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Food insecurity and health conditions in the Australian adult population: A nationally representative analysis. | LitMetric

Food insecurity and health conditions in the Australian adult population: A nationally representative analysis.

Nutr Diet

Melbourne School of Population and Global Health, University of Melbourne, Melbourne, Victoria, Australia.

Published: October 2024

Aim: This study aimed to identify key health condition correlates of food insecurity in Australia using nationally representative data.

Methods: This cross-sectional study used data from a large, nationally representative Australian survey that included questions on the dynamics of families and households, income, wealth, welfare, labour market activity (including unemployment and joblessness), life satisfaction and wellbeing. Binary logistic regression models of eight items of food insecurity measured the association between 17 health conditions and food insecurity while controlling for various demographic and socioeconomic variables. A zero-inflated negative binomial model identified correlates of the number of food insecurity problems.

Results: Prevalence of food insecurity ranged from 3% to 9% depending on the measure analysed. Individuals experiencing blackouts, fits or loss of consciousness were 2-6 times more likely to report food insecurity than other individuals. When including control variables and incorporating other health conditions, several conditions significantly increased probability of any food insecurity: sight problems; blackouts, fits or loss of consciousness; difficulty gripping things; nervous conditions; mental illness; and chronic or recurring pain.

Conclusions: Detailed information on how health conditions are associated with different types of food insecurity was generated using population-representative data, 17 sets of health conditions, and eight measures of food insecurity. Understanding connections between food insecurity and health conditions allows public health professionals to create effective, targeted and holistic interventions.

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Source
http://dx.doi.org/10.1111/1747-0080.12907DOI Listing

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