Literature DB >> 15152639

Standardised coding of diet records: experiences from INTERMAP UK.

Rana Conway1, Claire Robertson, Barbara Dennis, Jeremiah Stamler, Paul Elliott.   

Abstract

Coding diet records is a basic element of most dietary surveys, yet it often receives little attention even though errors in coding can lead to flawed study results. In the INTERnational study of MAcro- and micronutrients and blood Pressure (INTERMAP study), efforts were made to minimise errors in coding the 18, 720 diet records. Staff were centrally trained and certified before being able to process study data and ongoing quality control checks were performed. This involved the senior (site) nutritionist re-coding randomly selected diet records. To facilitate standardisation of coding in the UK, a code book was designed; it included information about coding brand items, density and portion size information, and default codes to be assigned when limited information was available for food items. It was found that trainees, despite previous experience in coding elsewhere, made coding errors that resulted in errors in estimates of daily energy and nutrient intakes. As training proceeded, the number of errors decreased. Compilation of the code book was labour-intensive, as information from food manufacturers and retailers had to be collected. Strategies are required to avoid repetition of this effort by other research groups. While the methods used in INTERMAP to reduce coding errors were time consuming, the experiences suggest that such errors are important and that they can be reduced.

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Year:  2004        PMID: 15152639      PMCID: PMC6660142          DOI: 10.1079/BJN20041095

Source DB:  PubMed          Journal:  Br J Nutr        ISSN: 0007-1145            Impact factor:   3.718


  8 in total

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4.  Evaluation of the dietary intake data coding process in a clinical setting: Implications for research practice.

Authors:  Vivienne X Guan; Yasmine C Probst; Elizabeth P Neale; Linda C Tapsell
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5.  Characterisation, procedures and heritability of acute dietary intake in the Twins UK cohort: an observational study.

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6.  Is glycaemic control associated with dietary patterns independent of weight change in people newly diagnosed with type 2 diabetes? Prospective analysis of the Early-ACTivity-In-Diabetes trial.

Authors:  James Garbutt; C England; A G Jones; R C Andrews; R Salway; L Johnson
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7.  Dietary assessment of British police force employees: a description of diet record coding procedures and cross-sectional evaluation of dietary energy intake reporting (The Airwave Health Monitoring Study).

Authors:  Rachel Gibson; Rebeca Eriksen; Kathryn Lamb; Yvonne McMeel; Anne-Claire Vergnaud; Jeanette Spear; Maria Aresu; Queenie Chan; Paul Elliott; Gary Frost
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Review 8.  Current Developments in Digital Quantitative Volume Estimation for the Optimisation of Dietary Assessment.

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  8 in total

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