensitivity diseases investigation: a pedagogical perspective

Background

Allergy and hypersensitivity diseases (AHD) are multifactorial diseases affecting different organs of the human body and with different level of severity. Therefore, multiple hypothesis testing is a common practice in AHD investigation. However, this increases the probability of rejecting a true null hypothesis, meaning there's no effect, the so-called risk of type 1 error or alpha risk. We present here how to control global alpha risk in the case of multiple comparisons or multitesting in AHD investigations to minimize the risk of drawing false positive conclusions.

Methods

Four methods for controlling global alpha risk, namely Bonferroni, Sidak, Holm–Bonferroni, and Benjamini–Hochberg, were applied to simulated and real data. Their performance was assessed through false negative, sensitivity, specificity, positive predictive value (PPV) and negative predictive value (NPV).

Results

The Bonferroni method was found to be the most conservative, while the Benjamini–Hochberg method had the most power. The Holm–Bonferroni method was a compromise between statistical power and control of false positives.

Conclusions

Controlling global alpha risk is crucial in multiple comparisons like they are needed in AHD investigation, and different methods are available to achieve it. Researchers should choose the method that best suits their study, considering the assumptions and objectives.
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