Literature DB >> 27923414

Missing data in FFQs: making assumptions about item non-response.

Karen E Lamb1, Dana Lee Olstad1, Cattram Nguyen2, Catherine Milte1, Sarah A McNaughton1.   

Abstract

OBJECTIVE: FFQs are a popular method of capturing dietary information in epidemiological studies and may be used to derive dietary exposures such as nutrient intake or overall dietary patterns and diet quality. As FFQs can involve large numbers of questions, participants may fail to respond to all questions, leaving researchers to decide how to deal with missing data when deriving intake measures. The aim of the present commentary is to discuss the current practice for dealing with item non-response in FFQs and to propose a research agenda for reporting and handling missing data in FFQs.
RESULTS: Single imputation techniques, such as zero imputation (assuming no consumption of the item) or mean imputation, are commonly used to deal with item non-response in FFQs. However, single imputation methods make strong assumptions about the missing data mechanism and do not reflect the uncertainty created by the missing data. This can lead to incorrect inference about associations between diet and health outcomes. Although the use of multiple imputation methods in epidemiology has increased, these have seldom been used in the field of nutritional epidemiology to address missing data in FFQs. We discuss methods for dealing with item non-response in FFQs, highlighting the assumptions made under each approach.
CONCLUSIONS: Researchers analysing FFQs should ensure that missing data are handled appropriately and clearly report how missing data were treated in analyses. Simulation studies are required to enable systematic evaluation of the utility of various methods for handling item non-response in FFQs under different assumptions about the missing data mechanism.

Entities:  

Keywords:  Dietary assessment; FFQ; Imputation; Item non-response; Missing data

Mesh:

Year:  2016        PMID: 27923414     DOI: 10.1017/S1368980016002986

Source DB:  PubMed          Journal:  Public Health Nutr        ISSN: 1368-9800            Impact factor:   4.022


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2.  Associations between Dietary Patterns and Cardiometabolic Risks in Japan: A Cross-Sectional Study from the Fukushima Health Management Survey, 2011-2015.

Authors:  Enbo Ma; Tetsuya Ohira; Akira Sakai; Seiji Yasumura; Atsushi Takahashi; Junichiro Kazama; Michio Shimabukuro; Hironori Nakano; Kanako Okazaki; Masaharu Maeda; Hirooki Yabe; Yuriko Suzuki; Kenji Kamiya
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  2 in total

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