Misinterpretation of statistical nonsignificance as a sign of potential bias: Hydroxychloroquine as a case study.

IF 2.8 1区 哲学 Q1 MEDICAL ETHICS Accountability in Research-Policies and Quality Assurance Pub Date : 2024-08-01 Epub Date: 2022-12-09 DOI:10.1080/08989621.2022.2155517
Kurtis Hagen
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Abstract

The term "statistical significance," ubiquitous in the medical literature, is often misinterpreted, as is the "p-value" from which it stems. This article explores the implications of results that are numerically positive (e.g., those in the treatment arm do better on average) but not statistically significant. This lack of statistical significance is sometimes interpreted as strong, even decisive, evidence against an effect without due consideration of other factors. Three influential articles on hydroxychloroquine (HCQ) as a treatment for COVID-19 are illustrative. They all involve numerically positive results that were not statistically significant that were misinterpreted as strong evidence against HCQ's efficacy. These and related considerations raise concerns regarding the reliability of academic/medical reasoning around COVID-19 treatments, as well as more generally, and regarding the potential for bias stemming from conflicts of interest.

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将统计学上的非显著性误解为潜在偏见的标志:以羟氯喹为例。
统计学意义 "一词在医学文献中无处不在,但它经常被曲解,就像 "p 值 "一样。本文探讨的是数字上为正的结果(例如,治疗组患者的平均疗效更好)在统计学上并不显著的含义。缺乏统计学意义有时会被解释为反对某种效应的有力证据,甚至是决定性证据,而没有适当考虑其他因素。关于羟氯喹(HCQ)治疗 COVID-19 的三篇有影响力的文章就很能说明问题。这三篇文章都涉及到在数字上呈阳性但在统计学上并不显著的结果,这些结果被误解为反对 HCQ 疗效的有力证据。这些问题及相关考虑引起了人们对围绕 COVID-19 治疗的学术/医学推理的可靠性以及更普遍的问题的关注,也引起了人们对因利益冲突而产生偏见的可能性的关注。
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来源期刊
CiteScore
4.90
自引率
14.70%
发文量
49
审稿时长
>12 weeks
期刊介绍: Accountability in Research: Policies and Quality Assurance is devoted to the examination and critical analysis of systems for maximizing integrity in the conduct of research. It provides an interdisciplinary, international forum for the development of ethics, procedures, standards policies, and concepts to encourage the ethical conduct of research and to enhance the validity of research results. The journal welcomes views on advancing the integrity of research in the fields of general and multidisciplinary sciences, medicine, law, economics, statistics, management studies, public policy, politics, sociology, history, psychology, philosophy, ethics, and information science. All submitted manuscripts are subject to initial appraisal by the Editor, and if found suitable for further consideration, to peer review by independent, anonymous expert referees.
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