Best (but oft-forgotten) practices: identifying and accounting for regression to the mean in nutrition and obesity research

Author:

Thomas Diana M1ORCID,Clark Nicholas1,Turner Dusty1,Siu Cynthia2,Halliday Tanya M3,Hannon Bridget A4ORCID,Kahathuduwa Chanaka N5,Kroeger Cynthia M67,Zoh Roger8,Allison David B7ORCID

Affiliation:

1. Department of Mathematical Sciences, US Military Academy, West Point, NY, USA

2. Department of Data Science, COS and Associates Ltd., Hong Kong, China

3. Department of Health, Kinesiology, and Recreation, University of Utah, Salt Lake City, UT, USA

4. Division of Nutritional Sciences, University of Illinois at Urbana-Champaign, Urbana, IL, USA

5. Department of Human Development and Family Studies, Texas Tech University, Lubbock, TX, USA

6. Charles Perkins Centre, School of Pharmacy, Faculty of Medicine and Health, University of Sydney, Sydney, Australia

7. Department of Epidemiology and Biostatistics, Indiana University School of Public Health-Bloomington, Bloomington, IN, USA

8. School of Public Health, Indiana University, Bloomington, IN, USA

Abstract

ABSTRACT Background Regression to the mean (RTM) is a statistical phenomenon where initial measurements of a variable in a nonrandom sample at the extreme ends of a distribution tend to be closer to the mean upon a second measurement. Unfortunately, failing to account for the effects of RTM can lead to incorrect conclusions on the observed mean difference between the 2 repeated measurements in a nonrandom sample that is preferentially selected for deviating from the population mean of the measured variable in a particular direction. Study designs that are susceptible to misattributing RTM as intervention effects have been prevalent in nutrition and obesity research. This field often conducts secondary analyses of existing intervention data or evaluates intervention effects in those most at risk (i.e., those with observations at the extreme ends of a distribution). Objectives To provide best practices to avoid unsubstantiated conclusions as a result of ignoring RTM in nutrition and obesity research. Methods We outlined best practices for identifying whether RTM is likely to be leading to biased inferences, using a flowchart that is available as a web-based app at https://dustyturner.shinyapps.io/DecisionTreeMeanRegression/. We also provided multiple methods to quantify the degree of RTM. Results Investigators can adjust analyses to include the RTM effect, thereby plausibly removing its biasing influence on estimating the true intervention effect. Conclusions The identification of RTM and implementation of proper statistical practices will help advance the field by improving scientific rigor and the accuracy of conclusions. This trial was registered at clinicaltrials.gov as NCT00427193.

Funder

National Institutes of Health

Publisher

Oxford University Press (OUP)

Subject

Nutrition and Dietetics,Medicine (miscellaneous)

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