Using surrogate biomarkers to improve measurement error models in nutritional epidemiology
- PMID: 23553407
- PMCID: PMC3824235
- DOI: 10.1002/sim.5803
Using surrogate biomarkers to improve measurement error models in nutritional epidemiology
Abstract
Nutritional epidemiology relies largely on self-reported measures of dietary intake, errors in which give biased estimated diet-disease associations. Self-reported measurements come from questionnaires and food records. Unbiased biomarkers are scarce; however, surrogate biomarkers, which are correlated with intake but not unbiased, can also be useful. It is important to quantify and correct for the effects of measurement error on diet-disease associations. Challenges arise because there is no gold standard, and errors in self-reported measurements are correlated with true intake and each other. We describe an extended model for error in questionnaire, food record, and surrogate biomarker measurements. The focus is on estimating the degree of bias in estimated diet-disease associations due to measurement error. In particular, we propose using sensitivity analyses to assess the impact of changes in values of model parameters which are usually assumed fixed. The methods are motivated by and applied to measures of fruit and vegetable intake from questionnaires, 7-day diet diaries, and surrogate biomarker (plasma vitamin C) from over 25000 participants in the Norfolk cohort of the European Prospective Investigation into Cancer and Nutrition. Our results show that the estimated effects of error in self-reported measurements are highly sensitive to model assumptions, resulting in anything from a large attenuation to a small amplification in the diet-disease association. Commonly made assumptions could result in a large overcorrection for the effects of measurement error. Increased understanding of relationships between potential surrogate biomarkers and true dietary intake is essential for obtaining good estimates of the effects of measurement error in self-reported measurements on observed diet-disease associations.
Keywords: biomarkers; measurement error; nutritional epidemiology; regression calibration; structural equation models.
Copyright © 2013 John Wiley & Sons, Ltd.
References
-
- Carroll RJ, Ruppert D, Stefanski LA, Crainiceanu CM. Measurement Error in Nonlinear Models: A Modern Perspective. 2nd edn. London: Chapman & Hall/CRC; 2006.
-
- Willett W. Nutritional Epidemiology. 2nd edn. Oxford: Oxford University Press; 1998.
-
- Riboli E. Nutrition and cancer: background and rationale of the European Prospective Investigation into Cancer and Nutrition (EPIC) Annals of Oncology. 1992;3:783–791. - PubMed
-
- Schatzkin A, Subar A, Thompson F, Harlan L, Tangrea J, Hollenbeck A, Hurwitz P, Coyle L, Schussler N, Michaud D, Freedman LS, Brown CC, Midthune D, Kipnis V. Design and serendipity in establishing a large cohort with wide dietary intake distributions: the National Institutes of Health–American Association of Retired Persons Diet and Health Study. American Journal of Epidemiology. 2001;154:1119–1125. - PubMed
-
- Dahm C, Keogh R, Greenwood D, Key T, Fentiman I, Shipley M, Brunner E, Cade J, Burley V, Mishra G, Stephen AM, Kuh D, White IR, Luben R, Lentjes MAH, Khaw KT, Rodwell SA. Dietary fiber and colorectal cancer risk: a nested case–control study using food diaries. Journal of the National Cancer Institute. 2010;102:614–626. - PubMed
Publication types
MeSH terms
Substances
Grants and funding
LinkOut - more resources
Full Text Sources
Other Literature Sources
