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Dietary assessment toolkits: an overview

  • Maria Carlota Dao (a1), Amy F Subar (a2), Marisol Warthon-Medina (a3), Janet E Cade (a3), Tracy Burrows (a4), Rebecca K Golley (a5), Nita G Forouhi (a6), Matthew Pearce (a6) and Bridget A Holmes (a7)...

Abstract

Objective

A wide variety of methods are available to assess dietary intake, each one with different strengths and weaknesses. Researchers face multiple challenges when diet and nutrition need to be accurately assessed, particularly in the selection of the most appropriate dietary assessment method for their study. The goal of the current collaborative work is to present a collection of available resources for dietary assessment implementation.

Design/Setting/Participants

As a follow-up to the 9th International Conference on Diet and Physical Activity Methods held in 2015, developers of dietary assessment toolkits agreed to collaborate in the preparation of the present paper, which provides an overview of each toolkit. The toolkits presented include: the Diet, Anthropometry and Physical Activity Measurement Toolkit (DAPA; UK); the National Cancer Institute’s (NCI) Dietary Assessment Primer (USA); the Nutritools website (UK); the Australasian Child and Adolescent Obesity Research Network (ACAORN) method selector (Australia); and the Danone Dietary Assessment Toolkit (DanoneDAT; France). An at-a-glance summary of features and comparison of the toolkits is provided.

Results

The present review contains general background on dietary assessment, along with a summary of each of the included toolkits, a feature comparison table and direct links to each toolkit, all of which are freely available online.

Conclusions

This overview of dietary assessment toolkits provides comprehensive information to aid users in the selection and implementation of the most appropriate dietary assessment method, or combination of methods, with the goal of collecting the highest-quality dietary data possible.

Copyright

Corresponding author

*Corresponding author: Email bridget.holmes@danone.com

Footnotes

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Current affiliation: Jean Mayer USDA Human Nutrition Research Center on Aging at Tufts University, Boston, MA, USA.

On behalf of the DIET@NET consortium.

§

On behalf of the Food and Nutrition Stream, ACAORN.

Footnotes

References

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Keywords

Dietary assessment toolkits: an overview

  • Maria Carlota Dao (a1), Amy F Subar (a2), Marisol Warthon-Medina (a3), Janet E Cade (a3), Tracy Burrows (a4), Rebecca K Golley (a5), Nita G Forouhi (a6), Matthew Pearce (a6) and Bridget A Holmes (a7)...

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