Literature DB >> 30803461

Handling missing data in an FFQ: multiple imputation and nutrient intake estimates.

Mari Ichikawa1, Akihiro Hosono1, Yuya Tamai1, Miki Watanabe1, Kiyoshi Shibata1, Shoko Tsujimura1, Kyoko Oka1, Hitomi Fujita1, Naoko Okamoto1, Mayumi Kamiya1, Fumi Kondo1, Ryozo Wakabayashi1, Taiji Noguchi1, Tatsuya Isomura1, Nahomi Imaeda1, Chiho Goto1, Tamaki Yamada2, Sadao Suzuki1.   

Abstract

OBJECTIVE: We aimed to examine missing data in FFQ and to assess the effects on estimating dietary intake by comparing between multiple imputation and zero imputation.
DESIGN: We used data from the Okazaki Japan Multi-Institutional Collaborative Cohort (J-MICC) study. A self-administered questionnaire including an FFQ was implemented at baseline (FFQ1) and 5-year follow-up (FFQ2). Missing values in FFQ2 were replaced by corresponding FFQ1 values, multiple imputation and zero imputation.
SETTING: A methodological sub-study of the Okazaki J-MICC study.ParticipantsOf a total of 7585 men and women aged 35-79 years at baseline, we analysed data for 5120 participants who answered all items in FFQ1 and at least 50% of items in FFQ2.
RESULTS: Among 5120 participants, the proportion of missing data was 3·7%. The increasing number of missing food items in FFQ2 varied with personal characteristics. Missing food items not eaten often in FFQ2 were likely to represent zero intake in FFQ1. Most food items showed that the observed proportion of zero intake was likely to be similar to the probability that the missing value is zero intake. Compared with FFQ1 values, multiple imputation had smaller differences of total energy and nutrient estimates, except for alcohol, than zero imputation.
CONCLUSIONS: Our results indicate that missing values due to zero intake, namely missing not at random, in FFQ can be predicted reasonably well from observed data. Multiple imputation performed better than zero imputation for most nutrients and may be applied to FFQ data when missing is low.

Entities:  

Keywords:  FFQ; Item non-response; Missing data; Multiple imputation

Mesh:

Year:  2019        PMID: 30803461     DOI: 10.1017/S1368980019000168

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


  3 in total

1.  Optimising an FFQ Using a Machine Learning Pipeline to teach an Efficient Nutrient Intake Predictive Model.

Authors:  Nina Reščič; Tome Eftimov; Barbara Koroušić Seljak; Mitja Luštrek
Journal:  Nutrients       Date:  2020-12-10       Impact factor: 5.717

2.  Peer-mentor support for older vulnerable myocardial infarction patients referred to cardiac rehabilitation: single-arm feasibility study.

Authors:  Maria Pedersen; Birgitte Bennich; Takyiwa Boateng; Anne Marie Beck; Kirstine Sibilitz; Ingelise Andersen; Dorthe Overgaard
Journal:  Pilot Feasibility Stud       Date:  2022-08-09

3.  Increased salt intake is associated with diabetes and characteristic dietary habits: a community-based cross-sectional study in Japan.

Authors:  Nanami Itoh; Atsushi Tsuya; Hitoshi Togashi; Hirohito Kimura; Tsuneo Konta; Kenji Nemoto; Hidetoshi Yamashita; Takamasa Kayama
Journal:  J Clin Biochem Nutr       Date:  2022-05-10       Impact factor: 3.179

  3 in total

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