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AuthorZar, Lubna
AuthorAbdulmajeed, Jazeel
AuthorElshoeibi, Amgad
AuthorSyed, Asma
AuthorAwaisu, Ahmed
AuthorGlasziou, Paul
AuthorDoi, Suhail A.
AuthorResearch Network Group, MCPHR
Available date2025-04-30T05:53:10Z
Publication Date2025-04-28
Publication NameCurrent Opinion in Epidemiology and Public Health
Identifierhttp://dx.doi.org/10.1097/PXH.0000000000000050
CitationZar, Lubna A.a,b; Abdulmajeed, Jazeela,b; Elshoeibi, Amgad M.a,b; Syed, Asmaa,b; Awaisu, Ahmedc,b; Glasziou, Pauld; Doi, Suhail A.a,b; the M-CPHR Research Network Group. From significance to divergence: guiding statistical interpretation through language. Current Opinion in Epidemiology and Public Health ():10.1097/PXH.0000000000000050, April 28, 2025. | DOI: 10.1097/PXH.0000000000000050
ISSN2766-9181
URIhttp://hdl.handle.net/10576/64607
AbstractPurpose of review P values have long been central to medical research reporting, with the term ‘‘statistical significance’’ and a P value threshold of 0.05 being in common use since 1925. Despite a century of use, P values remain a topic of significant controversy and debate, particularly regarding their proper application and frequent misinterpretation. Much of this confusion stems from adoption of the everyday words ‘‘significance’’ and ‘‘confidence’’ as a label for the statistical concepts that are only loosely connected to their common meaning, subsequently exposing such misleading labels to a wide audience unaware of the disconnect. Recent findings To resolve this ambiguity, we take a look at the existing literature, conclude that this is a language issue and propose replacing ‘‘significance’’ with ‘‘divergence’’ to highlight the data’s divergence from the hypothesized null model. In addition, we propose renaming the ‘‘1-α% confidence interval’’ to ‘1-α% uncertainty interval’’ which would more accurately convey its role in representing uncertainty about the possible data-generating models for the observed data. Summary The revised terminology will help researchers and readers better understand P values and uncertainty intervals, aims to reduce reporting bias (especially for nondivergent results), and will temper unrealistic replicability expectations. It would also minimize misinterpretation and over-interpretation, promoting a clearer, more nuanced understanding of their use in statistical reporting while addressing ongoing misuse controversies.
Languageen
PublisherWolters Kluwer Health
Subjectconfidence interval
P value
statistical divergence
statistical reporting
statistical significance
uncertainty interval
TitleFrom significance to divergence: guiding statistical interpretation through language
TypeArticle
ESSN2766-9181
dc.accessType Full Text


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