Reporting error in weight and its implications for bias in economic models.

Econ Hum Biol

Novo Nordisk, Inc., 800 Scudders Mill Road, Plainsboro, NJ 08536, United States. Electronic address:

Published: December 2015

AI Article Synopsis

  • Most studies on obesity’s economic effects rely on self-reported weight data, which often contains errors that can skew results in economic models.
  • The paper evaluates how much these reporting errors occur and their impact on healthcare-related regression analyses using data from the NHANES survey between 2003 and 2010.
  • The research reveals a problematic pattern where underweight individuals tend to overreport their weight while overweight individuals underreport, leading to a significant misclassification of obesity status and potential biases in healthcare-related estimates.

Article Abstract

Most research on the economic consequences of obesity uses data on self-reported weight, which contains reporting error that has the potential to bias coefficient estimates in economic models. The purpose of this paper is to measure the extent and characteristics of reporting error in weight, and to examine its impact on regression coefficients in models of the healthcare consequences of obesity. We analyze data from the National Health and Nutrition Examination Survey (NHANES) for 2003-2010, which includes both self-reports and measurements of weight and height. We find that reporting error in weight is non-classical: underweight respondents tend to overreport, and overweight and obese respondents tend to underreport, their weight, with underreporting increasing in measured weight. This error results in roughly 1 out of 7 obese individuals being misclassified as non-obese. Reporting error is also correlated with other common regressors in economic models, such as education. Although it is a common misconception that reporting error always causes attenuation bias, comparisons of models that use self-reported and measured weight confirm that reporting error can cause upward bias in coefficient estimates. For example, use of self-reports leads to overestimates of the probability that an obese man uses a prescription drug, has a healthcare visit, or has a hospital admission. These findings underscore that models of the consequences of obesity should use measurements of weight, when available, and that social science datasets should measure weight rather than simply ask subjects to report their weight.

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Source
http://dx.doi.org/10.1016/j.ehb.2015.07.001DOI Listing

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