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Ultra-Processed Food Consumption in the Central Division of Fiji

journal contribution
posted on 2024-07-29, 09:40 authored by A Palu, J Santos, M Shahid, D Coyle, G Waqa, A Moala, Colin BellColin Bell, BL McKenzie
Availability of ultra-processed foods is likely to be high in the Pacific(1) however, information on consumption is limited. This study aimed to assess consumption levels and dietary sources of ultra-processed foods (UPFs) in a population of adults in the Central Division of Fiji. A random sample of 700 adults was selected from two statistical enumeration areas (one semi-urban, one rural) in Fiji. Participant characteristics were collected, along with a three-pass 24-hour diet recall. Foods consumed were coded based on level of processing, in alignment with the NOVA categorisation system (1 = unprocessed, 2 = minimally processed,3 = processed and 4 = ultra-processed). UPF contribution to total energy, salt, fat, and sugar intake were estimated. Main sources of UPFs were then estimated by food group. 534 adults participated (76% response rate, 50% female). Preliminary results suggest that UPFs contributed 21.5% (� CI, 19.5% to 23.4%) of total energy intake. Further, UPFs contributed to 22.8% (�CI 20.5% to 25.1%) of total salt intake, 24.0% (� CI, 21.4% to 26.6%) of fat intake and 18.6% (� CI, 16.5% to 20.7%) of sugar intake. UPFs contributed over 20% of total energy intake in this sample of Fijian adults and over 20% of salt, fat, and sugar. Messages and interventions that encourage consumption of minimally processed foods while reducing consumption of UPFs are likely needed to improve the healthiness of diets.

History

Journal

Proceedings of the Nutrition Society

Volume

83

Article number

E62

Pagination

e62-

ISSN

0029-6651

eISSN

1475-2719

Language

en

Publication classification

E3.1 Extract of paper

Issue

OCE1

Publisher

Cambridge University Press (CUP)

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