A Novel Approach to Improve the Estimation of a Diet Adherence Considering Seasonality and Short Term Variability – The NU-AGE Mediterranean Diet Experience
Autor: | Enrico Giampieri, Rita Ostan, Giulia Guidarelli, Stefano Salvioli, Agnes A. M. Berendsen, Anna Brzozowska, Barbara Pietruszka, Amy Jennings, Nathalie Meunier, Elodie Caumon, Susan Fairweather-Tait, Ewa Sicinska, Edith J. M. Feskens, Lisette C. P. G. M. de Groot, Claudio Franceschi, Aurelia Santoro |
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Přispěvatelé: | Giampieri E, Ostan R, Guidarelli G, Salvioli S, Berendsen AAM, Brzozowska A, Pietruszka B, Jennings A, Meunier N, Caumon E, Fairweather-Tait S, Sicinska E, Feskens EJM, de Groot LCPGM, Franceschi C, Santoro A |
Jazyk: | angličtina |
Rok vydání: | 2019 |
Předmět: |
0301 basic medicine
Index (economics) Mediterranean diet Physiology Context (language use) 030204 cardiovascular system & hematology Bayesian statistics Statistical power lcsh:Physiology Food group ENERGY 03 medical and health sciences Mediterranean-like diet 0302 clinical medicine Hierarchical models Physiology (medical) Regression toward the mean Regression to the mean Statistics Medicine hierarchical model Statistical hypothesis testing VLAG Human Nutrition & Health Global Nutrition hierarchical models Wereldvoeding lcsh:QP1-981 business.industry seasonality Humane Voeding & Gezondheid Seasonality Bayesian statistic Inflammaging Clinical Trial Nutritional Biology regression to the mean 3. Good health Diet assessment 030104 developmental biology diet assessment inflammaging business |
Zdroj: | Frontiers in Physiology Frontiers in Physiology, Vol 10 (2019) Frontiers in Physiology 10 (2019) Frontiers in Physiology, 10 |
ISSN: | 1664-042X |
Popis: | In this work we present a novel statistical approach to improve the assessment of the adherence to a 1-year nutritional intervention within the framework of the NU-AGE project. This was measured with a single adherence score based on 7-days food records, under limitations on the number of observations per subject and time frame of intervention. The results of the NU-AGE dietary intervention were summarized by variations of the NU-AGE index as described in the NU-AGE protocol. Food and nutrient intake of all participants was assessed by means of 7-days food records at recruitment and after 10 to 14 months of intervention (depending on the subject availability). Sixteen food groups and supplementations covering the dietary goals of the NU-AGE diet have been used to estimate the NU-AGE index before and after the intervention. The 7-days food record is a reliable tool to register food intakes, however, as with other tools used to assess lifestyle dietary compliance, it is affected by uncertainty in this estimation due to the possibility that the observed week is not fully representative of the entire intervention period. Also, due to logistic limitations, the effects of seasonality can never be completely removed. These variabilities, if not accounted for in the index estimation, will reduce the statistical power of the analyses. In this work we discuss a method to assess these uncertainties and thus improve the resulting NU-AGE index. The proposed method is based on Hierarchical Bayesian Models. This model explicitly includes country-specific averages of the NU-AGE index, index variation induced by the dietary intervention, and country based seasonality. This information is used to evaluate the NU-AGE index uncertainty and thus to estimate the "real" NU-AGE index for each subject, both before and after the intervention. These corrections reduce the possibility of misinterpreting measurement variability as real information, improving the power of the statistical tests that are performed with the resulting index. The results suggest that this method is able to reduce the short term and seasonal variability of the measured index in the context of multicenter dietary intervention trials. Using this method to estimate seasonality and variability would allow one to obtain better measurements from the subjects of a study, and be able to simplify the scheduling of diet assessments. Clinical Trial Registration: www.ClinicalTrials.gov, identifier NCT01754012. |
Databáze: | OpenAIRE |
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