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Common Scientific and Statistical Errors in Obesity Research

Authors :
George, Brandon J.
Beasley, T. Mark
Brown, Andrew W.
Dawson, John
Dimova, Rositsa
Divers, Jasmin
Goldsby, TaShauna U.
Heo, Moonseong
Kaiser, Kathryn A.
Keith, Scott
Kim, Mimi Y.
Li, Peng
Mehta, Tapan
Oakes, J. Michael
Skinner, Asheley
Stuart, Elizabeth
Allison, David B.
Publication Year :
2016

Abstract

We identify 10 common errors and problems in the statistical analysis, design, interpretation, and reporting of obesity research and discuss how they can be avoided. The 10 topics are: 1) misinterpretation of statistical significance, 2) inappropriate testing against baseline values, 3) excessive and undisclosed multiple testing and “p-value hacking,” 4) mishandling of clustering in cluster randomized trials, 5) misconceptions about nonparametric tests, 6) mishandling of missing data, 7) miscalculation of effect sizes, 8) ignoring regression to the mean, 9) ignoring confirmation bias, and 10) insufficient statistical reporting. We hope that discussion of these errors can improve the quality of obesity research by helping researchers to implement proper statistical practice and to know when to seek the help of a statistician.

Subjects

Subjects :
Article

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.pmid..........ce26da7ccf0da064a8d7e342acb26c34